RE-MAPPING OPPORTUNITY Making Best Use of the Economic Potential of Russia’s Regions Washington, DC — Moscow 2018 © 2018 International Bank for Reconstruction and Development/The World Bank 1818 H Street NW Washington DC 20433 Telephone: 202-473-1000 Internet: www. Worldbank.org This volume is a product of the staff of the International Bank for Reconstruction and Development / The World Bank. The findings, interpretations, and conclusions expressed in this paper do not necessarily reflect the views of the Executive Directors of The World Bank or the governments they represent. The World Bank does not guarantee the accuracy of the data included in this work. The boundaries, colors, denominations, and other information shown on any map in this work do not imply any judgement on the part of The World Bank concerning the legal status of any territory or the endorsement or acceptance of such boundaries. Rights and Permissions The material in this publication is copyrighted. Copying and/or transmitting portions or all of this work without permission may be a violation of applicable law. The International Bank for Reconstruction and Development / The World Bank encourages dissemination of its work and will normally grant permission to reproduce portions of the work promptly. For permission to photocopy or reprint any part of this work, please send a request with complete information to the Copyright Clearance Center, Inc., 222 Rosewood Drive, Danvers, MA 01923, USA, telephone 978-750-8400, fax 978-750-4470, www.copyright.com. All other queries on rights and licenses, including subsidiary rights, should be addressed to the Office of the Publisher, The World Bank, 1818 H Street NW, Washington, DC 20433, USA, fax 202-522-2422, e-mail pubrights@worldbank.org. ACKNOWLEDGEMENTS This report was prepared by a joint team of the World Bank and the Analytical Center for the Government of Russian Federation (AC). For the World Bank, this project was led by Dmitry Sivaev. Core team members included Grace Cineas, Alexandra Milentey, Yuliya Gosnell, Tatiana Shadrunova, and Eleanor Dalgleish. The AC team was led by Mikhail Pryadilnikov. Other AC team members included Anton Steshenko and Alexandra Silchuk. The World Bank team expresses its sincere gratitude to the Analytical Center for assistance with data collection, organization of case study field trips, and expert consultations, which provided unique insights into the details of federal and regional policy and contributed to the overall development of the theme and narrative of this report. We also want to thank our team of economic advisors — Uwe Deichmann, Thomas Farole, and Mark Roberts — who generously contributed their time and knowledge throughout the process to help the team address multiple methodological challenges and develop the narrative of the final report. This report would also not be possible without the advice of World Bank colleagues David Sislen, Paula Restrepo Cadavid, Mikhail Matytsin, Daniel Alberto Benitez, and Somik Lall. We want to further express our gratitude to the following experts who shared their insights with the team: Natalia Zubarevish (Moscow State University), Alexey Krylovskiy (AV Group), Alexey Prazdnichnikh (Center for Strategic Research/Strategy Partners), Andrey Klepach (Vneshekonom Bank), Irina Ilyina (Higher School of Economics), Alexey Novikov (School of Urban Studies, Higher School of Economics). We specifically want to thank Mikhail Dmitriev (New Economic Growth Partnership) for allowing us to utilize the results of as yet unpublished work by his team. The data collection field trips for the regional case studies would not have been possible without the coordination of the Analytical Center and the AV Group, and the collaboration and support of the regional governments of the Republic of Bashkortostan, Krasnodar Krai, and Ulyanovsk Oblast. 1 RE-MAPPING OPPORTUNITY MAKING BEST USE OF THE ECONOMIC POTENTIAL OF RUSSIA’S REGION CONTENTS 1 Acknowledgements 49 Annex  1 Summaries of the Case Studies of the Regions 2 Contents 49  Ulyanovsk oblast — working hard 5 Executive summary to catch-up 8 Introduction 51 Krasnodar krai: learning how to leverage its The need for a focus on regional development assets 54 Bashkortostan republic — seeking growth 10 Chapter 1 beyond oil What shapes the economic development of Russia’s regions? 56 Annex  2 10 Is the legacy of a planned economy still Quantitative analysis methodology. a burden for regions? Full table of variables used in the EPI model 12 Natural resources: a blessing or a curse? 58 EPI: Selection of regions 68 Sensitivity Analysis Results: 37.5 percent 16 Chapter 2 threshold What is the economic potential of Russia’s regions — and what drives it? 69 Sensitivity Analysis: 27.5 percent threshold 16 Methodology, analytical challenges, and re- 70 Variable Selection sults 72 Model Specification 18 Focusing on critical structural characteristics 73 EPI Scores to drive regional development 74 Performance Rankings 18 Maximizing the benefits of urbanization 74 Explaining Potential 22 Enhancing connectivity 24 Nurturing high-tech sectors 76 Annex  3 A brief overview of spatially-targeted federal 26 Developing human capital programs for the development of lagging 27 Re-thinking monotowns macro-regions 27 Making more of agriculture’s potential in the regions 28 Where is the potential among the regions, and what does it tell us about them? 32 Chapter  3 What is the role of regional institutions, governance, and policy in a region achieving its economic potential? 32 The evolution of national policies for regional development 34 Do regional institutions and governance matter — and how much? 36 Regional governments have the tools to support economic development 40 Federal policy limits the role of regions in supporting economic development 43 Regions can still do more 44 Suggested policy priorities 44 Policy priorities for the federal government 46 Policy priorities for the regional governments FIGURES 11  Figure 1. 50  Figure 22. Two historical phases in the Convergence of income and wages among development of the Ulyanovsk region’s Russia’s regions economy 11  Figure 2. Change in distribution of pairwise 52  Figure 23. EPI estimates for Krasnodar Krai distances between registered enterprises 53  Figure 24. Two phases of development in Russia of the economy of Krasnodar region 13  Figure 3. Convergence and divergence trends 55  Figure 25. EPI estimates for Bashkortastan in real regional GRP per capita (in 2010 prices) 59  Figure 26. Correlation between market 13  Figure 4. Comparison of dynamics of regional access and productivity on a Russia-wide convergence in Russia, Canada, and Australia scale 14  Figure 5. Levels of inequality in regional GRP 60  Figure 27. Concentration of high economic per capita in Russia and other comparable potential in resource-rich and remote regions countries 62  Figure 28. Сontrolling for resource-rich 15  Figure 6. Natural resourse exports and regions — doesn’t result in significant manufacturing growth in selected countries changes in the EPI scores in 1970s 65  Figure 29. Analysis with 20 regions removed 15  Figure 7. The Product-Space Network from Far Eastern and Siberian Federal Okrugs 19  Figure 8. Rank-size distribution of cities 68  Figure 30. Scatter Market Access vs. in Russia and selected comparator countries Log GRP per capita 2014 19  Figure 9. Change in business productivity 69  Figure 31. Scatter Market Access vs. based on the size of the city of location, Log GRP per capita 2014 Russia 2014 70  Figure 32. Regions included and excluded 21  Figure 10. Population concentrates in larger in the final EPI estimation cities 73  Figure 33. Correlation between GRP per 21  Figure 11. Net migration by centrality of cities capita and EPI 23  Figure 12. Proximity to Moscow is not a source of prosperity for neighbors 24  Figure 13. Average wages and migration balance in the regions of the Central Federal Okrug 25  Figure 14. GRP growth in Tver Oblast vs. projections 25  Figure 15. GRP growth in Vladimir Oblast vs. projections 26  Figure 16. Change in Economic Complexity Index of Russia and China (1990-2010) 30  Figure 17. Economic Potential Index for the regions of western Russia 30  Figure 18. Regions of western Russia that meet their economic potential, exceed it, or are still to reach it 31  Figure 19. Economic performance of regional economies, 2010-2014 33 F  igure 20. Evolution of federal regional development policy in Russia, 1990-2017 49  Figure 21. EPI estimates for Ulyanovsk Oblast 3 RE-MAPPING OPPORTUNITY MAKING BEST USE OF THE ECONOMIC POTENTIAL OF RUSSIA’S REGION BOXES Box 1 15  Box 6 37  Why economic growth driven by oil exports is To tax or not to tax unsustainable Box 7 39  Box 2 21  Development Corporations of Ulyanovsk Oblast Federal housing construction targets and their and Bashkortostan impact on planning decisions Box 8 40  Box 3 25  Regulatory Environment Reforms in Ulyanovsk Did high-speed rail unlock growth opportunities in Tver region? Box 4 31  Economic potential is not the only factor that determines the economic growth of regions in the short run Box 5 35  Case study methodology TABLES 18  Table 1. Results of the economic potential 68  Table 7. Sensitivity Analysis Regression 37.5 modeling percent threshold 56  Table 2. Variables used for Russia EPI 69  Table 8. Sensitivity Analysis Regression 27.5 analysis percent threshold: only urbanization level and market access are statistically significant 59  Table 3. Correlation between GRP per capita and market access for all Russian regions 70  Table 9. Oil and gas dependent regions between 2010 and 2014 removed from the model 64  Table 4. EPI estimation for all regions 71  Table 10. Correlation matrix for all variables included in the analysis 66  Table 5. EPI results controlling for extractive industries 74  Table 11. Regional Ratings by individual components of EPI 67  Table 6. Share of natural resource extraction in the structure of GRP by region 2004-2014 4 EXECUTIVE SUMMARY Russia can unlock new sources of economic growth if the economic potential of its regions is enhanced and better exploited. There is great disparity in productivity amongst the regional economies of Russia. Even after controlling for price differences, Gross Regional Product (GRP) per capita in the most productive Russian region is 25 times greater than in the least productive, with oil- and gas-producing regions the most productive. The national economy has recently experienced two years of recession; while the economy is showing signs of improvement1, growth rates below 1.5 percent are expected for the next two years2. However, the Russia government is forecasting higher growth rates based on an increase in the amount of private investment, which is forecasted to grow at 5.3 percent per annum during 2018‑20203. The resource-rich regions that were once engines of growth have been hit by low energy prices as well as sanctions. Given these challenges, it is imperative that sustainable avenues of growth are fostered nationally. New sources of growth for the national economy can be tapped and developed by better understanding the factors — beyond resource endowments — that determine the productivity of regional economies. Urbanization, access to markets, advanced human capital, and the presence of high- and mid-tech industries are the most important determinants of economic development in the European part of Russia. Russia’s current economic geography has largely been shaped by a sequence of shocks that hit the country over the last 25 years. While the boom in the oil industry created rapid growth in peripheral, resource-rich regions, some regions in densely populated parts of the country were stymied by the persistence of structural constraints including industrial legacy, population decline, and aging. This has led to a geographic pattern of development counter to what is observed in other large countries where wealth and productivity is highest in well-connected and populous regions. The analysis in this paper shows that natural resource wealth is not the sole driver of regional development in Russia — even if it is still a major contributor when all of Russia’s regions are considered. In the European part of the country, the productivity of individual regions is primarily explained (60 percent of variation) by factors traditionally seen as determinants of regional development: urbanization, access to markets, the quality of human capital, and the presence of high-tech industries. Regions with high economic potential are also not limited to Moscow, St. Petersburg, and their immediate surroundings; in fact, several regions across the European part of Russia are, or are positioned to be, major contributors to productivity growth4.  World Bank (2017). Russia Economic Report 37. 1  International Monetary Fund (2017). World Economic Outlook 2017. 2  Ministry of Economic Development of Russian Federation. 3 In this report, productivity is defined as the ability to achieve a high level of economic output per capita in a given region,   4 and thus is used interchangeably with a region’s "level of development." While this usage differs somewhat from conventional economic tradition, it is based on the fact that indicators such as GDP per capita are commonly used as a measure of economic productivity. Multiple studies in Russia use GRP per capita as a measure of productivity. (e.g., Grigoryev, L., Urozhaeva, V., Ivanov, D. (2011) Synthetic classification of regions: Basis for Regional Policy in Grigoryev, L., Zubarevich, N., Khasayev G., (Eds.). Russian Regions: Economic Crisis and Problems of Modernization. Moscow, TEIS (pp. 35-56). [In Russian]). 5 RE-MAPPING OPPORTUNITY MAKING BEST USE OF THE ECONOMIC POTENTIAL OF RUSSIA’S REGION Economic policy and the business environment at the regional level have an important impact on economic development outcomes. The example of Ulyanovsk Oblast shows that a change in approach to governance and in the development strategy can bring measurable improvements in regional economic performance. The examples of Bashkortostan and Krasnodar Krai demonstrate the important role that regional governments play in shaping the perception of a region’s attractiveness to investment and in fostering a business-friendly environment. However, structural conditions that are specific to the region yet often beyond the regional government’s control or capacity often have a critical impact on regional development. For example, Ulyanovsk Oblast’s progress is held back by the underperformance of its largest Soviet-era, legacy industries, while by contrast Bashkortostan is propelled by the oil extraction and petrochemical cluster developed in the Soviet period. National policies should give priority to fostering structural conditions associated with higher productivity in regional economies. Urbanization is the factor most closely associated with higher regional productivity, yet there are few large cities in Russia, and many of these large cities grow by "suburbanizing" rather than by "densifying". National policies should aim to alter conditions that distort efficient forms of urbanization (e.  g., housing construction targets) and support regions and cities in improving the quality of urban services and overall livability. Investments in the inter-regional transport infrastructure of the European part of Russia can boost economic potential there, but these investments should be identified and implemented based on a thorough analysis of their impact on individual regional economies. In order to unlock the economic potential of regions, the federal government can help regions gain greater fiscal stability, increase their involvement in the design and implementation of business regulations, and enhance their role in the implementation of federal development programs. Over the last 15 years, the federal government’s regional development policies have focused on spatially-targeted or sector-targeted support programs that have been funded and controlled from the center. Today the budgetary system is highly centralized; regions have limited control over their revenues as most of their revenue comes from federal grants and federal taxes shared between the center and regions. Consequently, expenditures from regional budgets are largely driven by targets set by the national government. While regional debt is not high by international standards, it is mostly made up of short-term loans from both commercial banks and the federal budget; on average 10 percent of a region’s revenue is spent on servicing this debt. Under these circumstances, regions are dependent on the federal government’s support for any long-term capital investments or for development initiatives. Regions actively use federal support programs to overcome these challenges, but their effectiveness is often impeded by overregulation and the lack of flexibility to adapt to regional circumstances. At the same time, attempts by regions to promote economic growth by improving the environment for business and streamlining regulations are often impeded by regulations introduced at the federal level accompanied by inspections that are not accountable to regional authorities. Therefore, the federal government can catalyze the economic potential of regions by (1) right-sizing regions’ revenue streams against their statutory obligations, (2) simplifying federal development 6 programs and fully delegating their implementation to regional authorities (e.g., management of free trade zones), and (3) giving regions greater say in formulating and enforcing business regulations. Regional governments should foster an environment in their regions that attracts talent and investors and should aim to achieve greater policy and fiscal self-sufficiency in their governance. In the short run, regional governments can improve their economic outcomes by learning from policies that brought success to other regions. Investment promotion, business environment reforms, small business support schemes, and the introduction of "institutions for development" to improve efficiency in governance are all strategies that have helped regions in Russia boost their economies with minimal upfront investment. Regions should also fully utilize national development programs to finance transportation infrastructure improvements, research centers, business incubators, and industrial zones. However, to increase long-term prosperity, regions need to increase self-sufficiency and gain the ability to address larger development challenges without the central government’s support. This will require increasing own source revenues and implementation capacity of regions. First steps in this direction can be made by maximizing the utilization of tax authority given to regions, as well as the development of public- private coalitions that work to expand a regions’ implementation capacity over the long term. 7 RE-MAPPING OPPORTUNITY MAKING BEST USE OF THE ECONOMIC POTENTIAL OF RUSSIA’S REGION "It is extremely important to look at Russia from the perspective of the quality of its economic space, its spatially unequal development, and the need for reten- tion of the economic unity of the country given funda- mentally diverse structural conditions that underpin development of individual regions."5 Alexander Grandberg INTRODUCTION The need for a focus on regional development In order to understand a country as large and diverse as Russia, it is extremely important to consider spatial patterns of economic development. Regions — in central Russia, in the Far East, in the subtropical and mountainous south and in the Arctic north — differ distinctly in the many characteristics that affect economic development such as climatic conditions, natural resource endowments, population density, demography, and soil fertility. Furthermore, the economic outcomes of these regions also differ greatly; oil-producing Tyumen Oblast, for example, matches the GDP per capita of Norway, while Ingushetia Republic matches that of Iraq6. It is the interaction of these diverse economic landscapes that comprises the Russian economy. Without understanding the forces that shape the economies of individual regions, it is impossible to understand how to unlock economic growth for the country as a whole. As Russia looks for new drivers of economic growth, it is important to understand the structural conditions that have defined economic development in Russia’s regions. The Russian economy is gradually recovering from a recession; however, with lower commodity prices, increasing costs for natural resource extraction, and restrictive sanctions, the country can’t rely on oil and gas exports to drive growth as it did in the 2000s. Russia’s regional diversity offers opportunities to identify new sources of economic potential. If the conditions that have helped some regions achieve higher levels of productivity (other than natural resource endowments) are properly understood, policies can be developed to identify such conditions and help regions exploit them more effectively. This would in turn help right-size the economy as well as unlock new economic, demographic, and other sources to promote long-term economic development. Grandberg, A., Zaytseva, U., (2002). Growth Rates in the National Economic Space, Questions of Economics #9. (In Russian).   5 U NDP (2011). National Human Development Report for the Russian Federation 2011: Modernization and Human Development,   6 cited in Oxfam (2014). 8 CHAPTER 1 WHAT SHAPES THE ECONOMIC DEVELOPMENT OF RUSSIA’S REGIONS? This report uses the Economic Potential Index (EPI) methodology to identify the conditions that drive regional development. Economic potential is the level of productivity that is possible for a region to achieve given its structural endowments, which are characteristics that are hard to alter in the short run. The methodology used in this report combines quantitative analysis of the drivers of productivity across regions with in-depth case studies that focus on the role of regional governments and institutions in converting endowments into economic outcomes. This methodology generates insights that are relevant for both the national government and regional governments. The first chapter of this report provides an overview of regional development in Russia over the last 25 years and identifies "Russia-specific" national structural conditions that may affect regional development. The second chapter discusses the results of an assessment of economic potential at the regional level and the factors that shape it in Russia. The third chapter focuses on the role of national and regional governance, policy, and institutions in promoting economic development of the regions. The final chapter proposes policy priorities for both regional and national authorities. 9 RE-MAPPING OPPORTUNITY MAKING BEST USE OF THE ECONOMIC POTENTIAL OF RUSSIA’S REGION CHAPTER 1 What shapes the economic development of Russia’s regions? Russia’s diverse geography and its complex economic history are important factors explaining the disparities in its regional economic development. In recent decades, spatial inequality of economic development in regions across the globe has been well documented in economics literature. There is now a large body of evidence identifying characteristics common to areas achieving high levels of economic productivity. Such characteristics include a high level of urbanization and economic density, proximity and connectedness to large markets, and a highly skilled population. These ideas shape the foundation of the economic potential analysis used in this paper. However, to understand the factors that shape the economic potential of the regions, specific aspects of the country’s context must be considered. This chapter discusses the importance of two such country specific factors: the legacy of the planned economy and the role of natural resource extraction. Is the legacy of a planned economy still a burden for regions? Soviet-era central planning resulted in artificially-equalized regional development and in an inefficient allocation of resources. Investments were not driven by profit incentives, but rather by government decisions often rooted in an expansionist vision of development: exploit new territories and spread economic activity across the vast country. Allocating investment in this way led to sub-optimal outcomes, such as the development of large cities north of the Artic circle. This investment process also resulted in the uniform distribution of economic activity across space that would have been inefficient and unsustainable under market conditions7. The inefficiencies of Soviet-era resource allocation were revealed by the rapid growth of regional economic disparities in the 1990s. During the transition to a market economy, regions specializing in heavy industrial sectors (industrial machinery, defense, chemical) suffered a rapid decline, as their core sectors failed to rebuild supply chains and identify new markets. The peripheral regions reliant on the state to supply energy sources and other basic commodities were also hit really hard. The adjustments from this period produced a rapid growth in disparities in regional economic performance. By the early 2000s, the best regional performer produced 64 times more industrial output than the worst regional performer, and the region with the worst labor market conditions had an unemployment rate 19 times higher than the best performing region8. Persisting sub-optimal spatial allocation of capital and labor resources may still play a strong role in determining levels of regional productivity. In its transition to capitalism, Russia needed to re-allocate labor and capital to more productive sectors of its economy. Individual industries in the Soviet Union tended 7  Markevich, A., Mikhailova, T. (2013). Economic Geography of Russia, The Oxford Handbook of Russian Economy. 8  Ministry of Economic Development of the Russian Federation. 10 CHAPTER 1 WHAT SHAPES THE ECONOMIC DEVELOPMENT OF RUSSIA’S REGIONS? to be extremely concentrated spatially — with lots of settlements built around large manufacturing complexes. This meant that any re-allocation of resources by sector required their redistribution in space including across regions9. However, continuing restrictions on labor and capital mobility impeded this process throughout the transitional years. After a short spike in the early 1990s, inter-regional migration in Russia remained relatively low (almost 10 times lower than in the US on a per capita basis). The lack of labor mobility led to rapid divergences between regions in terms of wages and levels of unemployment. Low labor mobility is most often the result of institutional constraints, such as mandatory household registration, a system that restricted access to services for people who didn’t own housing in the region to which they’d moved.10 In the 1990s, "poverty traps" created additional constraints to mobility. A large share of the population did not have the means to cover the cost of migration, and while capital markets were also underdeveloped, taking out a loan to cover these costs was not financially possible.11 Breaking down some barriers to mobility in the 2000s could have mitigated the impact of the Soviet legacy on regional productivity. Throughout the 2000s, wages and incomes were converging across the regions, which was likely the result of the integration of regional labor markets (Figure 1). Empirical research shows that as income rose and financial markets matured, many people were able to access resources needed to cover relocation. If 85 percent of the regions were considered poverty traps in 1995,12 only one region remained a poverty trap in 2010. Similarly, a recent analysis of financial flows found little correlation between savings and investment volumes at figure 1 figure 2 CONVERGENCE OF INCOME AND WAGES AMONG C H A N G E I N D I S T R I B U T I O N O F PA I R W I S E D I S TA N C E S RUS SIA’S REGIONS B E T W E E N R E G I S T E R E D E N T E R P R I S E S I N R U S S I A 13 0.8 0.025 0.7 0.02 regional variation coefficients 0.6 probability density functions 0.5 0.015 0.4 0.3 0.01 0.2 0.005 0.1 0 0 1995 2000 2005 2010 0 100 200 300 400 500 600 700 800 900 1000 1100 distance, km GRP per capita income per capita 2013 1989 unemployment level average wage Source: Guriev, S., Vakulenko, E. (2012) Convergence Between Source: Dmitriev, Chistyakov (2017) Reform agenda for the Russian Regions, CEFIR. forthcoming policy cycle in Russia. Tulchinsky, G. et al. (2011). Modernization of Russia: Territorial Dimension. 9  10  World Bank Group (2011). Russia: Reshaping Economic Geography. 11 Andrienko, Y., Guriev, S. (2004). Determinants of interregional mobility in Russia: evidence from panel data, Economics of   Transition, 12 (1). 12 Poverty trap is defined as a condition where the average income is below the level of income that in a model is associated with   a decline in rates of mobility. 13 Pairwise distance is the distance between two randomly selected enterprise headquarters in a country. The chart shows the   distribution of the measure. 11 RE-MAPPING OPPORTUNITY MAKING BEST USE OF THE ECONOMIC POTENTIAL OF RUSSIA’S REGION a regional scale, which suggests that capital is not trapped within regions anymore.14 This conclusion is confirmed by changes observed in the spatial distribution of registered enterprises in Russia. If in 1989 the pairwise distribution of distances between enterprises suggested almost uniform distribution across space, by 2010 enterprises were much more concentrated, which is indirect evidence of spatial re- allocation of factors of production (Figure 2). It is, however, unclear whether improved mobility of labor and capital completely mitigated the lasting effects of the Soviet legacy on regional economies. The ongoing socio-economic challenges of Soviet-era industrial monotowns suggest that legacy is still important. Industrial monotowns from the Soviet era persist as manifestations of the challenges of the transition to a market economy. Today, 319 settlements in Russia are legally identified as monotowns — settlements highly reliant on a single industrial plant or industry. Ninety-four of them are classified as monotowns with a high level of socio-economic deprivation, largely due to the economic struggles of the factory that accounts for most of the local economy and employment. It is broadly recognized that the economic potential of monotowns is limited, and that they generally struggle to contribute to the economic development of regions. Thus, they are a focus of support programs implemented by the federal government. Natural resources: a blessing or a curse? In the last 15 years, fluctuations in commodity prices were the main factor defining the relative dynamics of regional economic development in Russia. Rising oil prices in the early 2000s benefited resource-rich regions and large urban areas (primarily Moscow and St. Petersburg), where the inflow from large oil incomes stimulated development of the financial and service sectors as well as the construction and real estate industries.15 However, the regions that grew the fastest in 2000‑2007 were also hit the hardest by the 2008 international financial crisis. Oil-rich regions were hit by the drop in energy prices, while the metropolitan areas suffered from declining demand and poor access to affordable credit on European markets. In the short run, this led to a downward convergence of leaders and laggards in regional GDP per capita.16 However, in the years after the 2008 crisis the less-developed regions were hit by a decline in federal subsidies, which stifled the convergence trend. (Figure 3) The close correlation between regional economic convergence and oil price fluctuations was not unique to Russia. For example, Canada followed a very similar path whereby differences in regional productivity grew in 2000‑03 as oil-producing regions (primarily the Northwest Territories) experienced rapid economic growth. However, the trend reversed after the 2008 crisis and as oil prices declined. There is greater disparity in productivity among Russia’s regions than in other comparable countries, which is largely driven by the resource-rich regions. Regional disparities are common in both developed and developing nations as they reflect the natural tendency of economic activity to concentrate in productive places. 14  Guriev, S., Vakulenko, E. (2012). Convergence Between Russian Regions, CEFIR. 15 Analytical Centre for the Government of the Russian Federation (2013). Shifts in the regional structure of the Russian   Economy. [In Russian] 16  Zubarevich, N. (2012). Regional development and regional policy during the decade of economic growth. Questions of Economic Policy. [In Russian]; Analytical Centre for the Government of the Russian Federation (2013). Shifts in the regional structure of the Russian Economy. [In Russian] 12 CHAPTER 1 WHAT SHAPES THE ECONOMIC DEVELOPMENT OF RUSSIA’S REGIONS? figure 3 figure 4 CONVERGENCE AND DIVERGENCE TRENDS COMPA RISON OF DY N A MIC S OF REGION A L I N R E A L R E G I O N A L G R P P E R C A P I TA ( I N 2 0 1 0 P R I C E S ) 17 CONVERGENCE IN RUSSIA, CANADA, AND AUSTRALIA ( VA R I AT I O N C O E F F I C I E N T O F R E A L G D P P E R C A P I TA I N 2 0 1 0 P R I C E S ) 18 0.58 0.6 0.56 0.55 0.54 0.5 0.52 0.45 0.5 0.4 variation coefficients variation coefficients 0.48 0.35 0.46 0.3 0.44 0.25 0.42 0.2 0.4 0.15 1999 2001 2003 2005 2007 2009 2011 2013 2015 1999 2001 2003 2005 2007 2009 2011 2013 2015 Russia Australia Canada Source: Calculations by the authors using RosStat data. Source: Calculations by the authors using data from RosStat, Australia Bureau of Statistics, and Statistics Canada. In fact, a sharp rise in regional inequality is often associated with periods of rapid economic growth. This was the case in Thailand, Vietnam, and Indonesia, as well as in Poland, which like Russia went through a transition to a market economy.19 However, Russia appears to have higher levels of regional inequality than most comparable economies. Nevertheless, most of the difference between levels of variation of regional GDP per capita in Russia and countries like India, China and Brazil disappears if 6 regions that rely most on natural resource extraction are removed from the analysis (Figure 5).20 Oil- and gas-rich regions have been the powerhouses of the Russian economy. Mineral wealth drives the high levels of GDP per capita achieved by some of the sparsely- populated regions in Russia.21 In fact, the extractive industries contribute more than half of total output for the top five regions in GDP per capita.22 The regions where extractives make up more than 30 percent of total output (with the exception of Komi Republic, Orenburg Oblast and Nenetskiy AO) are located in Siberia or the Far East, and are sparsely populated with little economic activity outside resource extraction. The recent experience of resource-rich regions shows that their economies are volatile and their growth is unsustainable. The contribution of resource-rich regions was paramount for Russia’s economic growth over the last 25 years. However, after experiencing rapid growth throughout the mid‑2000s (8 percent a year), the nine Russian regions where natural resource extraction accounts for more than 30 percent of total output have increased their real GDP by only 2 percent combined 17 P rices are equalized across regions in the base year using the Consumer Basket price index, while values for a non-base year   are calculated using the chain index of physical volume. 18  For all countries, regional chain physical volume indexes are used for construction of the time series. The shape of the curve for Russia is different from Figure 1 because regional differences in price levels in the base year are not accounted for. This is done in order to ensure for comparability with other countries where such data was not available. 19  World Bank (2009). World Development Report: Reshaping Economic Geography. 20  Ibid. 21  In the context of the methodology used in this report, this refers to nine regions where natural resource extraction contributes more than 30 percent of total output, as discussed later in more detail. 22  RosStat. 13 RE-MAPPING OPPORTUNITY MAKING BEST USE OF THE ECONOMIC POTENTIAL OF RUSSIA’S REGION in the seven years after the 2008 crisis (0.3 percent per year on average). All the other regions combined have grown by more than 10 percent (1.5 percent a year).23 figure 5 L E V E L S O F IN E Q U A L I T Y IN R E G I O N A L G R P P E R C A P I TA IN R U S S I A A N D O T H E R C O M PA R A B L E C O U N T R I E S 24 0.8 Russia 0.7 Russia (without oil richregions) 0.6 Brazil 0.5 variation coefficients India 0.4 China 0.3 Canada 0.2 Germany 0.1 Poland 0 Australia Sources: RosStat, China Data Center of the University of Michigan, Eurostat, Ministry of Statistics and Implementation of India, IBGE, Statistics Canada, and Australia Bureau of Statistics. Economic theory and empirical evidence from countries across the globe demonstrate that overreliance on natural resource exports has negative effects on regional economies and institutions. Economists have shown that the success of natural resource exports leads to loss of competitiveness in other tradable sectors of the economy — a phenomenon widely known as the "Dutch disease." Additionally, oil and gas industries in particular seem to be hard to diversify. These industries support development of local supply chains and professional skills and qualifications that are highly specific and not widely used in other sectors (see Box 1.). Research also suggests that resource dependence has a negative effect on institutions. The availability of natural resource rents removes the need to generate revenue through taxes and often limits incentives for government capacity-building. In cases where rents from natural resources are accruing to the state, or where the state has control over their distribution, access to public office becomes the most valuable asset; this induces patronage dynamics and creates incentives for actors to seek political influence. It also promotes a class form of rent-seeking where business elites become intertwined with the state in order to maintain control of rents and protect the status quo. These and other possible effects often result in a decline in the quality of governance and market institutions.25 The methodology used in this report accounts for both Russia-specific factors discussed here: the impact of the Soviet legacy and the distortions resulting from natural resource export revenues. Specific efforts are made to control for the overpowering influence of the natural resource economy on patterns of regional productivity in order that the impact of the factors associated with more sustainable and less volatile models of economic development can be examined. The role of the Soviet legacy is investigated through the introduction of an additional variable to the regression model and is discussed later in the qualitative analysis of regional institutions. The next chapter presents the results of the quantitative analysis. 23  RosStat. 24  The variation coefficient for regional GRP per capita is calculated without the six regions where the contribution of extractive industries to GDP exceeds 30 percent: Tyumen, Sakhalin, Orenburg, and Arkhangelsk oblasts, and Yakutia and Komi republics. 25  Barma, N.H., et. al. (2012). Rents to Riches? The Political Economy of Natural Resource-Led Development. World Bank; Ilyina, I. (2013). Potential of Development of Resource Rich Regions in the Documents for Strategic Development. Matters of state and municipal governance, 2. 14 CHAPTER 1 WHAT SHAPES THE ECONOMIC DEVELOPMENT OF RUSSIA’S REGIONS? Box 1 Why economic growth driven by oil exports is unsustainable In the 1970s, countries that were major exporters of in other locations. In such regions, natural resource natural resources struggled to achieve simultaneous extraction becomes the dominant tradable industry, development of their manufacturing sectors. which means greater exposure of an economy to Economists labeled this phenomenon the "Dutch external price shocks and almost inevitable decline once Disease". The Dutch Disease is best explained using a the resource is depleted (Figure 6). model of an economy with three sectors: an extractive It is particularly difficult for regions dependent on oil sector, a tradable sector– selling goods to other areas, and gas industries to diversify their economy. The and a non-tradable sector–selling only local services. Product-Space concept developed by Hidalgo, et. al. Rapid growth based on natural resource extraction mapped all products traded on global markets in terms brings a large amount of extra income into an economy causing inflation on the local market for non-tradable of their relatedness. By their definition, relatedness of goods. Growth of non-tradable prices pushes up local products means that they require a similar supply chain, wages. This in turn squeezes the profit margins of institutions, capital, infrastructure, and technology, and tradable sector producers, because while their labor thus are likely to be co-produced in the same location. costs grow, prices for their goods remain static because Figure 7 shows that oil and gas extraction are on the they are not established on the local markets. This periphery of the network, meaning that they are not makes tradable industries in a resource-rich region — closely related to any other products, which makes co- for example, manufacturing — less competitive than production unlikely.26 figure 6 figure 7 N AT U R A L R E S O U R S E E X P O R T S A N D M A N U FA C T U R IN G T H E P R O D U C T- S P A C E N E T W O R K GROWTH IN SELECTED COUNTRIES IN 1970S NKG TAI SGP BEL NLD log of growth of manufacturing IRL MYS PRT CAN JPN FRA ISL BHR HTI TUN USA MUS IND OMN MEX QAT PRY VEN SAU KWT GHA LBY logarithm of natural resources exports as a share of GRP Source: Brahmbhatt, M., Canuto, O., and Vostroknutova, E. (2010). Source: Hidalgo C., et al. (2007). The Product Space Conditions the Dealing with Dutch Disease, World Bank. Development of Nations, Science 317, 482. 26 Hidalgo, C., et. al. (2007). The Product Space Conditions the Development of Nations, Science 317, 482. 15 RE-MAPPING OPPORTUNITY MAKING BEST USE OF THE ECONOMIC POTENTIAL OF RUSSIA’S REGION CHAPTER 2 What is the economic potential of Russia’s regions — and what drives it? Methodology, analytical challenges, and results This paper uses the Economic Potential Index (EPI) methodology to understand the factors that are closely associated with the development of regional economies in Russia. The EPI is a methodology developed by the World Bank Group and applied to study regional development in India and the European Union27. It is used to identify the structural characteristics that best explain the levels of productivity observed across regions. This study defines economic potential as the level of productivity that a region can achieve given its structural characteristics. Structural characteristics are factors that are shown to have an association with productivity and economic development and are static in nature — meaning they cannot be altered substantially in the short or medium term (1‑3 years). These structural factors include the level of urbanization, access to markets, quality of human capital (i. e., life expectancy or share of higher education), geographic characteristics of the regions, and sectoral composition of the economy. As described in Chapter 1, the additional Russia- specific characteristics that should be included in the analysis are the role of extractive industries and the Soviet legacy of central planning. This paper uses an empirical version of the EPI methodology, which has important implications for the interpretation of results and findings. In its basic version, EPI methodology uses a set of assumptions based on past empirical studies to create a list of structural conditions that define the potential of regions in the country under consideration. The version of the EPI methodology used here starts from a similar assumption, but then uses multivariate regression analysis to test whether the identified structural conditions correlate with the observed level of regional productivity (GDP per capita). With this approach, conclusions may be drawn about the relative importance of various structural conditions for achieving higher levels of economic productivity at a regional level. This approach also allows for a discussion of the potential of different regions to achieve higher levels of economic productivity within the model of economic development currently prevailing in the country. It is thus possible to call this approach an analysis of "revealed economic potential". The approach provides a robust test of the role of the factors contributing to regional productivity. However, it also may result in counterintuitive findings that should be interpreted with caution. For instance, a negative correlation between a given factor and level of productivity doesn’t mean the factor should be eliminated. Rather, it suggests that on average the factor is associated with forms of economic activity that yield lower productivity and possibly that there is a need for additional investigation into ways this factor can be better utilized. A detailed description of the methodology behind the analysis presented in this chapter can be found in Annex 2. Roberts, M. (2016). Identifying the Economic Potential of Indian Districts. World Bank Policy Paper 7623, Social, Urban, 27  Rural and Resilience Global Practice Group; Farole, T., et. al. (2017, forthcoming). Economic Potential of the Regions of the European Union. 16 CHAPTER 2 WHAT IS THE ECONOMIC POTENTIAL OF RUSSIA’S REGIONS — AND WHAT DRIVES IT ? The overpowering role of natural resource extraction as a driver of regional economies in Russia creates obstacles for analysis of the role of other structural conditions. Most of the regions specializing in natural resource extraction are located in the northern and eastern parts of Russia far from the most populated parts of the country and thus far from large markets or large agglomerations. They have low population density, and have climatic conditions that are unsuitable to agriculture. In other words, these regions do not possess the characteristics that we expect to find in highly-developed areas. Yet, due to the availability of natural resources, these regions attain substantially higher levels of GDP per capita than other parts of the country. As a result, these regions, due to the powerful impact that the oil and gas industry has on their economy, overpower the impact of most of the other structural conditions on regional development in Russia. A good illustration of this is the overall negative correlation between the measure of access to markets and level of regional productivity in Russia (see Annex 2). For this reason, when an EPI model is estimated for all regions the results are uninformative, even after removing output of extractive industries from GDP and introducing additional controls (the results of EPI modeling for all regions are presented in Annex 2). To create an informative model, the estimation is limited to 56 regions in the western part of Russia. This approach primarily is utilized in order to remove the regions whose economies are driven by extractives and thus distort the results. Additionally, it mitigates the difficulty of including some of the most remote and inaccessible regions into the model. These remote, but not necessarily resource- rich regions disrupt the model largely because their isolation means they cannot leverage productivity gains from access to the markets of the most populated regions. To draw substantive conclusions from the EPI, the analysis is restricted to a subset of regions in western Russia where the geography of regions is more consistent and natural resource exports are less prominent. The regions included in the final version of the model account for 75 percent of total population and 95 percent of total output (excluding natural resource extraction). All regions in the Far Eastern and Siberian Federal okrugs were excluded from the model. Additionally, any region in which extractives contributed to more than 30 percent of GRP between 2010 and 2014, on average, were excluded from the analysis (see Annex 2 for a detailed explanation of the rationale for selection of regions and Figure 32 for a layout of included and excluded regions). When the EPI analysis is limited to 56 regions in Russia, the results show the critical role played by urbanization, market access, human capital, and technologically advanced sectors in achieving high levels of productivity. After testing a multiplicity of independent variables and model specifications, the model presented in Table 1 was selected (see Annex 2 for detailed description of the variables used and their interpretation and model specifications). The results of this model confirm that while Russia is peculiar due to its geography and recent development trends (as discussed in Chapter 1), the laws of economic geography still apply and urbanization, access to markets, and human capital are among the key drivers of economic development of Russia’s regions. The following section discusses individual results of the EPI estimation and their policy implications. 17 RE-MAPPING OPPORTUNITY MAKING BEST USE OF THE ECONOMIC POTENTIAL OF RUSSIA’S REGION Focusing on critical structural characteristics to drive regional development The results of the analysis presented in Table 1 point to structural conditions as drivers of regional productivity. These structural conditions should be a policy priority, but specific interventions require in-depth consideration. Improving structural conditions is a complicated challenge. Simple solutions are likely to lead to unintended consequences. Masses of people can’t be forced to move into cities, a new road alone cannot produce productivity gains, and investment in education needs to be tailored to the needs of the local economy. Evidence derived from the EPI model offers a starting point for a policy discussion about the role of structural conditions. This section aims to elaborate these results through the introduction of additional evidence. table 1 R E S U LT S O F T H E E C O N O M I C P O T E N T I A L M O D E L I N G 0. 2208*** 0.0198 Market Access (3.3840) Economic Crimes per 1000 Pop. (0.5874) 0.1862 0.0275 0.1454*** 0.0062*** Port Access (5.6982) % Population in Cities Larger than 250k (6.4429) 0.3030 0.3383 –0. 2434*** 8.9765*** Constant Land Suitability (–3. 2218) (14. 2644) –0.1654 Observations 280 0.3168*** % University Level Education (2 .7907) Adjusted R-squared 0.4580 0.1441 0.5644*** Note: Dependent variable is gross regional product per capita. Robust High Tech Employment (5.1639) t-statistics in parentheses *** p<0.01, ** p<0.05, * p<0.1. Robust SE. 0.3235 Standardized coefficients (beta) also report in third row. Market access is calculated as the ratio between the sum of the population of the major 0.9845*** city in each region relative to the sum of travel time to those cities from the % Population in Monotowns (6.5103) reference city. Port access is calculated as the ratio between the sum of cargo 0. 2454 throughput in each port relative to the sum of travel distance to those ports from the reference city. Source: Elaborated by the team. Maximizing the benefits of urbanization Urbanization is the factor most closely correlated with high levels of productivity in Russia’s regional economies. Preliminary analysis has shown that the share of urban population explains more than 50 percent of variation in regional GDP per capita in western Russia.28 The variable share of population living in cities with more than 250,000 inhabitants was used in the model to account for the importance of scale of agglomerations for productivity, and thus illuminate the effect Calculation using Rosstat data. This percent of urban population variable was not used in the model due to multi-collinearity 28  issues. 18 CHAPTER 2 WHAT IS THE ECONOMIC POTENTIAL OF RUSSIA’S REGIONS — AND WHAT DRIVES IT ? of regional differences in assigning urban status to small settlements. The results suggest that on average, a standard deviation increase in the share of the population living in cities with a population of 250,000 (or more) is associated with a 0.33 standard deviation increase in GRP per capita. This result suggests that agglomeration economies are the key driver of regional productivity in western Russia. But can urbanization be utilized better in Russia? Economic theory suggests that the productivity benefits of agglomeration increase as cities get larger; this holds true in Russia as with most countries of the world. Recent data shows that the productivity of firms in services and manufacturing starts increasing substantially if they are located in cities with 1 million residents or more (Figure 8). However, Russia has very few cities of this size. There are only two cities larger than 1.5 million in Russia, while in Japan (a smaller country by population) there are five such cities and in Brazil (50 percent larger than Russia by population) there are eight. Russia’s second tier cities are not large enough.29 Cities ranked between 3rd and 10th by population only account for 6.9 percent of Russia’s population.30 This share is below such countries as Brazil, Japan, and Poland, where cities in the same ranks account for between 8 percent and 11 percent of population.31 This effect can be seen clearly in the rank- size curves.32 The curve representing Russia has a substantial drop after the second largest city, a drop much bigger than in any of the comparators. If cities from the other former Soviet countries are added to Russia, the curve starts looking much more like that of the comparators (Figure 9). This suggests that the system of cities in Russia has not adjusted since the breakup of the Soviet Union, when several large cities (Almaty, Kiev, Tashkent) ended up in the other newly-independent countries. figure 8 figure 9 R A NK-SIZE DIS T RIBU T ION OF CIT IES IN RUS SIA CHANGE IN BUSINESS PRODUCTIVIT Y BASED ON THE A N D S E L E C T E D C O M PA R AT O R C O U N T R IE S S I Z E O F T H E C I T Y O F L O C AT I O N , R U S S I A 2 0 1 4 17 100 1300 Value added per employee in manufacturing 95 16 1200 90 Value added per employee in services 85 1100 15 80 1000 14 75 city population (log) 70 900 13 65 800 60 12 700 55 11 50 600 0 0.5 1 1.5 2 2.5 3 3.5 4 4.5 5 3 30 100 700 1500 5000 10 000 city population rank (log) population within 1.5 h isochrones China Brazil USSR (if existed today) manufacturing services Russia Poland Source: Dmitriev, Chistyakov (2017). Reform agenda for the Source: Data from UN (2013) Demographic Yearbook. forthcoming policy cycle in Russia. 29  World Bank Group (2011). Russia: Reshaping Economic Geography. 30  RosStat data 2017. 31  UN (2013). Demographic Yearbook, World Bank – World Development Indicators. 32 T he rank-size rule holds that the population of each city in a system of cities, multiplied by its population rank equals   the size of the largest city. This relationship is proven to be empirically robust, even though its economic drivers are still being debated. For a detailed discussion, please see Abdel-Rahman, H., Anas, A. (2004). Theories of Systems of Cities. In Henderson, J. & Thisse J. (ed.) 2004. Handbook of Regional and Urban Economics, Elsevier, edition 1, 4 (4). 19 RE-MAPPING OPPORTUNITY MAKING BEST USE OF THE ECONOMIC POTENTIAL OF RUSSIA’S REGION A specific challenge in Russia is that urbanization is fragmented due to historical policies. The Soviet model of industrialization was largely based on development of urban settlements around manufacturing facilities and thus, the often forced resettlement of workers. This is how many small and middle-size cities were built in remote locations, which likely would not have been able to develop such urban centers under free market conditions.33 After the collapse of the Soviet Union, the urban system became particularly unbalanced, with two dominant cities at the top, second tier cities not large enough to affect regional development, and a very large number of small urban settlements. Re-balancing of the urban system is ongoing, but it is defined by the increased dominance of primary cities. Over the last 15 years, small cities (below 50,000 inhabitants) consistently lost population, while cities larger than 100,000 inhabitants gained population. Moscow and St. Petersburg saw the fastest population growth among all categories, which suggests that the imbalance between primary and second tier cities has grown larger (see Figure 10). In a way, this is unsurprising: the gap in productivity and wages between the two capitals and the second tier cities remains vast, which makes the capitals the most attractive locations for migrants looking for higher standards of living. Indeed, Moscow and Moscow Oblast attract 60 percent of all migrants.34 Suburbanization and the development of agglomerations is another major urbanization trend. The largest migration gains have occurred in the commuter belts of federal cities (Moscow and St. Petersburg) and regional capitals. Between 2003 and 2009, cities that had the highest positive migration balance were not the largest cities of regions, but rather cities within a 50 km radius of the largest cities (see Figure 11). This process was particularly visible in Moscow Oblast, where 20 were cities ranked in the top 50 in the country in terms of net migration between 2003 and 2009 (while Moscow itself was ranked 33rd). This trend also held in Volga Federal Okrug, Southern Federal Okrug, and even Siberian Federal Okrug.35 The conditions that foster growth in secondary cities could be enhanced through better urban management and planning. The benefits of densification as a tool for sustainable urban development abounds in the literature, among which include capacity for a low-impact, accessible transportation system; large integrated labor markets; and reduced infrastructure costs.36 Despite the benefits of high-density urban areas, the regional capitals of Russia tend not to be very densely populated (the density of 1 million-plus cities ranges between 1,000 and 5,000 people per km2.37 By comparison, the density of San Francisco is 7,100 per km2 and the density of Lyon is 10,000 per km2), yet a lot of them are suburbanizing instead of densifying. This is partially a result of poor management of cities, which leaves them unaffordable or unappealing, thus pushing people into the suburbs in search for cheaper properties or 33  Tulchinsky, G. et al. (2011). Modernization of Russia: Territorial Dimension. Novikov, A. (2013). Regional disparities in the socio-economic development of Russia. Online magazine Science Studies, 1. 34  Institute of Public Administration, Law and Innovative Technologies. Mkrtchyan, H. (2012). Migration Balance of Russian Cities: how size and location of cities shapes the center-periphery 35  relations; Demoscop, 519-520. Retrieved from https://goo.gl/zzDusR [In Russian]. See Angel, Shlomo and Alejandro M. Blei, The productivity of American cities: How densification, relocation, and greater 36  mobility sustain the productive advantage of larger U.S. metropolitan labor markets, In Cities, Volume 51, 2016, Pages 36-51; Combes, P.-P., Duranton, G., Gobillon, L., Puga, D. and Roux, S. (2012), The Productivity Advantages of Large Cities: Distinguishing Agglomeration From Firm Selection. Econometrica, 80: 2543–2594; Patricia C Melo, Daniel J Graham, David Levinson, Sarah Aarabi, Agglomeration, accessibility and productivity: Evidence for large metropolitan areas in the US. Urban Studies 2016 Vol. 54, Issue 1, pp. 179-95. 37  RosStat. 20 CHAPTER 2 WHAT IS THE ECONOMIC POTENTIAL OF RUSSIA’S REGIONS — AND WHAT DRIVES IT ? figure 10 figure 11 P O P U L AT I O N C O N C E N T R AT E S IN L A R G E R C I T IE S N E T M I G R AT I O N B Y C E N T R A L I T Y O F C I T IE S 20  6 15  5 change in total population (2002-2016, %) 4 10  3 5  2 0  net migration (%) 1 –5  0 –10  –1 –15  –2 >1500 700-1500 400-700 100-400 50-100 <50 0 (center) 1-50 50-99 100-199 <200 range of city cize by population (as of 2002) distance from the city to the regional capital (km) 1991-2002 2003-2009 Source: RosStat Source: Mkrtchyan, H. (2012). Migration Balance of Russian Cities: how size and location of cities shapes the center-periphery relations; Demoscop, 519-520. Retrieved from https://goo.gl/8Di8r5. [In Russian] better and safer living environments. It is also a result of planning decisions that are driven by strict federal housing construction targets, resulting in sprawl instead of densification of cities (see Box 2). Box 2 Federal housing construction targets and their impact on planning decisions As a part of the push to increase housing affordability, for peripheral development are in direct contradiction the federal government requires regions to build a to municipal planning documents that identify the specified amount of housing every year. These targets densification of city centers as one of the main priorities are then often passed on to municipalities. The strong of spatial development (Ulyanovsk and Dimitrovgrad incentive to meet the targets leads to municipalities are two examples). Most strikingly, this happens even in opting to issue permits for development of high- cities that have been experiencing population decline. rise residential neighborhoods on greenfield sites in In addition, rushing to meet housing construction targets peripheral locations of cities — this is much faster and also often leads to development of neighborhoods that easier than pursuing piecemeal densification of city are underserved by social infrastructure and thus foster centers requiring detailed planning and pointed upgrades poor living conditions, such as the infamous "Krutie to infrastructure. In a number of cities, such decisions Klyuchi" neighborhood in Samara.38 38  Retrieved from https://goo.gl/jKQd3C. 21 RE-MAPPING OPPORTUNITY MAKING BEST USE OF THE ECONOMIC POTENTIAL OF RUSSIA’S REGION Enhancing connectivity Access to internal and external markets can enhance regional economic development. Proximity to large ports (measured by cargo throughput) displays a strong correlation to productivity (relative to other variables included in the EPI estimation) and is also statistically significant at alpha level 0.01, which underscores the importance of foreign trade as a driver of growth and productivity. The correlation between proximity to other highly-populated regions of the country and the level of regional productivity proves that access to a large market creates incentives for investment that pivotal for growth and productivity gains. This confirms the results of earlier research that shows that connectivity to ports and major population sectors is closely correlated with the productivity of manufacturing firms in Russia.39 Access to markets can be improved through investment in transport infrastructure and services, but the effects of such investments on the economies of individual regions are difficult to predict. The economic literature and empirical studies that focus on Russia do not offer a conclusive explanation as to how improved transport connectivity between regions impacts regional economies.40 The most widely accepted theory suggests that after transport links are improved knowledge-based services that benefit most from agglomeration effects tend to concentrate in a more central location, while in peripheral locations land and labor- intensive types of manufacturing become more attractive.41 The case for improving infrastructure connectivity to ports is also not straightforward. The benefits of improved connections might be impeded by foreign trade regimes, while negative outcomes resulting from greater competition with imported products are also possible. This suggests that while overall improvements to transport infrastructure should be a priority, specific investments should be subject to detailed analysis as to their potential impact on regional economies. It is important to identify situations in which regions are not able to exploit the potential benefits from access to markets and try to address the causes. In some cases, connectivity between regions may be limited due to factors beyond the quality of transport infrastructure and services. One such example is the failure of most of the regions around Moscow and Moscow Oblast to benefit from proximity to the largest market in the country. Figure 12 shows that travel time to Moscow and GRP per capita of regions is negatively correlated. There are several possible explanations for this phenomenon, and further detailed analysis of each of them is required to develop a sound policy response:42 –– One hypothesis suggests that the poor quality of transport infrastructure and extreme level of congestion makes the Moscow market far less accessible for producers in neighboring regions than the distance might suggest.43 39  Brown, et. al. (2008). Death of Distance? Economic Implications of infrastructure improvements in Russia; EIB papers, Volume 13, #2. 40 World Bank (2017, forthcoming). Russia connectivity report.   41  World Bank (2009). World Development Report: Rethinking Economic Geography. 42  There is insufficient evidence at the moment to draw a conclusion on this matter. Thus all the ideas presented here are hypotheses that require further investigation. 43  Grigoryev, L., Urozhaeva, V., Ivanov, D. (2011). Synthetic classification of regions: Basis for Regional Policy. In Grigoryev, L., Zubarevich, N., Khasayev G., (Eds.). Russian Regions: Economic Crisis and Problems of Modernization, 63. Moscow, TEIS. [In Russian]. 22 CHAPTER 2 WHAT IS THE ECONOMIC POTENTIAL OF RUSSIA’S REGIONS — AND WHAT DRIVES IT ? –– Another explanation points to the "brain drain" effect that Moscow has on neighboring regions. While there is no good way to ascertain the origins of migrants arriving in Moscow, data shows that Moscow and Moscow Oblast have a strong positive migration balance, while neighboring regions attract migrants at a lesser rate or are losing population. Proximity is the strongest predictor of migration in Russia,44 and a more than a 100 percent difference in average wages between Moscow and most of the regions in the Central Federal Okrug creates a strong incentive for the migration of the young and educated. –– Another theory holds that agglomeration is more likely to stimulate growth in neighboring regions if it based on scale economies. The strong economic performance of Moscow, however, derives substantially from the factor of its administrative sector, which lessens quickly with distance. In other words, if the main reason for high productivity in Moscow were the size of the market, then businesses in neighboring regions would also benefit from that. But if attractiveness of the capital is derived mostly from proximity to the national bureaucracy, then neighboring regions will hardly benefit.45 figure 12 PROXIMIT Y TO MOSCOW IS NOT A SOURCE OF PROSPERIT Y FOR NEIGHBORS 2 1 0 GRP per capita (log) –1 –2 8 9 10 11 12 13 Travel time from the regional capital to Moscow (in sec, log) Sources: RosStat, Google Maps Targeted improvements in connectivity between large urban centers can also be a way to enhance the benefits of agglomerations. If creating larger secondary cities through migration is difficult, larger conurbations can be formed by linking existing large cities with high-speed rail connections. In theory this should expand the size of the labor and product markets and thus deliver most of the benefits of a bigger agglomeration. A number of such proposals have already been put forward. They include linking Chelyabinsk, Ekaterinburg, and Nizhny Tagil; Krasnodar, Rostov-on-Don, and Stavropol; and Kazan, Cheboksary, and Ulyanovsk.46 This idea however presents several challenges. First of all, it is again unclear how the new connections will shift the economic balance between the cities, and whether all will benefit. Secondly, development of such merged conurbations will require coordination not only between cities, but also between and within regional governments. 44  Guriev, S., Vakulenko E. (2012). Convergence Between Russian Regions, CEFIR. Grigoryev, L., Urozhaeva, V., Ivanov, D. (2011). Synthetic classification of regions: Basis for Regional Policy. In Grigoryev, 45  L., Zubarevich, N., Khasayev G., (Eds.). Russian Regions: Economic Crisis and Problems of Modernization, 62-63. Moscow, TEIS. [In Russian]. 46  Dmitriev, Chistyakov (2017, unpublished). Reform agenda for the forthcoming policy cycle in Russia. 23 RE-MAPPING OPPORTUNITY MAKING BEST USE OF THE ECONOMIC POTENTIAL OF RUSSIA’S REGION figure 13 AV E R A G E WA G E S A N D M I G R AT I O N B A L A N C E I N T H E R E G I O N S O F T H E C E N T R A L F E D E R A L OKRUG 10 20 30 40 50 60 average monthly Moscow Oblast nominal salary in 2004, rubles Moscow net migration as a percentage of total population, Belgorod Oblast 2011-2014 average Voronezh Oblast Kaluga Oblast Yaroslavl Oblast Kursk Oblast Ryazan Oblast Tula Oblast Smolensk Oblast Lipetsk Oblast Tver Oblast Tambov Oblast Ivanovo Oblast Vladimir Oblast Kostroma Oblast Oryol Oblast Bryansk Oblast –0,5 0 0,5 1 1,5 2 Source: RosStat Nurturing high-tech sectors Technologically-advanced businesses are critical for regional productivity. The share of people employed in high-tech and medium-tech industrial production is strongly correlated with higher per capita output in western Russia. On average, a standard deviation increase share of high and medium employment is associated with a 0.32 standard deviation increase in GRP per capita — this is the second strongest correlation. In recent years, the technological sophistication of the Russian economy has been declining. The Economic Complexity Index (ECI) 47 of the Russian economy has been gradually declining throughout the first decade of the 2000s, The concept of economic complexity is based on Hausman, R. and Hidalgo, C. A. (2011) The Network Structure of an 47  Economic Unit; Journal of Economic Growth Volume 16, Issue 4, pp. 309–342. A key principle behind the concept of economic complexity is to view the exports structure as an indicator of knowledge possessed by a country (ECI). A region is considered to have a complex economy if it produces and exports many products, which can only be produced and exported by a few other regions. 24 CHAPTER 2 WHAT IS THE ECONOMIC POTENTIAL OF RUSSIA’S REGIONS — AND WHAT DRIVES IT ? Box 3 Did high-speed rail unlock growth opportunities in Tver region? In 2015, Tver, the capital of Tver region, was connected in real estate prices and wages, the improvement of the to Moscow (and St. Peterburg) with a high-speed rail transport connection made Tver much more attractive link. Travel time between Moscow and Tver on passenger for industries that need access to Moscow’s market but trains dropped from an average of just under 2 hours to otherwise do not benefit much from other aspects of 1 hour. It is possible that this was one of the key factors agglomeration. Verification of this observation requires contributing to a strong performance of the region’s deeper research, but Tver might be a proof-of-concept economy in subsequent years. In 2015‑16, the growth for the model of dispersed conurbations linked by high- of the economy of the Tver Oblast exceeded forecasts speed rail. (Figure 14 and Figure 15), and the regional budget’s own income grew by 7 percent, largely due to an increase in The counterhypothesis holds that improved connectivity property tax revenue. Eyewitness anecdotal evidence to Moscow may strengthen the ‘brain drain’ effect suggests that with the introduction of the new train, Tver discussed above, highlighting the importance of further started attracting commuters from towns in Moscow research into the spatial redistribution effects of such Oblast. It is plausible that due to the significant difference infrastructure investments. figure 14 figure 15 GRP GROWTH IN T VER OBL AST VS. PROJECTIONS GRP GROWTH IN VL ADIMIR OBL AST VS. PROJECTIONS billion Russian rubles billion Russian rubles 405 415 412 402 400 1 % 410 409 406 0,7 % 398 409 395 405 391 391 406 404 390 400 403 387 387 387 389 395 385 395 380 390 375 385 2011 2012 2013 2014 2015 2016 2011 2012 2013 2014 2015 2016 forecast actual outcomes difference between forcasted and observed GRP growth Source: Dmitriev, Chistyakov (2017, unpublished). Reform agenda for the Source: Dmitriev, Chistyakov (2017, unpublished). Reform agenda for the forthcoming policy cycle in Russia. forthcoming policy cycle in Russia. while during the same period China’s ECI has grown substantially and overtaken that of Russia (Figure 16). During this period, the contribution of manufacturing products to Russian exports has been gradually declining, as natural resource exports gained prominence. The effort to support development of high tech businesses should be sustained and developed at both the national and regional levels. The importance of innovation and high-tech economic clusters has been recognized by the Russian government for a long time. Policy initiatives promoting the development of a high- 25 RE-MAPPING OPPORTUNITY MAKING BEST USE OF THE ECONOMIC POTENTIAL OF RUSSIA’S REGION figure 16 CH A NGE IN EC ONOMIC C OMPL E X I T Y INDE X OF RU S SI A A ND CHIN A ( 19 90 -20 10) 1.0 Russia 0,89 0.9 0,82 0,79 China 0,8 0.8 0.7 0,64 0.6 0,48 0.5 0.4 0,36 0,32 0.3 0.2 0.1 0 1990 1995 2000 2005 2010 Source: Farra, F. et. al. (2013). Improving regional performance in Russia: a capability-based approach, EBRD. tech economy include creating Special Economic Zones (SEZs), the establishment of RosNano corporation and Skolkovo Innovation Center, and the opening of 94 business incubators, 85 techno parks, and 100 centers of technology transfer. However, the results of these initiatives remain unclear. At the same time, the centralization of R&D funding, the lack of private sector and university-led research, and weak collaboration between academics and business remain major policy challenges. A recent OECD study recommends that regions should adopt high-tech cluster development programs based on their current economic structure. More advanced regions with successful high-tech clusters should focus on creating favorable business conditions (access to finance, low administrative barriers, support to public-private collaborations in R&D) to improve competitiveness of established sectors. Regions where high-tech producers are present but not prominent can aim to scale up such activity through support to SMEs, export promotion, and FDI attraction, while the regions with little or no high- tech sector should focus on improvements in basic conditions such as skills as well as infrastructure to foster development of new complex products or sectors.48 Developing human capital The EPI estimation confirms that human capital is a critical component of regional productivity, even though the effect is weaker than expected due to measurement difficulties. Human capital (measured as a share of working-age populations with tertiary qualifications plays) a positive and statistically significant role in supporting economic development of the regions. However, the limited variation in the value of this variable and the inability to account for variation in the quality of university education results in underestimation of the significance of human capital. Human capital development should be a top priority of national development and should be done in a spatially "blind" manner. Russia prides itself on its high quality of human capital. The World Economic Forum’s Human Capital Report (2016) ranks Russia 28th in the world in human capital. Despite this strong ranking, clear gaps persist. Russia ranks 81st in life expectancy and only 54th in terms of human capital in the 0‑14 age group.49 For an economy aiming to diversify away from natural resource extraction and resume high and sustained growth, human capital is a critically 48  Farra, F. et. al. (2013). Improving regional performance in Russia: a capability-based approach, EBRD. 49  World Economic Forum (2016). Human Capital Report. 26 CHAPTER 2 WHAT IS THE ECONOMIC POTENTIAL OF RUSSIA’S REGIONS — AND WHAT DRIVES IT ? important factor. From a regional development angle, the main challenge of human capital investment is that people may leave the regions where they have been educated and where they have used health care services (specifically in their youth); thus, the investment in these areas may not pay off in the long-term for the region. For this reason, investment in education and health services should be the core function of the federal government, which should pursue this role in a spatially "blind" manner. The core role of regions is in fostering contacts between regional educational institutions and the private sector to ensure that they prepare candidates to meet the needs of local enterprises. Another important role for the regions is providing a living environment and a quality of services that will help retain and attract talented workers. Re-thinking monotowns Contrary to expectations the share of the population living in monotowns in the regions of western Russia does not necessarily hinder productivity in these regions. The share of the population living in monotowns is positively correlated with regional productivity, a finding contrary to this paper’s initial hypothesis. The hypothesis that monotowns are a failed relic of Soviet-era central planning may not hold entirely in western Russia. Some monotowns in western Russia may be in a position to foster productivity growth given their proximity to large markets, their ability to plug into supply chains of highly-industrialized regions, and the benefit they obtain from knowledge exchange that aids innovation and is more likely to be found in densely populated areas. Some monotowns have economic potential, but they require an individual approach. The underutilized potential of monotowns is defined by their individual characteristics: industrial focus; the quality of their location, infrastructure, and human capital; and the ability of the city and region to reorient these assets towards new markets. Nurturing such characteristics requires an individualized policy approach. The research by the New Economic Center suggests that greater economic specialization by small towns could add almost $ 4 billion to the Russian economy by 2030.50 Currently, the main federal policy supporting monotowns (Territories of Accelerated Socio- Economic Development — TASED) focuses on offering tax and export/import duty discounts to business residents of the monotowns with TASED status. It is not clear whether this policy will help optimize the specific economic assets of monotowns although it is likely that this policy will lead to firms relocating to take advantage of tax discounts. Another government initiative, the Monotown Development Fund, allows regions to implement targeted investment in infrastructure and private sector development in monotowns. This approach seems to be more promising as it can potentially allow for more tailored responses to the challenges of individual towns. However, its effectiveness may be limited by a focus on only those monotowns that face the greatest social challenges, and thus probably have the lowest economic potential. Making more of agriculture’s potential in the regions Favorable natural conditions for agriculture do not correspond to higher productivity in regional economies. In fact, the model’s results show a statistically- significant, negative correlation between the measure of agricultural suitability (climate and soils) and GRP per capita. This result may suggest that agriculture contributes less to regional productivity than other sectors, and possibly that regions Dmitriev, Chistyakov (2017). Reform agenda for the forthcoming policy cycle in Russia. 50  27 RE-MAPPING OPPORTUNITY MAKING BEST USE OF THE ECONOMIC POTENTIAL OF RUSSIA’S REGION specializing in agriculture based on natural endowments struggle to develop more productive forms of economic activity. This observation leads to a number of questions for further research. Are there opportunities for increasing agricultural productivity? Why do regions struggle to use favorable conditions for agriculture to lure investors in related industries, such as agro-processing and agro-equipment manufacturing? Where is the potential among the regions, and what does it tell us about them? The results of the model can be used to estimate the Economic Potential Index (EPI), and the comparison of the EPI value with the observed level of productivity reveals how close regions are to fulfilling their potential. The Economic Potential Index calculates a predicted level of GRP per capita using the observed levels of the structural independent variables in the model. We can distinguish between regions that exceed, meet, or are yet to meet their predicted level of GRP per capita (potential) by comparing predicted levels of productivity to observed levels of productivity.51 EPI estimates for the regions show that the conditions associated with achieving high levels of productivity are not confined to Moscow and St. Petersburg.52 Three corridors of high potential can be identified: –– One band of medium-high and high potential radiates from Moscow and spreads slightly north and south to include such high potential regions as Yaroslavl, Kaluga, Ryazan, and Lipetsk oblasts among a number of other medium-high potential regions. It appears that these regions benefit from proximity to major population centers as well as from high rates of urbanization. –– The second group of high potential regions stretches from Rostov Oblast in the south along the Volga River to Tatarstan in the north and includes Volgograd, Samara, Ulyanovsk Oblast, and Chuvash Republic. All of these regions are densely populated and have large urban centers, a highly-educated population, and established industrial bases that include technologically-advanced companies. –– The third grouping of high potential regions is concentrated in the southern Urals. It includes Sverdlovsk Oblast and Chelyabinsk Oblast. These regions are highly urbanized and are well-known for being the industrial heartland of Russia. –– The most surprising region identified as having high potential is Murmansk Oblast. Its high potential status is driven primarily by its access to external markets given the number of ports located in the Oblast and the volume of cargo transiting its ports. The potential is also driven by its highly-educated population and, finally, by its high urbanization levels that are typical of the sparsely populated territories in the north. The EPI finds that low potential regions are concentrated in southern Russia. This is largely due to the regions’ remote locations, their low level of urbanization, and the small size of their major cities. Additionally, these areas are "penalized" for having a highly favorable climate for agriculture. It is worth focusing on the special case of Krasnodar Krai — one of the rapidly developing Russian regions. 51 The limitations of this methodology are discussed in detail in Annex 2. 52 T he Economic Potential Index (EPI) value is calculated using the results of the regression model. Comparison of the EPI   value with the observed level of productivity reveals how close regions are to fulfilling their potential. This can be used to distinguish between regions that exceed, meet, or are yet to meet their predicted level of GRP per capita (potential) by comparing predicted levels of productivity to observed levels of productivity. The limitations of this methodology are discussed in detail in in Annex 2. 28 CHAPTER 2 WHAT IS THE ECONOMIC POTENTIAL OF RUSSIA’S REGIONS — AND WHAT DRIVES IT ? Despite fast economic growth in recent years, and favorable rankings for business environment and investment attractiveness53 the region has a low EPI ranking. This reflects the results of the EPI model, which assigns high importance to presence of high-tech industries, level of urbanization, which are typical for highly productive regions but are lacking in Krasnodar. But Krasnodar’s conditions are hardly typical for the European part of Russia. They support development of highly productive and competitive tourism and agricultural sectors (fertility of soils in the region are double of Russian average, see Annex 1). In other words partially the low EPI estimate reflects that structural endowments of Krasnodar Krai are unique for the European part of Russa. In this regard, the focus of regional policy should be on maximizing the benefits of regions competitive advantages (e.  g. recreational resources and agriculture), in combination with addressing the structural conditions that may constrain economic development: access to markets of other Russian regions, human capital, innovation and presence of high-tech businesses. The strong performance of the region’s ports — ranking 9th of 56 and for agriculture suitability — ranking 5th out of 56, should be seen as advantages that the region needs to utilize. Figure 18 shows that the map of actual level of economic development in the regions of western Russia doesn’t perfectly match the map of economic potential:54 –– A large share of regions that are estimated to have high potential fail to reach predicted levels of productivity. Out of 21 regions with high and medium-high potential, eight have yet to fulfill this potential. –– Some low potential regions manage to reach GRP per capita levels that exceed projections based on their structural endowments. Of 22 regions that perform above their predicted level, 12 are categorized as low or low-medium potential. Like high potential regions, over-performing regions also tend to concentrate spatially. Clusters of over-performing regions are found in the north, on the border of Volga Okrug and the Southern Urals, and in the southwest along the Ukrainian border. The difference between the potential and performance of regions can be partially explained by institutional and policy factors. The quantitative analysis didn’t produce conclusive results about the role of regional institutions and governance; however, Chapter 3 presents evidence that addresses this analytical gap and shows the importance of these factors for regional economic development. Annex 1 also shows how the condition of institutions for the regional economy and economic development policy help or impede utilization of economic potential of the region. Additionally, Box 4 explains why economic growth dynamics in the regions are not necessarily correlated with their economic potential. Krasnodar Krai is ranked 7th in the country for investment attractiveness by Agency of Strategic Initiatives (ASI). 53  See: https://goo.gl/6UMGnb Part of the difference between performance and potential estimates can be explained by limitations of the model and under accounting 54  for some factors due to lack of data (quality of institutions and quality of education) or deliberate exclusion of such conditions form the model (natural resources). However, part of the difference can be explained by policies implemented by the regions. 29 RE-MAPPING OPPORTUNITY MAKING BEST USE OF THE ECONOMIC POTENTIAL OF RUSSIA’S REGION figure 17 ECONOMIC POTENTIAL INDEX FOR THE REGIONS OF WESTERN RUSSIA 1 Adygea Republic 43 Moscow 4 Arkhangelsk Oblast 44 Moscow Oblast 5 Astrakhan Oblast 45 Murmansk Oblast 45 6 Bashkortostan Republic 47 Nizhny Novgorod 7 Belgorod Oblast 48 Noth Ossetia Alania Republic 21 26 8 Bryansk Oblast 49 Novgorod Oblast 14 10 Chechen Republic 52 Oryol Oblast 38 11 Chelyabinsk Oblast 54 Penza Oblast 57 13 Chuvash Republic 55 Perm Krai 49 4 14 St. Petersburg 57 Pskov Oblast 15 Dagestan Republic 58 Rostov Oblast 64 72 78 17 Ingushetia Republic 59 Ryazan Oblast 81 19 Ivanovo Oblast 62 Samara Oblast 8 23 43 20 Kabardino Balkar Republic 63 Saratov Oblast 44 19 33 52 70 76 21 Kaliningrad Oblast 64 Smolensk Oblast 37 59 22 Kalmykia Republic 65 Stavropol Krai 39 47 31 7 23 KalugaOblast 66 Sverdlovsk Oblast 67 42 41 79 13 25 Karachay Cherkess 67 Tambov Oblast 54 55 74 26 Karelia Republic 68 Tatarstan Republic 75 68 31 Kirov Oblast 70 Tula Oblast 66 33 Kostroma 72 Tver Oblast 34 58 77 63 62 34 Krasnodar Krai 74 Udmurt Republic 1 6 36 Kurgan Oblast 75 Ulyanovsk Oblast 11 37 Kursk Oblast 76 Vladimir Oblast 25 22 36 65 38 Leningrad Oblast 77 Volgograd Oblast 20 5 39 Lipetsk Oblast 78 Vologda Oblast 48 41 Mari El Republic 79 Voronezh Oblast 17 10 42 Mordovia Republic 81 Yaroslavl Oblast 15 Economic Potential Index, 2014 high: 61.8 – 100 medium high: 55.6 – 61.8 Source: Research elaborated by the authors. medium 48.7 – 55.6 low medium: 35.2 – 48.7 low 0 –35.2 figure 18 R E G I O N S O F W E S T E R N R U S S I A T H AT M E E T T H E I R E C O N O M I C P O T E N T I A L , E X C E E D I T, OR ARE STILL TO REACH IT 1 Adygea Republic 43 Moscow 4 Arkhangelsk Oblast 44 Moscow Oblast 45 5 Astrakhan Oblast 45 Murmansk Oblast 6 Bashkortostan Republic 47 Nizhny Novgorod 21 26 7 Belgorod Oblast 48 Noth Ossetia Alania Republic 14 8 Bryansk Oblast 49 Novgorod Oblast 38 10 Chechen Republic 52 Oryol Oblast 57 49 11 Chelyabinsk Oblast 54 Penza Oblast 4 13 Chuvash Republic 55 Perm Krai 72 14 St. Petersburg 57 Pskov Oblast 64 78 15 Dagestan Republic 58 Rostov Oblast 81 8 43 17 Ingushetia Republic 59 Ryazan Oblast 23 44 33 19 Ivanovo Oblast 62 Samara Oblast 52 70 76 19 20 Kabardino Balkar Republic 63 Saratov Oblast 37 59 21 Kaliningrad Oblast 64 Smolensk Oblast 39 47 31 7 42 22 Kalmykia Republic 65 Stavropol Krai 67 41 79 13 23 KalugaOblast 66 Sverdlovsk Oblast 54 74 55 25 Karachay Cherkess 67 Tambov Oblast 75 68 26 Karelia Republic 68 Tatarstan Republic 66 58 77 63 62 31 Kirov Oblast 70 Tula Oblast 34 33 Kostroma 72 Tver Oblast 1 6 34 Krasnodar Krai 74 Udmurt Republic 11 36 36 Kurgan Oblast 75 Ulyanovsk Oblast 25 65 22 37 Kursk Oblast 76 Vladimir Oblast 20 5 38 Leningrad Oblast 77 Volgograd Oblast 48 39 Lipetsk Oblast 78 Vologda Oblast 17 10 41 Mari El Republic 79 Voronezh Oblast 15 42 Mordovia Republic 81 Yaroslavl Oblast Performance versus Potential, 2014 exceed: GRP per capita above predicted level fulfill: GRP per capita at predicted level Source: Research elaborated by the authors. yet to fulfill: GRP per capita below predicted level 30 CHAPTER 2 WHAT IS THE ECONOMIC POTENTIAL OF RUSSIA’S REGIONS — AND WHAT DRIVES IT ? Box 4 Economic potential is not the only factor that determines the economic growth of regions in the short run Many of the regions that have achieved high rates of to growth there in this period. One hypothesis is that economic growth were not estimated to be regions agriculture was a significant contributor to growth of high potential. The factors that make up economic between 2010 and 2014, as seven of the high growth potential define the development patterns over a long regions were also in the top 10 in terms of growth in period, while over shorter stretches (3‑5 years) growth agricultural output from 2009‑2014.54 While it is difficult dynamics can be driven by temporary external effects to assert that agriculture was growing extremely rapidly (market or geopolitical shocks) that benefit (or adversely in Russia in recent years, it was one of the more stable affect) certain industries or certain geographic areas. sectors while many others stagnated, thus, explaining Examples from Russia’s recent history include oil these results. price fluctuation and the EU embargo on imports of foodstuffs that had particular effect on oil-producing and agricultural regions, respectively. Figure 19 shows that, in recent years, most of the high growth regions in Russia were concentrated in the southern part of the Central Federal Okrug and the southern part of the Volga Okrug. Additional analysis is required to identify the factors that contributed most figure 19 ECONOMIC PERFORM A NCE OF REGION A L ECONOMIES, 20 10-20 14 based on average annual growth rate of real GRP in equalized prices as of 2010 1 Adygea Republic 43 Moscow 4 Arkhangelsk Oblast 44 Moscow Oblast 45 5 Astrakhan Oblast 45 Murmansk Oblast 6 Bashkortostan Republic 47 Nizhny Novgorod 21 26 7 Belgorod Oblast 48 Noth Ossetia Alania Republic 14 8 Bryansk Oblast 49 Novgorod Oblast 38 10 Chechen Republic 52 Oryol Oblast 57 49 11 Chelyabinsk Oblast 54 Penza Oblast 4 13 Chuvash Republic 55 Perm Krai 14 72 St. Petersburg 57 Pskov Oblast 64 78 15 Dagestan Republic 58 Rostov Oblast 81 8 43 17 Ingushetia Republic 59 Ryazan Oblast 23 44 33 19 Ivanovo Oblast 62 Samara Oblast 70 76 19 52 20 Kabardino Balkar Republic 63 Saratov Oblast 37 59 21 Kaliningrad Oblast 64 Smolensk Oblast 39 47 31 7 42 22 Kalmykia Republic 65 Stavropol Krai 67 41 79 13 23 KalugaOblast 66 Sverdlovsk Oblast 54 74 55 25 Karachay Cherkess 67 Tambov Oblast 75 68 26 Karelia Republic 68 Tatarstan Republic 66 58 77 63 62 31 Kirov Oblast 70 Tula Oblast 34 33 Kostroma 72 Tver Oblast 1 6 34 Krasnodar Krai 74 Udmurt Republic 11 36 36 Kurgan Oblast 75 Ulyanovsk Oblast 25 65 22 37 Kursk Oblast 76 Vladimir Oblast 20 5 38 Leningrad Oblast 77 Volgograd Oblast 48 39 Lipetsk Oblast 78 Vologda Oblast 17 10 41 Mari El Republic 79 Voronezh Oblast 15 42 Mordovia Republic 81 Yaroslavl Oblast GRP per capita growth performance, 2010-2014 above average GRP growth rate Source: Research elaborated by the authors using RosStat data. average GRP growth rate  RosStat. 54  below average GRP growth rate 31 RE-MAPPING OPPORTUNITY MAKING BEST USE OF THE ECONOMIC POTENTIAL OF RUSSIA’S REGION CHAPTER 3 What is the role of regional institutions, governance, and policy in a region achieving its economic potential? This chapter shows that policies and institutional conditions have an important effect on the economic development outcomes of regions. Despite the fact that the data analysis presented above failed to establish a clear link between the institutional conditions and quality of governance in individual regions in Russia and their economic performance, qualitative evidence presented in this chapter demonstrates that the role of governance and institutions is important for advancing regional economic development. Given the high level of centralization of power in Russia, the analysis first covers the role of the federal government’s regional development policies and then shifts to policy at the level of individual regions. The evolution of national policies for regional development Over the last 25 years, the federal government’s approach to regional development changed several times. Thus, the circumstances under which regional governments operate have also changed. The evolution of policy thinking can best be tracked through two main streams: inter-governmental budgetary policy and targeted regional development initiatives (key events in both of these policy areas are presented in Figure 20). The trend towards decentralization of power and resources in the early 1990s was reversed in the 2000s. In the early days of the new Russian state, the government allowed regions to claim greater authorities through a process known as the "parade of sovereignties." This process was restricted by the adoption of the Russian constitution in 1993, which prohibited the sovereignty of regions, and federal laws took precedence over regional ones. The foundation of regional development policy was laid in 1996 with the introduction of the presidential decree "The basic principles of regional policy in the Russian Federation."55 Overall, the document aimed to support the development of a federal system through the gradual delegation of powers; however, it was never implemented, and throughout the 1990s there was no systematic regional development policy. Further developments in this area occurred only in 2004 with the initiation of the Ministry for Regional Development. The ministry de-facto contributed to re-centralization of regional economic development powers. It got involved in strategic planning for regions and introduced such instruments as Targeted Federal Programs (TFPs) and State Programs (SPs) that offered regions financing for critical projects but which increased their dependence on the center. The spatially-targeted programs focusing on peripheral macro regions (designed for development of the Far East, Baikal region, and Kaliningrad region) were the next major policy trend. Eventually, this trend led to the establishment of the Ministry for Development of the Far East (in 2012), and later the Ministry P resident of the Russian Federation (1996). Decree of the president of the Russian Federation 03.06.1996 #803:   55 "The basic principles of regional policy in the Russian Federation." 32 CHAPTER 3 WHAT IS THE ROLE OF REGIONAL INSTITUTIONS, GOVERNANCE, AND POLICY IN A REGION ACHIEVING ITS ECONOMIC POTENTIAL? for Development of the Northern Caucasus. However, the Ministry for Regional Development was abolished in 2014. Spatially-targeted programs for lagging territories are important for ensuring territorial integration, but they should not be expected to create new drivers of economic growth for the national economy. Today, spatially targeted programs account for 7.7 percent of the total budget of all State Programs (excluding programs focused on defense).56 The three territorially-focused national programs existing today differ substantially in objectives, motivations, and the range of instruments involved (Annex 3 offers an overview of current programs). One objective of these programs is spatial equalization of economic development, but national security concerns are also a critical consideration, which means that the programs can’t be evaluated purely on their economic development merits. The programs are justified by the unique needs of the targeted territories and their limited integration into the national economy. They, however, are not likely to lead to a substantial boost in national growth. The North Caucasus and the Far East combined contributed 6.6 percent to national GDP and 6.4 percent to growth in the period 2009‑2015, most of it through natural resource figure 20 E VOLU T ION OF FEDER A L REGION A L DE V EL OPMEN T P OL ICY IN RUS SI A , 19 90-20 17 Regional Development Regional Policy Concept of the Presidential decree Bill passed enhancement on principles (not implemented) of efficiency of of Regional inter-budgetary Developmnt Policy relations The MoRD Far East MoRD constitution established Development suspended limits Ministry sovereignties established 1993 1996 2004 2010 2012 2014 2017 1991 1998 2000 2001 2008 Parade of Concept Budget Codex Equalization formula Regions no longer retain sovereignties of inter-budgetary passes vote established a  part of oil and gas reform approved in Duma extraction tax Concept of the enhancement of efficiency of inter-budgetary relations Budget Equalization Abbreviations: MoRD (Ministry of Regional Development), RDP (Regional Development Policy) Source: Research elaborated by the authors. 56 Retrieved from https://goo.gl/iewQsi.   33 RE-MAPPING OPPORTUNITY MAKING BEST USE OF THE ECONOMIC POTENTIAL OF RUSSIA’S REGION exports.57 The low economic potential of most of the North Caucasus is confirmed by the EPI results. The Far East has been struggling to retain population and has been reliant on natural resource exports to deliver growth. However, the region’s proximity to the large Chinese market has yet to be utilized as a driver of growth.58 The Arctic regions can contribute to the economy through better utilization of natural resources, but are unlikely to be key drivers of productivity growth due to harsh living conditions and the difficulty of sustaining large agglomerations. It is much more likely that new drivers of economic growth could emerge in the high potential regions of western Russia, as suggested by the results of the EPI. Spatially-targeted programs can be strengthened by learning from existing local experience as well as global experience. The results of the programs so far suggest that they are more effective at equalizing social outcomes through improvements to basic infrastructure and access to healthcare and education, than at equalizing economic outcomes through spatially-focused incentives to investors. This can be seen in the contrast between the North Caucasus program, which in its first phase mostly targeted social outcomes and was considered rather successful, and the Far East development program, which focused on spatially-bounded incentives to investors and was less effective (see Annex 3). This finding is consistent with findings globally. It suggests that investment in services and basic infrastructure in lagging areas can be effective tools for integration (partially through giving people opportunity to relocate to more productive places, partially through reducing disparities in the quality of life). On the other hand, incentives aimed at fostering economic growth in lagging areas are often ineffective; indeed, there have been multiple failed attempts to lure investors to lagging areas in order to help them catch up. Among countries attempting such programs, little substantial progress has been made in southern Italy, France, northern England, northwest Brazil, the peripheral areas of Mexico, and rural India.59 Do regional institutions and governance matter — and how much? Evidence from around the globe supports the argument that institutions and governance matter for economic development. While academic debate about the nature of the causal relationship between the quality of governance and institutions and economic growth continues, there is a broad consensus that these factors are correlated;60 in fact, on a global scale the quality of institutions might be the strongest predictor of the level of development.61 Empirical enquiries have identified strong relationships between specific aspects of governance and institutions and economic growth, including the enforceability of contracts,62 corruption, and others.63 A close correlation between the quality of regional 57  RosStat http://www.gks.ru. Government of the Russian Federation (2009). Strategy of socio-economic development of the Far East and Baikal regions 58  until 2025. 59  World Bank (2009). World Development Report 2009: Rethinking Economic Geography, 254-256. Holmberg, S., Rothstein, B. & Nasiritousi, N. (2009). Quality of Government: What You Get, Annual Review of Political 60  Science 12: 135-161. Rodrick, D., Subramanian, A., Trebbi, F. (2002). Institutions Rule: The Primacy of Institutions over Geography and 61  Integration in Economic Development, NBER Working Paper Series. Knack, S., Keefer, P. (1995). Institutions and Economic Performance: Cross-country Tests Using Alternative Institutional 62  Measures, Journal of Economics and Politics. 63  Mo, P. H. (2001). Corruption and Economic Growth, Journal of Comparative Economics, 29, 66-79. 34 CHAPTER 3 WHAT IS THE ROLE OF REGIONAL INSTITUTIONS, GOVERNANCE, AND POLICY IN A REGION ACHIEVING ITS ECONOMIC POTENTIAL? Box 5 Case study methodology A case study is an empirical inquiry into a phenomenon data collection that included interviews with key public from a real-world context and applies a mixture of officials, private sector associations, businesses, and quantitative and qualitative techniques for data academics in each of the regions. Field data collection collection and analysis. Among the benefits of the was conducted during March-April 2017. Case study case study approach are that it allows examination of teams spent a week in each of the case study regions. causal effects as well as causal mechanisms in order to The selection of case studies was informed by understand specifically how one event leads to the other preliminary results from the EPI analysis, even though and why certain outcomes are observed.64 the results couldn’t be factored into the selection In this paper, the case studies were used to establish process due to a tight timeline. The aim was to select to what extent conditions for regional institutions regions with different characteristics and different and governance influence economic outcomes of the outcomes to allow for cross-case comparison. The regional governments’ willingness to collaborate and regions relative to other factors, and more importantly, provide assistance in the preparation of the case to explain why and how those effects occur. The studies was also a significant factor that influenced emphasis is thus on understanding the mechanisms case selection. The final selection yielded a rather that shape the climate influencing regional governance diverse group of regions in terms of their structural and institutions and translating them into economic characteristics and endowments, approaches to outcomes. governance, and observed economic outcomes. The case studies relied on a combination of analysis of The three selected regions were: The Republic of secondary literature, statistical data, and qualitative Bashkortostan, Krasnodar Krai, and Ulyanovsk Oblast. Source: Sivaev, D. (2017). Re-mapping Opportunities: Case Study Design Paper (available upon request). governance and the level of economic development has been found globally,65 and in particular, in the countries of the European Union.66 Empirical studies have proven that reforms of business regulations and transparency of regional governance have a positive effect on the diversification of regional economies in Russia67 and that corruption is a significant deterrent for regional development in Russia.68 However, it is also widely acknowledged that regional governments in Russia are rather restricted in what they can do due to the high degree of centralization of power and resources.69 This report uses a narrow definition of institutions and governance to understand their impact on the observed level of regional productivity. In this way, institutions are mostly understood relative to the business climate as measured 64  Yin K. (2016). Case Study Research: Design and Methods: Applied Social Research Methods. 65  Rodriguez-Poze, A. (2013) Do Institutions Matter for Regional Development? Regional Studies, 47 (7). 66  Charron, N., Lapuente, V., Dijkstra L. (2002). Regional Governance Matters; European Commission Working Paper. Yakovlev, E., Zhuravskaya, E. (2013). Unequal effects of liberalization on diversification of Russia’s regions, European Bank 67  for Reconstruction and Development. Kaliuzhnova, N. (2011). Institutes of Regional Development and Competitiveness in the Conditions of Modernization. 68  Regional Economics, 2. 69  Ibid. 35 RE-MAPPING OPPORTUNITY MAKING BEST USE OF THE ECONOMIC POTENTIAL OF RUSSIA’S REGION through the characteristics of the regulatory environment70 and through perceptions of the public and private sectors. Quality of governance is primarily understood as effectiveness in identification of policy priorities and in their implementation. This approach is mostly defined by methodological limitations and the availability of data. The analysis in this chapter is based on the results of qualitative case studies (the case study methodology is described in Box 5; the results of individual case studies are summarized in Annex 1). Regional governments have the tools to support economic development In-depth case studies of selected Russian regions show that the quality of governance and institutions at the regional level can make a difference for economic development. Ulyanovsk Oblast offers a good example of how a change in government priorities and operating principles can lead to improved economic outcomes (see Ulyanovsk case description in Annex 1). After the 2005 change of government, the region went from lagging behind the national economy to gradually catching up. The shift of government priorities in Ulyanovsk was drastic: the region went from one of the most conservative and protectionist regimes in the late 1990s to one of the most economically liberal and pro-business since 2005. In the other two case studies — Republic of Bashkortostan and Krasnodar Krai — a similar, but more gradual shift in government priorities towards improvement of the business climate occurred more recently. For now, the effect of this priority shift in these two regions can only be registered in terms of improvements in the business sector’s perception of the investment climate as it is not yet reflected in macro statistics. Investment promotion is the most direct way for regions to enhance their economic outcomes. Krasnodar Krai is a region that has benefited from attracting international investors since the late 1990s. The investors were drawn to the region by its seaside resorts, ports, and large local market, rather than by proactive government policy. Ulyanovsk Oblast on the other hand achieved success in attracting investors only after the regional government put investment promotion at the center of its development strategy in 2005. Ulyanovsk was not the first region to do this; Kaluga and Belgorod oblasts were the early adopters of an FDI-led economic development strategy in Russia in the early 2000s. The experience of these regions proves that openness to investors, and eagerness to provide favorable conditions (investment-ready land, support with bureaucratic procedures, and assistance in accessing federal subsidies) can lead to quick wins for regions. As other sources of growth (most notably natural resource exports) dried up after the 2008 crisis, many regions started paying closer attention to external investment. Bashkortostan brought investment attraction to the top of the agenda after the 2010 change of government, and has since established an investment promotion office and a system for supporting investors. It is likely that in the upcoming period many more regions will be competing for a pool of investors that, however, has been shrinking since the EU and US introduced economic sanctions against Russia. As the competition for investors becomes more intense, it is likely to lead to tax discount wars between regions, which will not be beneficial for already-squeezed regional budgets (Box 6). See World Bank (2017). Doing Business 2017. 70  36 CHAPTER 3 WHAT IS THE ROLE OF REGIONAL INSTITUTIONS, GOVERNANCE, AND POLICY IN A REGION ACHIEVING ITS ECONOMIC POTENTIAL? Box 6 To tax or not to tax Tax discounts are one of the easiest and most effective Overall, 50 Russian regions examined offer some form ways for regions to increase their attractiveness to of tax discounts to investors. Further proliferation of investors. Regions covered in the case studies offered this practice might prove costly for the regions that rather contrasting approaches to tax discounts. already find themselves extremely restricted in terms of available revenue.71 Ulyanovsk Oblast eagerly offers all investors that bring over $ 10 million into the region a 15.5 percent discount on The USA offers a negative example of the unintended taxes of corporate profit for 15 years; a 0 percent rate for consequences of tax discount wars between corporate property tax and transport tax for 10 years; and jurisdictions. In the USA, the tax discount competition 0 percent rate for land tax for 8 years. Large investors are between the states has given large corporations a lot therefore basically exempt from all regional taxes. Regional of bargaining power and helped them gain huge tax government representatives defend this approach by discounts by threatening regional governments with explaining that the arrival of new investors nonetheless the relocation of their operations and resulting loss creates some revenue for the region through taxes on of local jobs and revenue. Boeing, the aircraft maker, personal income from the jobs that are created and that negotiated $ 9 billion in tax discounts from Washington without investors even that extra revenue would not occur. state, and Nike, the sportswear manufacturer, got a $ 2 billion discount from Oregon. The paradox is that Bashkortostan is less generous with tax discounts. both companies were founded and grew into global Discounts are offered only to investment initiatives that corporations in these states.72 are identified as priority projects, a status conferred by the investment board chaired by the Governor. Russian regions should try to avoid such bidding wars Investment board meetings are open to the public. and priority should be given to competing over the quality The strategic projects receive a 15.5 percent discount of the business environment and investor services. Of on taxes on corporate profit and 0 percent corporate course, tax discounts shouldn’t be disregarded as a tool property tax rate for 10 years. The region also offers for investment promotion, particularly because they can subsidies to cover interest payments on loans from help regions compensate for other factors that put them private banks. at a disadvantage with other regions. However, each tax discount offer should be seen as an investment (as it Krasnodar Krai is much more cautious about offering tax constitutes a loss of potential income to the regional incentives. While some tax discounts are available, they budget), and should be put through rigorous economic are less generous and are offered for shorter periods of analysis to ensure that its contribution to the regional time. The government’s position is that the region offers budget and regional economy is positive. investors a favorable environment for doing business, and thus no further incentives are necessary. 71  PWC (2016). Tax Policy Ranking of Regions of Russian Federation. 72 Badger, E. (2014). Should we ban states and cities from offering tax breaks for Jobs? The Washington Post. Retrieved from https://goo.gl/285G17.   37 RE-MAPPING OPPORTUNITY MAKING BEST USE OF THE ECONOMIC POTENTIAL OF RUSSIA’S REGION A number of Russian regions have used the "institutions for development" model to effectively implement investment promotion strategies. "Institutions for development" initiatives were first introduced in the Kaluga region and have now been adopted by more than 40 regions across Russia, including the three regions covered in the case studies of this report. These institutions are usually set up as government- owned commercial enterprises. Their functions may vary, but they typically use government funding to prepare public land for investors, provide investor support services, and help investors resolve problems by facilitating direct access to senior officials of the region. Their main benefit is the ability to adopt a more agile, goal- oriented, and client-facing management approach — typically found in the private sector, but rare in highly-bureaucratized regional government ministries. However, not all "institutions for development" are equally successful. A lot of them struggle to establish effective systems and protocols necessary for analyzing market trends and opportunities, identifying potential investors, providing investor services of consistently high quality, and mobilizing and retaining qualified staff.72 Box 7 discusses the models of development institutions used in Ulyanovsk Oblast and Bashkortostan Republic. Business environment reforms are another area where regional governments can make a difference. For a number of years, Russia received very low scores from the IFC/World Bank Doing Business survey of the quality of the business environment.73 These rankings attracted a lot of attention in Russia, such that improvements in the regulatory environment became a top priority of the federal government. Today targets for regulatory simplification are passed on from the federal government to the regions. Regulatory environment indicators make up the core of the rating of a region’s investment climate assessed by the Agency for Strategic Initiatives (ASI), government-affiliated think tank. The rating is now one of the key measures used by federal authorities to evaluate a regional government’s performance. It is also often used as a Key Performance Indicator (KPI) for regional ministers, as is the case in Bashkortostan. Ulyanovsk Oblast provides an example of best practice in regulatory reforms (Box 8). Small and medium-sized enterprise (SME) support is a new area of policy focus for the regional governments. This trend has emerged largely out of the recognition that other avenues for economic growth (external investment and further growth of established large enterprises) have been hurt by recent recessions and geo-political events. The focus on SMEs forces regions to adopt a holistic approach to regulatory and other business reforms instead of providing special treatment to selected investors. It has also produced interesting policy innovations: –– The Entrepreneurship Development Corporation of Ulyanovsk region provides a comprehensive array of services to SMEs and start-ups. It consolidates all concessionary financing options that SMEs can access through federal support programs, and helps entrepreneurs navigate the complex system. The Corporation also provides a "one-stop shop" for all the regulatory needs of entrepreneurs, and even works on improving the image of entrepreneurs by running campaigns that aim to engage more people in entrepreneurship. –– Bashkortostan’s entrepreneurship development department in the Ministry of Economic Development runs several innovative initiatives including a "start-up bus" — a mobile entrepreneurship support office that travels to remote areas of the region. Skorobogaty, P. (2016). Hunters for Investment; Expert Magazine, 24 June 2016. [In Russian]. 72  http://www.doingbusiness.org/ 73  38 CHAPTER 3 WHAT IS THE ROLE OF REGIONAL INSTITUTIONS, GOVERNANCE, AND POLICY IN A REGION ACHIEVING ITS ECONOMIC POTENTIAL? Box 7 Development Corporations of Ulyanovsk Oblast and Bashkortostan The Ulyanovsk Region Development Corporation • It enjoyed the support of the Governor. While the (URDC) and the Corporation for the Development of URDC has no direct mandate to request support Bashkortostan (DCB) fulfill similar functions, but the from different ministries and government agencies, differences in the way they are organized highlight the it does so de facto by placing a direct request to the range of variations for the model of "institutions for governor whenever an issue needs to be resolved. development". The URDC also actively promotes the localization of the The URDC was set up in 2008 and its structure was supply chain of investors. It seeks out local companies designed based on a thorough review of best practices that can produce the inputs required, and gives them from other regions. Over the course of its existence, the all necessary support in meeting the standards of the URDC has attracted the likes of Bridgestone, DM Mori, foreign investor. and Mars to the region. It was also pivotal in attracting By contrast, the DCB is far less integrated with the several large-scale federal government investments, government of the region, although the corporation is including the Port Free Trade Zone. In addition, other owned by the region. In the past, it received financial successful development institutions were spun out of the support from the region to develop the infrastructure for URDC itself over the years. industrial zones, but today the organization is self-funded The URDC’s success can be attributed to three aspects by offering paid services alongside the basic package of its organization and governance: to all investors. The focus of the DCB is much narrower than that of the URDC, and it can hardly claim to have • From the start, it used private sector principles for as significant of an impact on the region as the URDC. hiring and motivating staff. However, it has a good record in developing infrastructure • It used rigorous analysis to identify investment and in attracting investors, and its experience offers attraction priorities, and it always had a strategy an example of a much leaner approach to regional that was carefully followed. If some targets were not investment promotion. met (e.  g., the target to attract aircraft builders to the region), it was re-evaluated and priorities were changed. Source: Interviews with the officials of the Ulyanovsk Oblast Administration. Another interesting initiative pioneered in Bashkortostan is the trade house "Product of Bashkortostan" — an organization that, in addition to helping develop a regional brand, helps local small-scale farmers and food processors ensure quality and bring products to the shelves of large chain retailers, which is notoriously difficult in Russia.74 In addition to regional policies and institutional conditions, the case studies for this report found that region-specific structural characteristics help determine the difference between economic potential and performance. This was observed to some extent in each of the regions selected for case studies: –– Despite being recognized for its effective governance and good investment climate, Ulyanovsk Oblast’s GRP per capita is still below the national average, and it is Large chain retailers’ monopoly on retail markets results in small businesses struggling to meet the tough requirements of 74  these large chains, and thus, finds them cut out of a large segment of local markets. 39 RE-MAPPING OPPORTUNITY MAKING BEST USE OF THE ECONOMIC POTENTIAL OF RUSSIA’S REGION Box 8 Regulatory Environment Reforms in Ulyanovsk The reform of business regulations in Ulyanovsk Oblast and is now working to introduce a risk-based has been an important factor contributing to the change approach to business inspections. Overall, this effort in the region’s fortunes over the last decade. The reforms has substantially simplified the process of passing a are widely recognized as best practices in Russia. Three business inspection, and has reduced the potential core aspects of the reforms can be highlighted: scope for corruption in inspections. 1. Ulyanovsk region was the first region to mandate 3. The performance of regional regulatory inspections evaluations of the regulatory impact of any legislative is closely monitored. Government representatives act before it is passed by the regional parliament. periodically conduct "secret shopper" tests. The 2. Over the last several years, a designated department Entrepreneurship Development Corporation of within the regional government has undertaken a Ulyanovsk region regularly surveys businesses about comprehensive review of all regulatory inspections their perceptions of different regulatory inspections that businesses face. The review has produced and the quality of their services, and publishes a finite list of requirements that each regulatory rankings of regulatory organizations. Business inspection is allowed to impose upon a firm. It has interviews have confirmed that this has led to an introduced ‘one-stop shop’ services for businesses improvement in the quality of services. Source: Interviews of public officials of Ulyanovsk Oblast. yet to meet its full economic potential per the EPI results. Productivity growth in Ulyanovsk Oblast is constrained by a reliance on large Soviet-era enterprises (aircraft and car manufacturing) and by particularly challenging demographic trends leading to a loss of 12 percent of the labor force from 2002‑2013 (see Annex 1.1). –– Krasnodar Krai, where institutional reforms lagged until very recently, remains a fast-growing region thanks to a large volume of support from the national government and some additional local endowments, such as the potential for development of the tourism industry (see Annex 1.2). –– Bashkortostan remains among the nation’s productivity leaders largely due to its oil extraction and petrochemical refinement industries, all of which were inherited from the Soviet period and adapted more easily to market conditions than many other manufacturing sectors (e. g., aircraft manufacturing in Ulyanovsk). According to the EPI model, the region is exceeding its medium potential, but this result can only be credited to a small extent to local institutions and government policies (see Annex 1.3). Federal policy limits the role of regions in supporting economic development The influence of regional governments over economic outcomes is limited due to constraints on their powers and resources. As a result, it is difficult for regions to engage in large-scale and long-term projects promoting economic development. 40 CHAPTER 3 WHAT IS THE ROLE OF REGIONAL INSTITUTIONS, GOVERNANCE, AND POLICY IN A REGION ACHIEVING ITS ECONOMIC POTENTIAL? Federal government policies also limit what regions can do to improve their attractiveness to investors. The effectiveness of reforms of the regional regulatory environment is substantially constrained by the role of federal regulatory inspections. Regional branches of federal agencies that report directly to their Moscow headquarters conduct some of the regional regulatory inspections yet bypass regional authorities. This list includes the Agricultural Control Agency, Consumer Safety Control, Labor Protection, and Disaster Risk Inspection, among others. No matter how much regions try to limit the regulatory impact on businesses, they can’t fully regulate the practices and policies of these inspections. While in some instances coordination between the regional government and federal inspections happens, it is on a goodwill basis rather than on direct subordination. The inspections appear to have a tendency to sustain and increase the regional regulatory burden despite the best efforts of other government institutions. For instance, although the number of planned inspections was restricted at the national level in 2015, the total number of inspections undertaken increased in 65 out of 81 regions.75 This was due to an increase in the number of unscheduled inspections, which regulatory inspection agencies can conduct without a court order in many cases. Several regional governments have proposed that they take control over all regulatory inspections (but not the rulemaking), but they have been unsuccessful. Regulatory measures introduced at the federal level often fail to account for circumstances in individual regions, and can have substantial adverse impact. Whether such regulations are a result of lack of consultations, poor capacity of federal agencies, or corruption, they limit the ability of regions to improve the business climate. Examples are plentiful: –– In 2014, new sanitary regulations for butchering were passed without validating whether there were sufficient numbers of facilities in the regions to meet the new requirements. In many regions, including Bashkortostan, the added cost of butchering put thousands of smallholder farmers at risk of bankruptcy.76 –– A regulation passed in 2016 by the federal customs agency introduced new ways of calculating the guarantee payments for imported goods; however, the rule led to substantial overestimation of the cost of imported goods and thus substantially increased costs for importers of final products or inputs.77 –– In 2016, a federal law introduced a new requirement for cashier equipment. The new rule required the addition of a device that digitally records all of the transactions. However, it was only after the law came into effect that it became obvious that there were only two companies that could produce equipment to fit the specifications. As the deadline approached, the cost of the equipment skyrocketed and put many small traders on the verge of closing shop.78 75 Kuznetsova, T. (2016). Outside of the plan. Rossiyskaya Gazeta — Ekonomika Sibiri #7177. [In Russian].   Retrieved from https://goo.gl/JY4zAG. 76 Borodyansky, G. (2014). Butchering for Farmers and Pensioners, Novaya Gazeta #26. [In Russian].   Retrieved from https://goo.gl/cXhTi5. 77 Kalyuznaya, N. (2016). Importers are pushed into the shadows; New Companion. [In Russian].   Retrieved from https://goo.gl/ifGd3x. 78 Demidova, A. (2017). Cashiers receipts: who will win and lose from the introduction of new cashier equipment. RBC.   [In Russian] Retreived from https://goo.gl/sXymzn. 41 RE-MAPPING OPPORTUNITY MAKING BEST USE OF THE ECONOMIC POTENTIAL OF RUSSIA’S REGION Regional budgets are squeezed. In 2015, 69 regions reported budget deficits; for eight of them, the deficit exceeded 10 percent, and two regions had deficits of over 20 percent.79 This is a result of the limited ability of regions to raise revenues as well as their high expenditure burden. –– Regions are heavily reliant on inter-budgetary transfers and shared federal taxes. Direct transfers constitute on average 17 percent of the revenue for regional budgets.80 Fifty-three percent of regional revenues come from their share of personal income tax and corporate profit tax, both of which have declined in the years of recession and stagnation. Because of the share structure of taxes, the regions’ ability to increase tax revenues is limited. –– Regions have a statutory requirement to fulfill social obligations of the federal government, but the federal transfers do not fully cover them. For example, regions are responsible for implementing the 2012 Presidential Orders that set targets for improving social standards, specifically pension and salaries of public sector employees (e.  g., teachers and doctors). Federal transfers do not cover the cost of meeting these targets, and available funding is redistributed across regions on an equalization formula basis. The volume of transfers can vary year-to-year, yet the targets are fixed, which means that regions are expected to contribute varying (and always increasing) amounts of their revenue. Most regions have significant short-term debt and can’t raise funding for long-term investments. On average, 10 percent of regional revenue goes towards servicing existing debt. By 2018, the debt burden will exceed 60 percent of budget revenue in 60 regions, while in seven regions it already exceeds 100 percent of annual revenue. By international standards these debt levels are rather low; in developed countries, they are often several times higher. But compared to countries in the West, the debt of Russian regions has very short maturity. This means that even with a low debt burden a large part of the budget is committed to servicing interest and repaying loans. The tools for debt financing are also limited, including federal government loans, commercial bank loans, and issuance of bonds. Today, regions almost exclusively borrow to plug holes in the budget or refinance old debt, rather than to fund development initiatives. Most regions lack capacity to organize a bond issuance, while many others are excluded from the market due to low ratings or prohibitively high interest requests by potential investors.81 Short-term debt and an inability to raise revenue means that regions rely on federal support when attempting large-scale initiatives. As revealed by the case studies, most of the Industrial Parks, large-scale transport infrastructure upgrades, business incubators and technology transfer centers, and other forms of long-term investments in the regions are supported by federal government programs. Examples include the Port Free Trade Zone, NanoTechnology center, and Radiation Medical Institute in Ulyanovsk Oblast; Novorossiysk Port development in Krasnodar Krai; and monotowns development initiatives in Bashkortostan. It is rather telling that the Ulyanovsk government has decided that the only way it can upgrade one of the major roads crossing the region is by transferring it to the federal government. 79  World Bank (2016) Russia Economic Report 37. Ministry of Finance of the Russian Federation (2015). Aggregate table on implementation of budgets of subject of Russian 80  Federation. Retrieved from https://goo.gl/nFntpu. Seninsky, S. (2016). Regions at the debt line. Radio Liberty/Radio Free Europe [In Russian]. 81  Retrieved from https://goo.gl/snk4tu. 42 CHAPTER 3 WHAT IS THE ROLE OF REGIONAL INSTITUTIONS, GOVERNANCE, AND POLICY IN A REGION ACHIEVING ITS ECONOMIC POTENTIAL? In some instances, the heavily regulated nature of federal programs hinders the effectiveness of their implementation. Federal programs often come with complicated bureaucratic protocols. The best illustration of this is the Port Free Trade Zone in Ulyanovsk Oblast. On paper the zone offers fantastic opportunities for businesses — with comprehensive tax discounts and relief from customs duties. Yet three years after its initiation and the construction of basic infrastructure, the zone is still mostly empty. However, next door the "Zavolzhe" industrial park, which is managed by the region, has attracted six large foreign investors over the last five years. Among the differences between the two zones: federal legislation restricts the types of activities that can take place in the federal zone, the manner in which the zone management company operates, and the process of granting investors the right to operate in the zone.82 Regions can still do more Regions have some leverage to generate extra revenue. The Russian tax code offers regional governments several opportunities to increase revenues, but not all regions utilize them. For example, valuation-based property taxation is an underutilized tool for revenue generation. Regions also have an option to set higher fees for migrant patents and increase transport tax rates for cars with powerful engines. Bashkortostan, for example, has made use of all of these revenue generation methods (as have regions like Moscow, Tatarstan, and St. Petersburg). Ulyanovsk alongside 17 other regions does not use any of these revenue-raising tools.83 To increase their leverage over economic development, regions should aim to build coalitions with the private sector. Public-private coalitions are widely recognized as an important tool for economic development.84 A World Bank study of competitive cities has revealed that most successful cities have some formal or informal mechanisms for public-private coordination.85 Similarly, many cities and regions that have rebounded after periods of decline have done so largely due to a high level of coordination between local actors joined by shared priorities.86 Such coalitions, particularly when they are broad-based, provide the means to attract private resources to priority projects, improve policy design and implementation, gain broad support for government initiatives, and increase a region’s leverage in negotiations with the federal government. In cities like Gaziantep, Turkey, such an approach was key to implementing a comprehensive private sector development strategy and attracting major federal government investments.87 The practice of building public-private coalitions exists in Russia: a recent study of three successful regions (Kaluga Oblast, Belgorod Oblast, and Tyumen Oblast) found that all three featured an elite coalition of representatives of all branches of governments and business leaders which defines and shares the core development objectives of the region.88 While this model of coalition- building is suboptimal due to its limited inclusiveness, it can provide impetus for more regions to build systematic partnerships with the private sector. 82  Detailed description of the contrast between the two zones is provided in Sivaev, D. (2017, forthcoming). What can regions do to promote economic development: the case of Ulyanovsk Oblast? (Background paper to this report). 83  PWC (2016). Tax Policy Ranking of Regions of Russian Federation. 84 Herzberg, B., Wright, A. (2006). The Public Private Dialog Handbook: a toolkit for business environment reforms,   World Bank, DFID, IFC, OECD. 85  World Bank (2015). Competitive Cities for Jobs and Growth; What?, Who? and How? 86  KPMG (2013). Magnet Cities. 87  World Bank (2015). Competitive Cities for Jobs and Growth; What?, Who? and How? 88  Grenadetsky, A., Skorobogaty, P. (2015). Consolidation of elites — foundation of successful development; Expert. [In Russian] Retrieved from https://goo.gl/bR1kv9). 43 RE-MAPPING OPPORTUNITY MAKING BEST USE OF THE ECONOMIC POTENTIAL OF RUSSIA’S REGION Suggested policy priorities Policy priorities for the federal government 1. The federal government can enhance the structural conditions associated with high levels of productivity for regional economies. –– The federal government can do more to manage urbanization. It can support re-balancing of the urban system by supporting growth of second-tier cities and encouraging urban planning and municipal service provision practices that are consistent with development of economically-dense environments that promote economic growth. • Most specifically, the federal government can identify and revisit regulations that distort incentives of local governments, such as the housing construction targets that lead to urban expansion into undeveloped lands even in places with declining population. • The federal government can consider creating incentives for cross-municipal coordination and planning on infrastructure, transport, education, and healthcare services. Federal funding for projects that are planned and financed by several municipalities across an agglomeration can be one mechanism to consider. Similarly, the UK City Deals model, which offers cities more power and resources if they demonstrate an ability to collaborate and govern effectively, may be applicable in Russia.89 –– Transport infrastructure investment should aim to enhance inter-regional connectivity and better access to major ports (at least in the European part of Russia), and prioritize regions where connectivity improvements will have the greatest impact on economic potential. Steps towards achieving this objective can be made by further development of public private partnership (PPP) models for infrastructure finance, for example the "infrastructure mortgage" scheme that will provide government guarantees to private investors. –– The federal government can also consider plans for connecting large, second- tier cities with high-speed rail links to develop network conurbations. This policy may help in re-balancing the urban structure and may strengthen the productivity benefits of agglomeration. This, however, will require a series of preparatory steps: • Conduct thorough analyses of the potential economic impact of proposed high-speed rail links between second-tier urban areas in order to evaluate productivity gains against potential re-allocation effects of such transport investments. • Initiate consultations with regions to rally the support of regional elites. • Launch policy dialogues on mechanisms for inter-regional management of conurbations with a focus on mechanisms for budget pooling, management of regional funds, urban planning, investment promotion, and private sector development. HM Government (2011). Unlocking Growth in Cities. Retrieved from https://goo.gl/U8Rrfh. 89  44 CHAPTER 3 WHAT IS THE ROLE OF REGIONAL INSTITUTIONS, GOVERNANCE, AND POLICY IN A REGION ACHIEVING ITS ECONOMIC POTENTIAL? 2. Federal policies can bolster regional governments so that they can do more to promote economic development. –– To gain greater ability to implement economic policy, regional governments should be more financially stable. This will require re-balancing of the regions’ fiscal responsibilities and revenue streams. To achieve this, the federal government can shift more functional responsibilities to the federal level, for example, by paying teachers’ salaries from the federal budget rather than the regional budget, or by freeing regions from the responsibility of meeting public servant salary increase targets.90 The federal government can also build up the revenue of the regions by increasing the regional portion of shared national taxes or by increasing non-earmarked grants. The federal government can also explore combining the delegation of taxation powers with incentives for good financial management by regional governments. For example, the right to raise tax rates may be granted only to a region with a good bookkeeping record. –– To increase the effectiveness of regional business environment reforms, the federal government can engage regional governments in designing business regulations and in the management of regional branches of regulatory inspections. • Regions will benefit from having a mechanism for challenging newly- introduced regulations (e. g., by establishing a clear formula with regard to the number of regions and businesses that need to file a complaint in order for a regulation to be reconsidered or overturned). • Regions can have a greater say in the management of regional branches of inspections. The regional governments should be given authority to assess the impact of the federal inspections on the investment climate of the region, and report on the findings to the Government of the Russian Federation. A more advanced measure would give regions the right to approve checklists of requirements or the right to set the maximum number of times businesses can be inspected. • An alternative approach, proposed by some regions, could be that inspections management be fully delegated to the regional level. It could start with pilot projects in regions that show results in implementing regulatory reforms. The danger is that this approach might lead to the abuse of power that regional governments would then have over the private sector. On the other hand, it would give regions a lot of flexibility for ensuring coordination between inspections, for reduction of duplication, and for increasing efficiency. • Instituting a risk-based approach to inspections could be a more complicated (in terms of implementation) alternative to the proposed reforms of business regulations practices.91 World Bank (2017). Russia Economic Report 37. 90  Martinov, V. (2017). Use of Risk-based Approach in state regulation and inspections as a requirement for reducing the 91  regulatory burden on business. [In Russian] Retrieved from http://xn----7sbbaj7auwnffhk.xn--p1ai/article/22419. 45 RE-MAPPING OPPORTUNITY MAKING BEST USE OF THE ECONOMIC POTENTIAL OF RUSSIA’S REGION 3. Spatially-targeted federal programs are effective as tools for integration of peripheral territories, and may be more effective when focusing on equalization of social rather than economic outcomes across regions. Spatially-targeted federal programs for development of the Far East, North Caucasus, and Arctic regions are important as tools for overcoming geographic and cultural divisions between these territories and the rest of the country, and their purpose spans far beyond economic development. Both global experience and the track record of these programs suggest that similar interventions are most effective at achieving spatial equalization of social outcomes through improvements in basic infrastructure and access to health and education services. On the other hand, attempts to help such regions catch up in terms of their productivity, e. g., by offering incentives to investors, are often less effective. Policy priorities for the regional governments –– To boost private sector performance, regions need to attract investors and support entrepreneurs. To achieve this, they can incorporate best practices in investment promotion, business environment reforms, and SME support policies from other Russian regions. Initiatives may include developing investment promotion strategies based on a thorough analysis of a region’s competitive advantages and the prospects for its targeted industries, or systematically reducing the regulatory burden on businesses. Regions, however, should use tax discounts and incentives for investors with caution, first conducting thorough cost-benefit assessments. –– To boost their economic potential, regions can focus on developing, retaining and attracting human capital. Part of this effort should be about increasing the quality of pre-school, secondary school, and technical professional education while ensuring that curriculums are designed with the engagement of the private sector and that training courses address demands of key regional industries. The other focus should be on improving the overall quality of life. To achieve this, regions can work more closely with the municipal governments of larger cities to support them in improving overall quality of urban infrastructure and services and improving the quality of housing. –– Regional leaders can also improve governance practices by establishing development institutions that follow the best practices of Kaluga, Belgorod,92 and Ulyanovsk oblasts. However, regions need to shift greater attention to improving the effectiveness of government agencies themselves by introducing innovative governance practices such as performance-based budgeting and a project management approach. –– To achieve better economic outcomes and increase the level of public sector investment in the regional economy in the short-term, it is important for regional governments to utilize federal government programs which focus on infrastructure and service challenges. Regional authorities can play an active role in helping businesses access benefits provided by federal programs through direct facilitation (in the case of large enterprises eligible for support through sectoral programs, g., programs for development of manufacturing)93 or by establishing "one-stop e.  92  Skorobogaty, P., (2016). Hunters for Investment; Expert Magazine, 24 June 2016. [In Russian] 93  Government of the Russian Federation (2014). State Program for Development of Manufacturing and Enhancing Its Competitiveness. 46 CHAPTER 3 WHAT IS THE ROLE OF REGIONAL INSTITUTIONS, GOVERNANCE, AND POLICY IN A REGION ACHIEVING ITS ECONOMIC POTENTIAL? shops" where small firms can get advice on accessing forms of federal and regional support. For example, the Corporation for Development of Entrepreneurship of Ulyanovsk region aggregates various forms of subsidized, small business loans from federal and regional programs into easy-to-navigate products.94 Regions can also make better use of the federal export promotion programs offered by the Federal corporation for SME and entrepreneurship development.95 –– To boost their capacity and political leverage over the long-term, regions need to focus on building broad-based, public-private coalitions. This will require more engaged and transparent involvement of business leaders, associations, and community groups in identifying a region’s development priorities. Such efforts will enhance a region’s implementation capacity by attracting private sector resources and will improve a region’s negotiating position with national authorities. Examples can be drawn from the experiences of Gaziantep in Turkey, the Santander region in Colombia, and many others.96 http://www.fond73.ru/ 94  http://corpmsp.ru/ 95  World Bank (2015). Competitive Cities for Jobs and Growth; What?, Who? and How? 96  47 RE-MAPPING OPPORTUNITY MAKING BEST USE OF THE ECONOMIC POTENTIAL OF RUSSIA’S REGION ANNEX 48 ANNEX ANNEX  1 Summaries of the Case Studies of the Regions ULYANOVSK OBLAST — working hard to catch-up97 Ulyanovsk Oblast is a small region in the Volga Federal Okrug. Its population is 1.7 million people; it is not rich with mineral resources; and its economy is small compared to the economies of neighboring Tatarstan and Samara Oblast. However, Ulyanovsk Oblast is a region with high economic potential due to its high level of urbanization, proximity to the large markets of its neighbors, and presence of advanced industries. Yet for a long time the region has fallen short of its potential due to region- specific, structural challenges and due to policy choices taken by previous regional governments. Since the regional government changeover, a decade ago, the region has aggressively implemented pro- business reforms and achieved substantial results; however, substantial structural constraints still hold it back from realizing its full potential (Figure 21). The experience of Ulyanovsk Oblast over the last 20 years confirms that improvements in a region’s institutional environment and governance can have an impact on economic outcomes, while conversely poor governance and policy choices can hold a region’s economic development back. Throughout the 1990s, the region was governed by a very conservative elite coalition that had continued from the Soviet period. The regional government used the profits of major industrial figure 21 E P I E S T I M AT E S F O R U LYA N O V S K O B L A S T Ulyanovsk Oblast GRP per capita growth rank: average EPI rank low medium potential performance rank: exceed Sivaev, D. (2017, forthcoming). What can regions do to promote economic development: the case of Ulyanovsk Oblast?   97 (Background paper to this report). 49 RE-MAPPING OPPORTUNITY MAKING BEST USE OF THE ECONOMIC POTENTIAL OF RUSSIA’S REGION enterprises to subsidize food prices, imposed price controls, and controlled the flow of goods across regional borders to avoid arbitrage trade. This approach prevented a complete collapse of the economy in the 1990s, but the region paid for it later. In 2000, the incumbent governor lost the election, leading to the replacement of government and business elites that had controlled the region since the Soviet era; however, this also brought the collapse of a system of manual control that had kept the key regional enterprises afloat. As protectionist and isolationist measures were dropped, external competition revealed the lack of competitiveness of key industries in the region leading to a series of bankruptcies and hostile takeovers. Consequently, during the years of rapid national economic recovery (1998‑2004), the region fell behind the national growth trend. The situation visibly changed after another change of government in 2005. The new leadership declared a turn towards private investors as the main drivers of economic development and focused on simplifying regulations. The region became one of the leaders in FDI attraction; international giants like Mars, DMG Mori, and Bridgestone built new factories in the region. Largely because of this, the region has grown slightly faster than the national economy since 2006 (Figure 22). figure 22 T W O H I S T O R I C A L P H A S E S I N T H E D E V E L O P M E N T O F T H E U LYA N O V S K R E G I O N ’ S E C O N O M Y GRP growth 1998-2005 (1998 prices, 1998=1000) GRP growth 2006-2014 г (2006 prices, 2006=100 ) 400 180 350 160 300 250 140 200 150 120 100 100 50 0 80 1998 1999 2000 2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 2014 Russia Volga regions Ulyanovsk Oblast Source: RosStat Russia’s other regions can learn from Ulyanovsk Oblast. Over the last 10 years, it offers examples of best practice in investment promotion; in introducing goal-oriented private sector principles into governance; in streamlining and simplifying the regulatory environment (Ulyanovsk, the region’s capital city, was ranked #1 among 30 Russian cities in ease of doing business in 2012); and in leveraging support programs of the federal government. However, further development of the region is heavily constrained by specific structural conditions. Rapid population decline will likely limit its capacity for growth. Between 2002 and 2013, Ulyanovsk Oblast lost 8 percent of its population including 12 percent of its working age population.98 Even though the region has lost almost 20,000 jobs since 2012, the unemployment rate keeps declining and is now below 5 percent. Thus, scarcity of labor resources jeopardizes further FDI-driven growth. The other challenge is its continued reliance on Soviet-era enterprises: UMZ, a producer of air defense systems, UAZ, the maker of legendary Soviet-era 4x4 vehicles, and Aviastar, the aircraft maker. With more than 20,000 employees between them, these enterprises are still the backbone of the economy. However, all of them today operate in a much more competitive environment than when they were established and to varying degrees face challenges and volatility RosStat (2014) Regions of Russia. Key characteristics of the subjects of the Russian Federation. 98  50 ANNEX (for instance, dependence on government contracts). Due to their large scale, this affects the overall performance of the regional economy. The regional government continues to be constrained by the scope of powers and resources available to it. With little authority or budget, the authorities can’t do much beyond what has already been done. Major infrastructure investments are only possible with federal support, and comprehensive reforms (like the reform of the regulatory system) are limited by federal legislation. The regional government can be described as rather centralized, while interviews show that many initiatives and programs are driven by the personal engagement of the Governor (e.  g., he personally supervises large private investment initiatives as well as the quality of services they receive from government agencies). Private sector representatives have indicated that while regional authorities are very responsive to complaints from entrepreneurs, business associations and civil society groups would like to have more influence on the policy priorities of the regional government. Establishing a broad, public-private coalition to identify development priorities for the region and engaging non-governmental actors in policy implementation can be the next step towards strengthening regional institutions and the regional economy. KRASNODAR KRAI: learning how to leverage its assets99 Krasnodar Krai is located on the Black Sea coast in southern Russia. It is one of the most densely- populated regions in Russia and is well endowed with a favorable climate, fertile soils, ports, oil reserves, and recreational assets both on the coast and in the mountains. Additionally, its population is growing unlike that in other regions of Russia. However, the results of EPI suggest low potential of the region. This results reveals that the regions has substantial structural weaknesses. On the other hand the EPI also reveals that the observed level of productivity in the region exceeds the estimate of potential, which partially points at underestimation of the factors that shape Krasnodar Krai potential, because some of them are unique for the European part of Russia. A review of current economic development in the region suggests that the relative over-performance of the regional economy is likely due to the direct Analysis of recent development trends of the region, suggest that it has benefited from the support of the federal programs (including the Olympics in Sochi) and potentially indirectly from geopolitical events. However, the example of Krasnodar Krai shows that regions can reach high levels of productivity through using. EPI estimates suggest that Krasnodar Krai has low economic potential. The structural characteristics of the region are not in line with those most closely associated with a high level of economic development, while some of the key determinants of a higher level of productivity are lacking. Most of the population of the region lives in rural areas or small towns (54 percent in 2014, while conversely, the national level of urbanization exceeded 70 percent);100 its access to the markets of densely-populated regions of western Russia is limited due to its peripheral location; the share of the high tech sector in the economy is low; and EPI modeling suggests that the suitability of the region’s natural conditions for agriculture reduces the estimate of its economic potential. While the location of the region’s ports makes a positive contribution to the potential, it doesn’t outweigh other factors, partially because the cargo throughput of Krasnodar ports is relatively small. The EPI results also show that Krasnodar Krai’s economy has achieved a level of productivity that exceeds its predicted potential (Figure 23). Dalgleish, E. (2017, forthcoming). What can regions do to promote economic development: the case of Krasnodar Krai. 99  (Background paper to this report). 100  RosStat (2014) Regions of Russia. Key characteristics of the subjects of the Russian Federation. 51 RE-MAPPING OPPORTUNITY MAKING BEST USE OF THE ECONOMIC POTENTIAL OF RUSSIA’S REGION figure 23 E P I E S T IM AT E S F O R K R A S N O D A R K R A I Krasnodar Kray GRP per capita growth rank: average EPI rank low medium potential performance rank: exceed There are several possible reasons why the region is over-performing per our results. First of all, our model doesn’t account for the region’s recreational resources, and thus its potential in the tourism sector; tourism accounts for 14.2 percent of regional GDP compared to 1.4 percent in Russia overall. In part, the over-performance reflects an underestimation of regional potential. The second reason is the fact that the model can’t account for the fact that agricultural sector of Krasnodar Krai is the most productive in Russia (the average harvest of wheat from 1 ha of land in Krasnodar Krai is at 5.85 tons, while the average for Russia as a whole is 2.68 tons).101 Overall the EPI model penalizes regions for agriculture suitability, however Krasnodar’s highly productive agriculture may make it an exception from this rule, which will suggest further underestimating of potential. The other major reason for over-performance is the support that the region has enjoyed from the national government. Over the last decade, the region received considerable federal investment, most notably through the preparation for the 2014 Sochi Olympics, but also through the development of the resorts of North Caucasus. These conditions enabled the region to keep up with national economic growth trends throughout the 2000s, and to even be a leader in growth among the large and most densely-populated regions of western Russia since 2011 (Figure 24). Further, in recent years, the regional economy could have benefited from geopolitical developments, as the agricultural sector benefited from sanctions on imports of foodstuffs imposed by the Russian government and the region received new inflows of public capital investment for the construction of the bridge across the Kerch to Crimea. The review of institutional and policy developments in the region suggests that it is hard to relate the performance of the Krasnodar Krai economy to policies and institutional reforms implemented by the regional leadership. The focus of the region’s economic policy over the last decade was the Expertise and Analysis Center for Agribusiness “AB-Center” www.ab-centre.ru. 101  52 ANNEX provision of targeted support to large investors, yet it was not organized as systematically and strategically as was done by the leaders of Kaluga, Bryansk, and Ulyanovsk oblasts. Untill 2016 there was no evidence of significant institutional reforms implemented in the region in the areas of business environment, skills, or governance until the last two years. No large regional economic development initiatives could be identified. Finally, a change in external conditions in recent years might be pushing Krasnodar’s government to be more proactive and innovative. Increased competition for FDI among Russian regions has altered the favorable environment that helped the regional economy grow in the past, and thus, the regional government needs to do more to make the most of the region’s unique endowments. The newly-elected Governor and his administration have started several initiatives to strengthen governance institutions, level the playing field for businesses in the region, and focus on improving the business environment for entrepreneurs and SMEs. It is, however, too early to ascertain the effect of these actions. figure 24 TWO PHASES OF DEVELOPMENT OF THE ECONOMY OF KRASNODAR REGION % 800 200 700 180 600 160 500 140 400 120 300 200 100 100 80 1998 1999 2000 2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 2014 Moscow Moscow Oblast St. Peterburg Tatarstan Republic Krasnodarskiy Kray Sverdlovsk Oblast Bashkartostan Republic Rostov Oblast Source: RosStat Krasnodar’s case, however, illustrates that region-specific endowments, such as the tourism sector or highly productive agriculture, may be leveraged to achieve higher levels of productivity. Tourism is not an industry of great significance on a macro scale in Russia, but it is important for the region and has made an important contribution to economic development, and the case for agriculture is similar. Dynamic development of theese industries has allowed the region to reach high levels of productivity even though it might be lacking some of the characteristics that are typically associated with most economically advanced regions. 53 RE-MAPPING OPPORTUNITY MAKING BEST USE OF THE ECONOMIC POTENTIAL OF RUSSIA’S REGION BASHKORTOSTAN REPUBLIC — seeking growth beyond oil102 After 20 years of reliance on its oil, gas, and petrochemical industries, Bashkortostan is making steps towards building a more diverse and innovative economy. Unlike many other regions, Bashkortostan got rather lucky with its Soviet inheritance, specifically a well-developed and fully integrated oil and gas extraction, refining, and petrochemical infrastructure. These industries were among those that found it easy to adjust to market conditions, which helped the region consistently export high value-added products and enjoy relative prosperity. Coincidentally, however, the region developed an overreliance on this sector, and the oil and petrochemical industrial complex still contributes 59 percent of the industrial output of the region.103 This dependence was exacerbated by the strategy of the previous regional government to keep key industrial assets under the control of local actors (often affiliated with the government), thus shielding them from takeover attempts as well as limiting competition, investment, and innovation in the industry. The strategy changed with the arrival of a new administration in 2010. The pro-business approach of the new government seems to have delivered a spike in investment, but it is not clear this is a sustainable trend that will be reflected in economic outcomes and that will lead to the development of a more balanced economy. Bashkortostan’s recent history highlights the restrictive effect of natural resource endowments on the development of regional institutions. As long as the oil and petrochemical industries delivered reasonable growth and prosperity, there was little impetus for institutional reforms in the region. The shift in the regional government’s approach to investment attraction and the overall business climate occurred after the change of regional leadership in 2010 when the oil and gas industry was hit by the downturn on global markets. Over the last seven years, the region has implemented several innovative initiatives, including: –– The region has a very structured and transparent system for investor support. It includes a public-private committee that discusses proposed private investments and recommends whether they should be considered strategically important, and thus receive tax discounts and other incentives. –– "Product of Bashkortostan" — is a self-sustaining trade house originally founded by the state government that helps local, small-scale agricultural producers and food processors access major retail chains (generally a major issue for small agro-producers in Russia). For a relatively small fee, it offers participation in a regional branding scheme, quality control, and capacity-building services. The scheme’s growing membership and financial viability are testament to its success. –– "The start-up bus" is a mobile start-up and SME support service office that visits small towns and rural areas of the region, where establishing a permanent support office is unfeasible. However, institutional challenges remain a critical constraint for the diversification of the economy, which remains dominated by the oil, gas, and petrochemicals industries. Entrepreneurship and innovation remain weak, and while there have been several new manufacturing investments, the results are much more modest than in Ulyanovsk Oblast. Peripheral parts of the region remain underdeveloped, and several monotowns persist as areas of substantial financial distress. The region’s government is working to address some of these challenges mostly through active use of federal support programs. For instance, it has recently secured the status of "Territories of Accelerated Socio- Economic Development — TASED" for two monotowns. It is also working to improve the business environment (the region recently reached 20th place in the ASI ranking of investment attractiveness). These steps are important, and their results should be visible in the foreseeable future. Steshenko, A. (2017, forthcoming). What can regions do to promote economic development? The case of Bashkortostan Republic. (Background 102  paper to this report). 103  RosStat (2014). Regions of Russia. Key characteristics of the subjects of the Russian Federation. 54 ANNEX figure 25 E P I E S T I M AT E S F O R B A S H K O R TA S TA N Bashkartostan Republic GRP per capita growth rank: average EPI rank low medium potential performance rank: exceed 55 RE-MAPPING OPPORTUNITY MAKING BEST USE OF THE ECONOMIC POTENTIAL OF RUSSIA’S REGION ANNEX  2 Quantitative analysis methodology. Full table of variables used in the EPI model table 2 VA R I A B L E S U S E D F O R R U S S I A E P I A N A LY S I S Variables used to build the basic and extended EPI models (data available for 2010-2014 104) Variables (sources) Rationale Real GRP per capita is the dependent variable and is an indicator of a region’s level of productivity. The model uses GRP in constant prices, equalized Gross Regional Product across regions. It is calculated using the index of the physical volume of GRP, Productivity per capita (RosStat) which controls for regional differences in inflation. The price of the fixed basket of goods is used to correct for the price difference between regions in the base year.105 Population Density Population density An increase in the share of population living in urban areas and in economic (Economic Density) (RosStat) density confers benefits on firms and workers. This increase in urbanization and density gives rise to agglomeration economies and raises productivity and real wages. Additionally, proximity allows for knowledge spillovers, dense Share of population living in labor markets can facilitate matching between firms and works, and firms Level of a city with a population greater benefit from sharing indivisible costs.106 Urbanization than 250,000 inhabitants Empirical evidence suggests that the forces of urbanization and (RosStat) agglomeration in Russia are not utilized in full.107 Working-age population with A substantial body of literature confirms that the quality of human capital university level degrees is closely associated with increases in firm productivity. Some mechanisms (RosStat) that foster this relationship include knowledge spillovers or the growth of consumption amenities in the places where the highly-educated concentrate.108 Life expectancy (RosStat) Traditionally, this indicator is measured through the workforce’s Human educational attainment outcomes; however, in Russia the share of the Capital working age population with a university degree fails to capture differences in the quality of education, 109 and as a result is not a good measure of Population outside human capital. Life expectancy is used as an alternative proxy, as it is of the working force widely recognized as a measure of the quality of human capital 110 and (RosStat) is associated with better educational attainment111 and broader socio- economic outcomes of the regions. 112 Market access index, calcu- lated using travel time by road Firms can trade and communicate with distant markets, which means that (Google Maps) and population there is a spatial extent component to knowledge spillovers that occurs when by region (RosStat) markets (i. e., cities) are located in proximity. Following Harris’ 1954 model we Market compute an "external" market potential whose impact is separate from the Access effect of the location’s size.113 Port access index, calculated using travel time by road Previous studies have shown that market access contributes to productivity (Google Maps) and throughput at a regional level114 and at a business level.115 of port. (Russian Ports) Higher density of local roads increases the size of the labor markets, thus increasing chances for better job matching leading to higher productivity. Additionally, at a regional scale, road networks create opportunities for the Local Transport Density of public hard creation of local supply chains and the development of a productive rural- Infrastructure surface roads (km/km2) urban system with a diverse set of sectoral specializations.116 Density of road networks can also be seen as a proxy for the quality of infrastructure in the region, which is closely associated with economic development. 56 ANNEX Share of employment in natural resource extraction (RosStat) Natural resource extraction is a major force that drives regional economic Extractive development in Russia.117 The EPI model developed in this analysis uses Industries GRP per capita net of several methods to control for the effect of regions whose economies rely contribution of extractive on the extractive industries. industries (RosStat) Inefficient allocation of labor and capital in Russia slows down structural transformation of the economy and locks resources in unproductive forms of Effect of Central Share of population economic activity. Planning living in monotowns Monotowns are widely recognized as a major social issue in Russia,118 but their presence also points to the significance of the Soviet industrial legacy in a given region. Land suitability Natural endowments (like proximity to coastlines and temperatures for agriculture favorable for agriculture) may confer advantages on cities as they develop. Geography and Climate Given theories on path dependence and the variegated nature of Russia’s Mean temperature geography, it is important to measure the role of geography and climate in shaping the fortunes of Russian cities.119 in the coldest quarter 104 Datasets for most variables used cover the period from 1998 to 2016; however, complete datasets are available for the period 2010‑2014.  105 Roberts M. (2016). Identifying the Economic Potential of Indian Districts: World Bank Policy Paper 7623, Social, Urban, Rural and Resilience Global Practice  Group; Golyashev A., Grigoryev, L. (2014). Types of the Russian Regions: Sustainability and Development Shifts in 2003‑2013. Analytical Center for the Government of the Russian Federation (Analytical report). [In Russian]. 106  Duranton G. and Puga D.(2004). Micro-Foundations of Urban Agglomeration Economies, Handbook of Regional and Urban Economics. 4: 2063‑3073. 107  Zubarevich, N. (2011). Spatial aspect of modernization. In Grigoryev, L., Zubarevich, N., Khasayev, G., (Eds.). Russian Regions: Economic Crisis and Problems of Modernization (pp. 58‑85). Moscow, TEIS. [In Russian]; Novikov, A. (2013). Regional disparities in the socio-economic development of Russia. Science Studies, 1 (online magazine). Institute of Public Administration, Law and Innovative Technologies. 108 Glaeser, Scheinkman, Shleifer (1995). Economic growth in a cross-section of cities. Journal of Monetary Economics 36, 117‑143; Lucas (1998). On the  mechanics of economic development. Journal of Monetary Economics, 22, 3‑42; Acemoglu (1996). A microfoundation for social increasing returns in human capital accumulation. Quarterly Journal of Economics. 111(3), 779‑804; Moretti, E., Workers’ education, spillovers, and productivity; evidence from plant- level production functions. American Economics Review. 94, 656‑690. 109 G olunov, S. (2014). Elephant in the room. New York: Columbia University Press.  110 A gion P., Howitt P., Murtin F. (2011). The Relationship Between Health and Growth: When Lucas Meets Nelson-Phelps. Review of Economics and  Institutions, 2 (1); Acemoglu, D., Johnson S. (2007). Disease and Development: The Effect of Life Expectancy on Economic Growth. Journal of Political Economy, 115 (6). 111 UNDP (2003). Human Development Report. New York. Oxford University Press, 85. 112 Weinberg, A., Rybnikova, T. (2008). Institutional and Socio-Economic Factors of Regional Development in the Russian Federation. Working paper of the   Decision Support and Forecasting Center CEMI, Russian Academy of Sciences. Retrieved from https://goo.gl/CugjBi. 113  Harris C. (1954). The market as a factor in the localization of industry in the United States. Annals of the Association of American Geographers, 44, 315- 348; Fujita, M., Krugman, P.R., Venebles, A.J., (1999). The Spatial Economy; Cities, Regions and International Trade. MIT Press, Cambridge, MA; Anderson, J., The Gravity Model. (December 2010). Working paper 16576/National Bureau of Economic Research. 114 Ahrend. R. (2012). Understanding Russian Regions’ Economic Performance during Periods of Decline and Growth – An Extreme Bound Analysis.   115 Brown, D., Fay, M., Lall, S., Gun Wang, H., Felkner, J. (2008). Death of distance? Economic implications of infrastructure improvement in Russia. EIB Papers   10/2008, European Investment Bank, Economics Department. Retrieved from https://goo.gl/Waqic8. 116  Combes, P.P., Lafourcade, M., (2005). Transport costs: measures, determinants, and regional policy implications for France. Regional Science and Urban Economics, 41, 508-524; Démurger, S. (2000). Infrastructure Development and Economic Growth: An Explanation for Regional Disparities in China. Journal of Comparative Economics, 29: 95-117. 117 Ilyina, I. (2013). Potential of Development of Resource Rich Regions in the Russian Federation (as outlined in the strategic development documents). National  and Municipal Governance Affairs, 2, 91-112. [In Russian]. 118 World Bank (2016). Social Inclusion and Resilience: A Pilot Study of Four Russian Monotowns (Summary note). Pilot to support the World Bank’s Systematic   Country Diagnostic for the Russian Federation. 119  Maloney and Caidedo (2012). The Persistence of (Subnational) Fortune: Geography, Agglomeration, and Institutions in the New World; Davis, D. and Weinstein, D. (2002). Bones, Bombs, And Break Points: The Geography Of Economic Activity. American Economic Review 92 (5), 1269-1289. 57 RE-MAPPING OPPORTUNITY MAKING BEST USE OF THE ECONOMIC POTENTIAL OF RUSSIA’S REGION RA expert rating The quality of governance is closely associated with regional development and productivity according to international empirical evidence.120 of governance risk Studies in Russia have also found a significant role for the quality and proactivity of regional governments as drivers of growth.121 Inter-budgetary transfers variables are used to estimate the level of Quality of Governance Total inter-budgetary transfers/ independence of regional authorities, as well as the extent to which they budgetary transfers without are incentivized to raise their own revenue by supporting private sector equalizing grants (RosStat) development.122 Grants were excluded from total inter-budgetary transfers in an attempt to exclude the equalization factor. Total number of SMEs There are no surveys of business environments covering all of Russia’s (RosStat) regions. For that reason, proxy indicators are used. The number of small businesses123 is considered and variables for the level of economic crimes124 Institutional Factor were used as a proxy for the strength of regional institutions; high values Number of economic crimes indicate either the degree of extraction by institutions or the weakness of (RosStat) property rights protections that leads to criminal activity.125 EPI: Selection of regions When an EPI model is constructed for all regions in Russia, resource extraction emerges, above all other indicators, as the key driver of productivity. Constructing an EPI model that draws on all of Russia’s regions yields results that defy the basic relationships established in economic development literature (see Table 6 and Figure 25). Regions dependent on the extractive industries and those that are inaccessible to western Russia (remote regions) drive these atypical results. For example, market access displays a negative relationship to GRP per capita. Since most of the extractive regions are located in the northern and eastern part of Russia they tend to have low to non-existent market access; however, GRP per capita is magnified there due to the high value added via natural resource extraction. These effects are diametric to such an extent that they distort the conventional relationship between market access and GRP per capita.126 In fact, the economies of regions like Sakhalin, Magadan, Yakutia, and Khanty-Mansiysk Autonomous Okrug do not benefit from access to other Russian regions, as the majority of their tradable outputs (oil, gas, and diamonds) are exported to foreign markets. Russia’s resource-rich regions distort the relationship between structural characteristics and level of economic development: they are usually low density, but highly urbanized (few people live in northern rural areas), and they tend to have a highly-educated population since engineers, geologists, and managers relocate (temporarily) to these remote regions to work in resource extraction. Although the high productivity of these regions is associated with natural endowments, their idiosyncratic and unsustainable nature distorts our attempt to capture structural drivers of productivity that can be used to influence regional development across Russia. In addition to 120  OECD (2009). Measuring Government Activity, OECD Publishing, Paris. 121  Ahrend. R. (2012). Understanding Russian Regions’ Economic Performance during Periods of Decline and Growth — An Extreme Bound Analysis. 122  Analytical Center for the Government of the Russian Federation (2013). The Problem of Shifts in the Regional Structure of the Russian Economy (Report). [In Russian]. 123 Movsesova, M. (2008). Regional Investment Climate: Environment, Evaluation, Governance Mechanisms. PhD Dissertation. Voronezh, 12.   124  Economic crime is understood as crimes related to entrepreneurial and business activities. 125  Asadullina, A. (2008). Institutional environment providing for regional competitiveness. PhD Dissertation. Ufa, 24 pages. In Voloshina, E. (2014). Institutional factors influencing regional economic development. PhD Dissertation, Voronezh Institute of Economics and Social Governance, 1-156. 126  Harris C. (1954). The market as a factor in the localization of industry in the Unites States. Annals of the Association of American Geographers, 44, 315-348. 58 ANNEX table 3 C O R R E L AT I O N B E T W E E N G R P P E R C A P I TA A N D M A R K E T A C C E S S F O R A L L R U S S I A N R E G I O N S B E T W E E N 2010 AND 2014 t-statistics in parentheses: Variables (1) GRP per capita, constant 2010 *** p<0.01, ** p<0.05, * p<0.1 –0.0183*** Market Access (–3.1279) 12 .3546*** Note: Dependent variable is gross regional product per Constant (244.1038) capita. Robust t-statistics in parentheses *** p<0.01, ** p<0.05, * p<0.1. Robust SE. Standardized coefficient (beta) Observations 415 reported in third row. Market access is calculated as the ratio between the sum of the population of the major city in each R-squared 0.0154 region relative to the sum of travel time to those cities from the reference city. Source: Elaborated by the team. the extractive regions, the remoteness of populated areas in the Far Eastern and Siberian Federal okrugs displays similar structural characteristics such as low population density and low market access. These remote regions also display distorted relationships to GRP per capita since their productivity is derived from other structural factors, such as reliance on government support programs or access to foreign markets through land borders — both of which are not fully captured in this model. For example, Vladivostok is a major city with over 600,000 inhabitants in Primorsky Krai whose primary markets are outside of Russia (only 1.1 percent of GRP comes from natural resources extraction). The distance between Vladivostok and Moscow is over 4,000 miles; by contrast, Vladivostok is approximately 1,000 miles to both Tokyo and Shanghai. figure 26 C O R R E L AT I O N B E T W E E N M A R K E T A C C E S S A N D P R O D U C T I V I T Y O N A R U S S I A -W ID E S C A L E 15 Nenets АО GRP per capita, constant 2010 14 Khanty Mansy AO Yamalo Nenets AO Sakhalin Tumen Moscow 13 Sakha Yakutia Krasnoyarski St. Petersburg Magadan Komi Belgorod Sverdlovsk Moscow Oblast Irkutsk Murmansk Kaliningrad Khabarovsk Arkhangelsk Perm Lipetsk Новосибирская обл. Tula Zabaykalsky Khakasia Karelia 12 Primorsky Kurgan Rostov Vladimir Amur Altay Buryat Chuvash Jewish Tuva Altay Dagestan Kabardino Balkar Kalmykia Ivanovo Ingushetia 11 Chechen 6 7 8 9 market access Source: Research elaborated by the team. The full model is distorted by the high level of productivity displayed by resource-rich regions. The full model suggests a statistically insignificant relationship between market access (internal) and GRP per capita and a statistically significant and negative relationship between access to ports and GRP per capita (see Table 4). Both these results violate the laws of economic geography and are a result of the resource-rich regions. Figure 27 also shows that high EPI is concentrated in the central, Siberian, and Far Eastern regions. According to this estimation, Chukotka has the highest EPI score of 100 while Moscow and St. Petersburg fall slightly above the average with scores of 66 and 61, respectively. 59 RE-MAPPING OPPORTUNITY MAKING BEST USE OF THE ECONOMIC POTENTIAL OF RUSSIA’S REGION figure 27 C O N C E N T R AT I O N O F H I G H E C O N O M I C P O T E N T I A L IN R E S O U R C E - R I C H A N D R E M O T E R E G I O N S 25 23 19 28 24 27 26 21 29 6 14 22 17 2 7 18 20 11 5 8 12 16 3 9 13 10 49 50 1 62 45 15 44 4 48 37 54 53 47 61 56 46 58 34 33 55 51 31 35 43 52 59 60 57 41 40 30 71 37 32 70 38 39 42 69 36 68 73 65 Economic Potential Index, 2010-2014 high: 62.1 – 100 medium high: 55.6 – 62.1 medium 46.4 – 55.6 low medium: 38.7 – 46.4 low 16.9 – 38.7 72 CENTR AL FEDER AL OKRUG 17 Yaroslavl Oblast 32 Astrakhan Oblast 1 Belgorod Oblast 18 Moscow 33 Volgograd Oblast 2 Bryansk Oblast NORTHWESTERN FEDER AL OKRUG 34 Rostov Oblast 3 Vladimir Oblast 19 Karelia Republic 35 Adygeya Republic 4 Voronezh Oblast 20 Komi Republic NORTHWEST FEDER AL OKRUG 5 Ivanovo Oblast 21 Arkhangelsk Oblast 36 Dagestan Republic 6 Tver Oblast 22 Vologda Oblast 37 Kabardino-Balkar Republic 7 Kaluga Oblast 23 Kaliningrad Oblast 38 Severnaya Osetiya-Alaniya Republic 8 KostromaOblast 24 Leningrad Oblast 39 Ingushetia Republic 9 Kursk Oblast 25 Murmansk Oblast 40 Stavropol Krai 10 Lipetsk Oblast 26 Novgorod Oblast 41 Karachayevo-Circassian Republic 11 Moscow Oblast 27 Pskov Oblast 42 Chechen Republic 12 Oryol Oblast 28 St. Petersburg VOLGA FEDER AL OKRUG 13 Ryazan Oblast 29 Nenets Autonomous Okrug 43 Bashkortostan Republic 14 Smolensk Oblast SOUTHERN FEDER AL OKRUG 44 Marij El Republic 15 Tambov Oblast 30 Kalmykia Republic 45 Mordovia Republic 16 Tula Oblast 31 Krasnodar Krai 46 Tatarstan Republic 60 ANNEX 83 80 79 75 66 81 78 77 67 63 74 82 64 76 47 Udmurt Republic SIBERIAN FEDER AL OKRUG 78 Amur Oblast 48 Chuvash Republic 63 Buryatia Republic 79 Kamchatka Krai 49 Nizhni Novgorod Oblast 64 Tyva Republic 80 Magadan Oblast 50 Kirov Oblast 65 Altai Krai 81 Sakhalin Oblast 51 Samara Oblast 66 Krasnoyarsk Krai 82 Jewish Autonomous Oblast 52 Orenburg Oblast 67 Irkutsk Oblast 83 Chukotka Autonomous Okrug 53 Penza Oblast 68 Kemerovo Oblast 54 Perm Krai 69 Novosibirsk Oblast 55 Saratov Oblast 70 Omsk Oblast 56 Ulyanovsk Oblast 71 Tomsk Oblast UR ALS FEDER AL OKRUG 72 Altai Republic 57 Kurgan Oblast 73 Khakassia Republic 58 Sverdlovsk Oblast 74 Zabaykalskiy Krai 59 Tyumen Oblast FAR E ASTERN FEDER AL OKRUG 60 Chelyabinsk Oblast 75 Sakha (Yakutia) Republic 61 Khanty-Mansiysk Autonomous Okrug 76 Primorskiy Krai 62 Yamalo-Nenets Autonomous Okrug 77 Khabarovskiy Krai Source: Research elaborated by the authors. 61 RE-MAPPING OPPORTUNITY MAKING BEST USE OF THE ECONOMIC POTENTIAL OF RUSSIA’S REGION figure 28 C O N T R O L L I N G F O R R E S O U R C E - R I C H R E G I O N S — D O E S N ’ T R E S U LT I N S I G N I F I C A N T CHANGES IN THE EPI SCORES 25 23 19 28 24 27 26 21 29 6 14 22 17 2 7 18 20 11 5 8 12 16 3 9 13 10 49 50 1 62 45 15 44 4 48 53 54 47 61 56 46 58 34 33 55 51 31 35 43 52 59 60 57 41 40 30 71 37 32 70 38 39 42 69 36 68 73 65 Economic Potential Index, 2014 high: 67 – 100 medium high: 50 – 67 medium 32 – 50 low medium: 5 – 32 low –12 – 5 72 CENTR AL FEDER AL OKRUG 17 Yaroslavl Oblast 32 Astrakhan Oblast 1 Belgorod Oblast 18 Moscow 33 Volgograd Oblast 2 Bryansk Oblast NORTHWESTERN FEDER AL OKRUG 34 Rostov Oblast 3 Vladimir Oblast 19 Karelia Republic 35 Adygeya Republic 4 Voronezh Oblast 20 Komi Republic NORTHWEST FEDER AL OKRUG 5 Ivanovo Oblast 21 Arkhangelsk Oblast 36 Dagestan Republic 6 Tver Oblast 22 Vologda Oblast 37 Kabardino-Balkar Republic 7 Kaluga Oblast 23 Kaliningrad Oblast 38 Severnaya Osetiya-Alaniya Republic 8 KostromaOblast 24 Leningrad Oblast 39 Ingushetia Republic 9 Kursk Oblast 25 Murmansk Oblast 40 Stavropol Krai 10 Lipetsk Oblast 26 Novgorod Oblast 41 Karachayevo-Circassian Republic 11 Moscow Oblast 27 Pskov Oblast 42 Chechen Republic 12 Oryol Oblast 28 St. Petersburg VOLGA FEDER AL OKRUG 13 Ryazan Oblast 29 Nenets Autonomous Okrug 43 Bashkortostan Republic 14 Smolensk Oblast SOUTHERN FEDER AL OKRUG 44 Marij El Republic 15 Tambov Oblast 30 Kalmykia Republic 45 Mordovia Republic 16 Tula Oblast 31 Krasnodar Krai 46 Tatarstan Republic 62 ANNEX 83 80 79 75 66 81 78 77 67 63 74 82 64 76 47 Udmurt Republic SIBERIAN FEDER AL OKRUG 78 Amur Oblast 48 Chuvash Republic 63 Buryatia Republic 79 Kamchatka Krai 49 Nizhni Novgorod Oblast 64 Tyva Republic 80 Magadan Oblast 50 Kirov Oblast 65 Altai Krai 81 Sakhalin Oblast 51 Samara Oblast 66 Krasnoyarsk Krai 82 Jewish Autonomous Oblast 52 Orenburg Oblast 67 Irkutsk Oblast 83 Chukotka Autonomous Okrug 53 Penza Oblast 68 Kemerovo Oblast 54 Perm Krai 69 Novosibirsk Oblast 55 Saratov Oblast 70 Omsk Oblast 56 Ulyanovsk Oblast 71 Tomsk Oblast UR ALS FEDER AL OKRUG 72 Altai Republic 57 Kurgan Oblast 73 Khakassia Republic 58 Sverdlovsk Oblast 74 Zabaykalskiy Krai 59 Tyumen Oblast FAR E ASTERN FEDER AL OKRUG 60 Chelyabinsk Oblast 75 Sakha (Yakutia) Republic 61 Khanty-Mansiysk Autonomous Okrug 76 Primorskiy Krai 62 Yamalo-Nenets Autonomous Okrug 77 Khabarovskiy Krai Source: Research elaborated by the authors. 63 RE-MAPPING OPPORTUNITY MAKING BEST USE OF THE ECONOMIC POTENTIAL OF RUSSIA’S REGION table 4 E P I E S T IM AT I O N F O R A L L R E G I O N S –0.0043 0.0849* Market Access (–0.6181) Economic Crimes per 1000 Pop (1.7834) –0.0289 0.0797 –0.0381*** 0.0035*** Port Access (–3. 2856) % Population in City > 250k (2 .6135) –0.1039 0.1382 –0.7182*** 12 . 2925*** Constant Land Suitability (–7.6194) (13.5537) –0.3605 Observations 415 0.0231 % University-Level Education (0.0873) Adjusted R-squared 0.1488 0.0075 0.0210 High-Tech Employment (0.1746) 0.0084 Note: Dependent variable is gross regional product per capita. Robust 0. 2285 t-statistics in parentheses *** p<0.01, ** p<0.05, * p<0.1. Robust SE. % Population in Monotowns (1.1683) Standardized coefficient (beta) reported in third row. Market access is calculated 0.0438 as the ratio between the sum of the population of the major city in each region relative to the sum of travel time to those cities from the reference city. Source: Elaborated by the team. Fostering sustainable growth in Russia requires looking beyond the lure of the extractive industries and natural resource endowments, as well as the challenge of remoteness. Given the role of the extractive industries and Russia’s vast geography in distorting development outcomes in Russia’s regions, it is important to design an EPI model that effectively controls for the niche role that these factors play in economic development. A number of approaches were implemented to control for the impact of these regions in the EPI regression. The outcome indicator, GRP per capita, was netted of income from the extractive industries; additionally, a variable that measured the share of population employed in the extractive industries was included. These measures, however, were not sufficiently strong to alter the negative relationship found between GRP per capita and market access, which is hard to explain or reconcile with the results of multiple empirical studies conducted in different countries. This is in part reflective of the fact that an inflow of revenue into an extractive sector boosts prices and wages across the economy and thus makes the entire economy, rather than the sector itself, appear more productive. The negative relationship between ports and GRP per capita remains, although it is statistically insignificant in this iteration. Figure 28 shows that using this version of the EPI estimation that controls for resource-rich regions, there is a slight shift in those regions that have high economic potential: some regions emerge in western Russia, while others in Siberia and in the Far East lose their high potential status. For example, in this iteration, Moscow and St. Petersburg have EPI scores of 100 and 98 respectively; however, regions like Chukotka and Buryat continue to have EPI scores well above the average and 9 out of 20 regions ranked as High EPI are in the Siberian or Far Eastern Federal okrugs. These results continue to suggest that resource richness and remoteness are important factors in their high productivity, which in the framework of this analysis is uninformative and does not proffer sustainable or actionable policy options. 64 ANNEX Based on the distortions introduced into the model by the inclusion of remote regions in Russia, we made the important decision to drop the Far Eastern and Siberian Federal okrugs from the analysis. Excluding the two Federal okrugs removed the following 21 regions: Region Federal Okrug Region Federal Okrug 1 Buryatia Republic 13 Sakha (Yakutia) Republic 2 Altai Krai 14 Primorsky Krai 3 Buryatia Republic 15 Khabarovsk Krai 4 Altai Republic 16 Amur Oblast 5 Khakasia Republic 17 Kamchatka Krai Far Eastern 6 Krasnoyarski Krai 18 Magadan Oblast Siberian 7 Irkutsk Oblast 19 Sakhalin Oblast 8 Kemerov Oblast 20 Jewish Autonomous Oblast 9 Novosibirsk 21 Chukotka Autonomous Oblast 10 Omsk Oblast 11 Tomsk Oblast 12 Zabaykalsky Krai figure 29 A N A LY S I S W I T H 2 0 R E G I O N S R E M O V E D F R O M FAR E ASTERN AND SIBERIAN FEDER AL OKRUGS 21 18 17 13 6 11 10 19 16 15 9 8 7 1 5 4 12 20 3 14 2 excluded from estimation 65 RE-MAPPING OPPORTUNITY MAKING BEST USE OF THE ECONOMIC POTENTIAL OF RUSSIA’S REGION table 5 E P I R E S U LT S C O N T R O L L IN G F O R E X T R A C T I V E I N D U S T R I E S –0.0072* 0.0018 Market Access (–1.7413) % Employment in Extractive Industries (0.8344) –0.0706 0.0311 –0.0113 0.0040*** Port Access (–1.4759) % Population in City > 250k (3.5664) –0.0449 0.2272 –0.4353*** 11.4549*** Constant Land Suitability (–6.0283) (20.4307) –0.3177 Observations 415 0.1929 % University-Level Education (1.1589) Adjusted R-squared 0.1729 0.0915 0.3064*** High-Tech Employment (3.3870) 0.1774 0.1202 Note: Dependent variable is gross regional product per capita. Robust % Population in Monotowns (0.8504) t-statistics in parentheses *** p<0.01, ** p<0.05, * p<0.1. Robust SE. 0.0335 Standardized coefficient (beta) reported in third row. Market access is calculated as the ratio between the sum of the population of the major city 0.0650* in each region relative to the sum of travel time to those cities from the Economic Crimes per 1000 Pop (1.8171) reference city. Port access is calculated as the ratio between the sum of cargo 0.0887 throughput in each port relative to the sum of travel distance to those ports from the reference city. Source: Elaborated by the team. Removing the 21 regions in the Far Eastern and Siberian Federal okrugs resolved the remoteness issue that distorted our analysis. However, this removal did not capture all of the regions reliant on the extractive industries. Table 7 shows the share of natural resource extraction in the structure of GRP by region from 2010‑2014. The table only displays those regions where, on average, more than 9.9 percent of GRP between 2000 and 2014 was from natural resource extraction. Although many of the 21 regions are included in Table 7, there are several regions whose share of natural resource extraction is immense — including the top two regions Nenets Autonomous Okrug and Khanty- Mansi Autonomous Okrug — but that are not captured by this fix. The next approach was to remove a subset of regions reliant on natural resource extraction. An average contribution of more than 30 percent to GRP was selected as the boundary for excluding the final set of regions that distorted our EPI model after analyzing (1) the distribution of average contribution of natural resource extraction to GRP across the regions and (2) the number of regions already accounted for by dropping the Siberian and Far Eastern Federal okrugs. In order to test 30 percent contribution as a reasonable threshold (reasonable is defined as a threshold that would allow enough variability in the sample while controlling for the influence of the extractive regions), we employed a sensitivity analysis. The purpose of the sensitivity analysis is to determine how preliminary EPI estimations would be influenced by two alternative thresholds: (a) a smaller sample excluding regions with contributions greater than 37.5 percent — where the total number of excluded regions would increase by four to 24 regions (b) a wider sample excluding regions with contributions greater than 27.5 percent — where the total number of excluded regions would increase by six to 26. 66 ANNEX table 6 S H A R E O F N AT U R A L R E S O U R C E E X T R A C T I O N IN T H E S T R U C T U R E O F G R P B Y R E G I O N 2 0 0 4 -2 0 1 4 % Avg. Region Federal Okrug 2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 2014 04-14 Nenets AO Northwestern 74.9 74.3 65.4 59.6 66.4 77.3 78.6 73.9 75.4 75.3 74.3 72.3 Khanty-Mansiysk AO Urals 68.4 74.9 72.2 69.5 65.4 63.4 63.0 67.0 67.9 66.8 66.9 67.76 Tyumen Oblast Urals 56.7 59.9 57.9 55.6 52.4 50.5 49.9 51.9 54.5 53.3 54.2 54.25 Yamalo Nenets AO Urals 60.3 61.4 59.1 53.7 50.3 47.7 47.9 48.1 52 52.3 50.2 53.0 Sakhalin Oblast Far Eastern 17.0 22.1 25.4 53.6 49.9 55.7 59.3 60.6 61.5 61.4 65.7 48.38 Sakha (Yakutia) Republic Far Eastern 40.6 39.5 39 36.5 36 28.3 40.1 43.4 42.8 42.9 44.5 39.41 Orenburg Oblast Volga 33.1 37.0 42.7 37.9 34.2 34.8 35.9 35.4 37.0 40.7 36.0 36.79 Komi Republic Northwestern 28.6 34.3 32.3 26.5 32.3 29.4 33.5 33.4 32.2 33.4 33.6 31.77 Tomsk Oblast Siberian 33.0 35.4 27.7 24.9 27.4 22.0 23.9 30.1 31.3 29.2 28.5 28.49 Chukotka AO Far Eastern 6.4 7.5 7.5 12.0 29.9 40.8 38.2 41.6 37.8 33.2 42.9 27.07 Kemerovo Oblast Siberian 20.6 27.1 21.5 23.7 28.4 25.2 31.4 34.6 26.8 22.3 21.6 25.74 Arkhangelsk Oblast* Northwestern 0.2 0.6 0.3 0.4 0.3 0.4 0.4 0.6 0.7 0.5 1.3 0.5 Udmurt Republic Volga 19.4 26.7 24.9 26.8 26.2 24.2 23.4 25.8 25.6 25.2 24.2 24.76 Tatarstan Republic Volga 26.4 30.9 27.8 25.3 21.9 22.8 21.6 22.2 21.8 20.4 19.8 23.71 Magadan Oblast Far Eastern 31.9 27.1 20.2 18.6 17.1 18.6 20.6 25.1 18.3 17.2 17.2 21.08 Belgorod Oblast Central 21.1 21.8 18.1 19.7 18.5 8.4 16.8 20.9 16.0 15.2 12.4 17.17 Perm Krai Volga 13.7 15.7 15.9 14.0 12.1 13.3 13.5 15.6 18.1 16.0 15.5 14.85 Murmansk Oblast Northwestern 18.7 10.8 9.9 9.9 18.8 11.1 15.2 18.6 16.1 18.1 12.2 14.49 Kursk Oblast Central 19.6 18 14.8 14.5 14.3 6.6 12.1 14.9 12.6 11.8 9.3 13.5 Karelia Republic Northwestern 8.7 19.3 12.7 12.3 13.7 4.8 12.8 14.2 13.6 12.2 12.0 12.39 Samara Oblast Volga 9.2 10.8 10.4 10.2 9.9 11.8 11.9 14.0 14.7 13.3 14.2 11.85 Khakasia Republic Siberian 6.6 7.3 7.1 5.3 6.8 10.3 15.4 15.7 11.9 12.1 10.9 9.94 Krasnoyarski Krai Siberian 4.2 3.9 3.7 3.5 4.4 5.0 18.1 16.6 15.4 17.2 16.9 9.9 * Arkhangelsk oblast without Nenets AO. 67 RE-MAPPING OPPORTUNITY MAKING BEST USE OF THE ECONOMIC POTENTIAL OF RUSSIA’S REGION Sensitivity Analysis Results: 37.5 percent threshold. The 37.5 percent threshold corrected for distortions in market access. figure 30 S C AT T E R M A R K E T A C C E S S V S . L O G G R P P E R C A P I TA 2 0 1 4 Москва 13 Belgorod St. Petersburg Tatarstan Komi Orenburg GRP per capita, constant 2010 12,5 Arkhangelsk Leningrad Lipetsk Московская обл. Sverdlovsk Murmansk Perm Novgorod Kaluga Chelyabinsk Bashkortostan Nizhny Novgorod Kaliningrad Vologda Yaroslavl Kursk Tambov Astrakhan Volgograd Tula Smolensk Ryazan 12 Karelia Rostov Penza Vladimir Kirov Bryansk Tver Kurgan Chuvash Stavropol Dagestan Noth Ossetia Alania Kabardino Balkar 11,5 Ivanovo Kalmykia Karachay Cherkess Ingushetia Chechen 11 7 7,5 8 8,5 9 market access Source: Research elaborated by the team. table 7 S E N S I T I V I T Y A N A LY S I S R E G R E S S I O N 3 7. 5 P E R C E N T T H R E S H O L D 0.1342* –0.0048 Market Access (1.9008) Economic Crimes per 1000 Pop (–0.1204) 0.1116 –0.0065 0.0734** 0.0053*** Port Access (2.4328) % Population in City > 250k (4.6391) 0.1503 0.2849 –0.3486*** 9.8427*** Constant Land Suitability (–4.0946) (13.9064) –0.2358 Observations 290 0.2956** % University-Level Education (2.2249) Adjusted R-squared 0.3296 0.1320 0.3948*** Note: Dependent variable is gross regional product per capita. Robust High-Tech Employment (3.3623) t-statistics in parentheses *** p<0.01, ** p<0.05, * p<0.1. Robust SE. 0.2238 Standardized coefficient (beta) reported in third row. Market access is calculated as the ratio between the sum of the population of the major city 1.0982*** in each region relative to the sum of travel time to those cities from the % Population in Monotowns (7.1824) reference city. Port access is calculated as the ratio between the sum of cargo 0.2656 throughput in each port relative to the sum of travel distance to those ports from the reference city. Source: Research elaborated by the team. 68 ANNEX Sensitivity Analysis: 27.5 percent threshold. The 27.5 percent threshold also corrected distortions in market access. figure 31 S C AT T E R M A R K E T A C C E S S V S . L O G G R P P E R C A P I TA 2 0 1 4 Москва 13 Belgorod St. Petersburg Tatarstan Komi Orenburg GRP per capita, constant 2010 12,5 Arkhangelsk Leningrad Lipetsk Московская обл. Sverdlovsk Murmansk Perm Novgorod Kaluga Chelyabinsk Bashkortostan Nizhny Novgorod Kaliningrad Vologda Yaroslavl Kursk Tambov Astrakhan Volgograd Tula Smolensk Ryazan 12 Karelia Rostov Penza Vladimir Kirov Bryansk Tver Kurgan Chuvash Stavropol Dagestan Noth Ossetia Alania Kabardino Balkar 11,5 Ivanovo Kalmykia Karachay Cherkess Ingushetia Chechen 11 7 7,5 8 8,5 9 market access Source: Research elaborated by the team. table 8 S E N S I T I V I T Y A N A LY S I S R E G R E S S I O N 2 7. 5 P E R C E N T T H R E S H O L D : O N LY U R B A N I Z AT I O N L E V E L A N D M A R K E T A C C E S S A R E S TAT I S T I C A L LY S I G N I F I C A N T 0.2377*** 0.0253 Market Access (3.6562) Economic Crimes per 1000 Pop (0.7539) 0.1966 0.0353 0.1462*** 0.0063*** Port Access (5.7243) % Population in City > 250k (6.5941) 0.3065 0.3499 –0.1986*** 8.8062*** Constant Land Suitability (–2.6235) (14.2739) –0.1323 Observations 275 0.3181*** % University-Level Education (2.8527) Adjusted R-squared 0.4652 0.1455 0.5921*** Note: Dependent variable is gross regional product per capita. Robust High-Tech Employment (5.4045) t-statistics in parentheses *** p<0.01, ** p<0.05, * p<0.1. Robust SE. 0.3389 Standardized coefficient (beta) reported in third row. Market access is calculated as the ratio between the sum of the population of the major city 0.8378*** in each region relative to the sum of travel time to those cities from the % Population in Monotowns (5.5868) reference city. Port access is calculated as the ratio between the sum of cargo 0.2054 throughput in each port relative to the sum of travel distance to those ports from the reference city. Source: Research elaborated by the team. 69 RE-MAPPING OPPORTUNITY MAKING BEST USE OF THE ECONOMIC POTENTIAL OF RUSSIA’S REGION In sum, the 37.5 percent threshold corrected the distortions introduced by regions reliant on natural resource extraction, and the 27.5 percent threshold is also able to correct these same distortions. Based on these results, we conjecture that the 30 percent threshold is sufficient to limit the effect of the extractive industries in our analysis while preserving any variation contributed to the model by the additional regions that would otherwise be removed using the 27.5 threshold. By employing the 30 percent threshold, the following additional regions were removed from the analysis: table 9 OIL AND GAS DEPENDENT REGIONS REMOVED FROM THE MODEL Region Federal Okrug Region Federal Okrug 1 Nenets AO Northwestern 4 Yamalo Nenets AO 2 Komi instead 5 Khanty Mansi AO Urals 3 Orenburg Volga 6 Tyumen Therefore, the total number of regions evaluated in the EPI was 56. figure 32 R E G I O N S IN C L U D E D A N D E X C L U D E D IN T H E F IN A L E P I E S T IM AT I O N share of natural resource extraction >30 percent of GRP regions in far eastern and Siberian Federal Okrugs Variable Selection After narrowing down the sample of regions, the next step was to narrow down the set of variables that would (1) follow appropriate statistical conventions (i.e., not violate collinearity) and (2) precisely model the variance between structural conditions and observed levels of GRP per capita in Russia. We collected over 147 indicators that ranged in years and representativeness across the regions. We tested a range of indicators including raster-based market access measures, minimum temperature and other climatic measures, agricultural land, the Engle Road Index, and 70 ANNEX more. However, after over 20 iterations of modeling the EPI, we narrowed the list of variables to the following (all of the indicators had data for our regions between 2010 and 2014): Market Access Human Capital Economic Crimes Road Density (travel time) (university degree) Employment in Natural Port Access Life Expectancy City Population Resources Population Living in a City Land Suitability for Agri- Employed in High- and Budgetary Transfers with > 250.000 Inhabit- culture Medium-tech Industries ants Calories Produced by Monotowns Urbanization Level Population Density Land When selecting the final set of variables, we ensured that our variables did not show high levels of collinearity. table 10 C O R R E L AT I O N M AT R I X F O R A L L VA R I A B L E S I N C L U D E D I N T H E A N A LY S I S Market Access Port Access Land Suitability Calories Market Access 1 Port Access –0.4232* 1 Land Suitability 0.2332* –0.2446* 1 Calories 0.5034* –0.2375* 0.6696* 1 Human Capital 0.0966 0.2350* 0.1106 0.1849* Life Expectancy –0.0643 0.1753* 0.2127* 0.2732* Employed in High- and Medium-tech 0.3593* –0.4135* 0.1062 0.0972 Monotowns –0.1292* –0.2155* 0.0417 –0.2399* Employment in Natural Resources –0.1900* 0.011 –0.1890* –0.2081* Economic Crime 0.1680* –0.1444* –0.0856 –0.0576 Budgetary Transfers 0.1161 –0.014 0.1993* 0.2295* Urbanization Level 0.1622* 0.0683 –0.3503* –0.2986* Road Density 0.4306* –0.0546 0.3536* 0.7737* Primary City Population 0.1187* 0.0624 0.0807 0.1087 % Population Living in City with >250k 0.0153 –0.0178 –0.0222 –0.1265* Inhabitants Population Density 0.2142* 0.1 –0.1319* 0.0571 * Significant at 5%. 71 RE-MAPPING OPPORTUNITY MAKING BEST USE OF THE ECONOMIC POTENTIAL OF RUSSIA’S REGION Road Density % Population medium tech Primary City living in city Expectancy inhabitants Monotowns in high and Population Population with >250k Employed Density Capital Human Life Market Access Port Access Land Suitability Calories Human Capital 1 Life Expectancy 0.6226* 1 Employed in High- and –0.1805* –0.4528* 1 Medium-tech Monotowns –0.2107* –0.2453* 0.2488* 1 Employment in Natural –0.1313* –0.0421 –0.1227* 0.1503* Resources Economic Crime –0.0956 –0.4370* 0.1395* 0.083 Budgetary Transfers 0.3097* 0.2954* 0.1435* 0.0941 Urbanization Level 0.0731 –0.3917* 0.4594* 0.3087* Road Density 0.5260* 0.5173* 0.0239 –0.2834* 1 Primary City Population 0.5629* 0.4252* 0.0435 –0.0058 0.5055* 1 % Population Living in City 0.2481* 0.0554 0.2525* 0.2460* 0.1647* 0.6644* 1 with >250k Inhabitants Population Density 0.5301* 0.3714* –0.1055 –0.1488* 0.4575* 0.8150* 0.5369* 1 * Significant at 5%. Model Specification Our model is a Pooled OLS for the years between 2010 and 2014. Although doing a cross-sectional regression was an option, a Pooled OLS (as the primary consideration) gave us more degrees of freedom. Even though we use a Pooled OLS, we do not control for year in our estimation because the intention is to model aggregate trends since we do not expect much variation in the EPI scores (based on long- term structural factors) over five years. Additionally, the time invariant variables in our model, such as market access, support the use of an aggregate (Pooled OLS) model. The market access variable (according to our hypothesis), although extremely important, is static and would severely limit the ability to see yearly variations. Random or fixed effect models were also considered and tested; however, a Chow Poolability test confirmed (as did a Hausman test of the random and fixed effects model) that the Pooled OLS model would provide estimates that are BLUE (best linear unbiased estimates). 72 ANNEX The final model specification is: Yln (grp cap constant)i = B0 + B1 lnmarket + B2 lnportaccess + B3 landsuitability + B 4 lnhumancap + B5 hightech + B6 monotown + B5 primacy_250 + B5 lncrime + μ, vce(robust) EPI Scores In order to derive the EPI scores, once the regression was completed the predicted values of the fitted line were generated (yhat). From here, z-scores for each year in the panel were generated. Although the predicted values are for the set of data from 2010‑2014, the z-scores for each region were generated within each year. Finally, the z-scores for each year were re-scaled into the final EPI score using the following equation: EPIt = 50 + ( 50 max(Zi ) * Zi ) figure 33 C O R R E L AT I O N B E T W E E N G R P P E R C A P I TA A N D E P I 2010 год 2011 год 2012 год Moscow Moscow Moscow 13 St. Petersburg St. Petersburg St. Petersburg Belgorod GRP per capita, constant 2010 Belgorod Tatarstan Tatarstan Belgorod Tatarstan Leningrad 12,5 Leningrad Arkhangelsk Leningrad Sverdlovsk Arkhangelsk Arkhangelsk Sverdlovsk Moscow O b Moscow O b Perm Perm Bashkortostan Novgorod Kaluga Lipetsk Sverdlovsk Moscow Perm Ob BashkortostanVologdaLipetsk KalugaMurmansk Vologda Murmansk Samara Nizhny Chelyabinsk Novgorod Lipetsk Murmansk NovgorodNizhny Udmurt Novgorod Chelyabinsk Samara Udmurt Yaroslavl Bashkortostan Novgorod Vologda UdmurtNizhny Novgorod Samara Chelyabinsk Krasnodar Yaroslavl Kaliningrad Krasnodar Kursk Kaliningrad Saratov Krasnodar Kaluga Kaliningrad Yaroslavl Kursk Saratov Volgograd Astrakhan Oryol Volgograd Karelia Ryazan 12 Saratov KurskKarelia Volgograd Tula Karelia Oryol Tula Ryazan Tver Astrakhan KostromaUlyanovsk Smolensk Rostov Tambov Tula Smolensk Voronezh Kostroma TverUlyanovsk Rostov Vladimir Chuvash OryolSmolensk Tver Kostroma Astrakhan Ryazan Ulyanovsk Tambov Vladimir Voronezh Mordovia Mari El Penza Mordovia Rostov Kurgan Pskov Penza Chuvash Pskov Kurgan Bryansk Tambov Kurgan Voronezh Chuvash Mordovia Mari ElKirov Bryansk Kirov Mari Pskov Penza ElKirov Bryansk North Ossetia_Alania Adygea Stavropol North Ossetia_Alania North Ossetia_Alania Adygea Stavropol Dagestan Kabardino Balkar Adygea Stavropol Dagestan Ivanovo 11,5 Dagestan Kabardino Balkar Ivanovo Kabardino Balkar Karachay Cherkess Ivanovo Karachay Cherkess Kalmykia Karachay Cherkess Kalmykia Kalmykia Ingushetia 11 Chechen Chechen Ingushetia Chechen Ingushetia 0 50 100 0 50 100 0 50 100 economic potential index 2013 год 2014 год Moscow Moscow 13 St. Petersburg St. Petersburg Belgorod Belgorod Tatarstan Tatarstan GRP per capita, constant 2010 12,5 Leningrad Sverdlovsk Arkhangelsk Moscow O b Leningrad Arkhangelsk Sverdlovsk Moscow O b Novgorod Perm Bashkortostan Lipetsk Kaluga Perm Bashkortostan Novgorod Lipetsk Kaluga Samara Nizhny Novgorod Murmansk Samara NizhnyYaroslavl Udmurt Vologda Novgorod Murmansk Vologda Udmurt Yaroslavl Chelyabinsk Krasnodar Astrakhan Saratov KaliningradChelyabinsk Kursk Astrakhan Saratov Krasnodar Tambov Kaliningrad Kursk TambovOryol Oryol Volgograd Tula Volgograd Tula Smolensk KareliaRyazan Voronezh Smolensk Karelia Ryazan Ulyanovsk 12 Voronezh Ulyanovsk Kostroma Tver Rostov Mari El Kostroma Penza Rostov Mordovia Tver Mari El Penza Vladimir Mordovia Vladimir BryanskChuvash Bryansk Chuvash Kurgan Kirov Pskov Pskov Kirov Kurgan North Ossetia_Alania Adygea Stavropol Adygea North Ossetia_Alania Dagestan Stavropol Dagestan Kabardino Balkar Ivanovo Kabardino Balkar 11,5 Kalmykia Karachay Cherkess Kalmykia Karachay CherkessIvanovo Ingushetia Ingushetia Chechen 11 Chechen 0 50 100 0 50 100 economic potential index 73 RE-MAPPING OPPORTUNITY MAKING BEST USE OF THE ECONOMIC POTENTIAL OF RUSSIA’S REGION Performance Rankings In order to generate the performance statistics, the standard errors of the predicted mean were generated from the base model. Then the t-multiplier for the 99 percent confidence interval and n-(k+1) degrees of freedom was determined using the t-table (2.340). Confidence intervals were generated for the predicted values using the standard errors of the predicted mean and the t-multiplier using the following formulas: lower confidence interval boundary = yhat‑2,340*std_error upper confidence interval boundary = yhat+2,340*std_error Values that fell within the confidence interval are labeled "performance fulfills potential", values above the confidence interval labeled "performance exceeds potential", and values below the confidence interval labeled "performance yet to fulfill potential". E C O N O M I C IN D I C AT O R S 39,29 % 28,57 % 32,14 % 22 16 18 Exceeds Fulfills Yet to Fulfill Freq. Explaining Potential In order to determine which variables contributed to each region’s EPI ranking, the EPI score was split into tertiles by year. Each of the regions could subsequently be ranked relative to their peers across the six variables. This method allows us to see which variables had higher scores for high potential regions and which variables had higher scores among the low potential regions. table 11 R E G I O N A L R AT IN G S B Y IN D I V ID U A L C O M P O N E N T S O F E P I Region EPI Score Port Rank Land Rank Monotown Market Human Tech Rank Cities Rank Crime Rank Rank Access Capital Rank Rank Mari El Republic 34.15 45 36 9 17 40 11 46 48 Krasnodar Krai 26.22 9 5 10 36 34 46 43 24 Chechen Republic 2.65 35 21 5 48 55 53 42 55 Belgorod Oblast 28.81 38 8 33 29 24 42 41 40 Pskov Oblast 35.37 11 42 6 41 35 29 51 25 74 ANNEX Bashkortostan Republic 37.00 51 19 39 44 47 16 39 46 Tambov Oblast 43.16 31 3 20 12 45 14 38 42 Kabardino Balkar Republic 16.28 20 30 1 43 22 45 50 31 Karachay Cherkess 32.85 13 49 3 31 6 41 52 4 Republic Kurgan Oblast 33.87 55 23 26 51 41 23 24 45 Adygea Republic 17.36 10 1 17 30 16 49 47 18 Kalmykia Republic 17.76 17 29 2 32 5 54 48 17 Stavropol Krai 32.80 12 17 25 38 9 40 45 14 Astrakhan Oblast 44.76 8 25 13 50 11 47 6 12 Kursk Oblast 44.53 37 4 35 22 20 35 27 36 Dagestan Republic 33.75 6 28 28 53 27 50 44 52 Ingushetia Republic 9.244 28 26 12 37 19 55 53 19 Saratov Oblast 44.81 42 20 24 27 23 22 32 47 Severnaya Osetiya-Alaniya 40.82 29 24 11 42 2 48 11 2 Republic Volgograd Oblast 58.22 26 22 47 35 18 36 4 16 St. Petersburg 99.78 2 43 14 49 4 27 2 50 Mordovia Republic 59.86 43 13 32 15 8 9 28 1 Nizhni Novgorod Oblast 59.11 40 31 38 18 25 15 23 30 Yaroslavl Oblast 71.07 27 45 34 8 49 6 8 54 Tatarstan Republic 71.43 47 9 53 25 10 5 14 38 Kaluga Oblast 72.37 23 33 19 6 31 2 35 5 Moscow 89.71 18 40 8 2 1 44 1 20 Rostov Oblast 60.99 4 14 21 28 15 33 36 27 Vladimir Oblast 58.16 33 35 40 4 48 12 40 32 Ulyanovsk Oblast 67.69 46 11 43 21 37 3 7 49 Samara Oblast 90.80 48 12 52 34 7 1 3 22 Chuvash Republic 63.90 44 18 49 14 32 8 29 8 Ryazan Oblast 65.60 25 15 15 5 21 7 9 7 Lipetsk Oblast 66.87 30 2 55 10 28 38 13 51 Chelyabinsk Oblast 66.47 54 32 54 46 12 10 12 35 Tula Oblast 58.93 22 10 36 3 38 13 34 21 Murmansk Oblast 67.11 1 55 46 55 26 52 19 44 75 RE-MAPPING OPPORTUNITY MAKING BEST USE OF THE ECONOMIC POTENTIAL OF RUSSIA’S REGION ANNEX  3 A brief overview of spatially-targeted federal programs for the development of lagging macro-regions Federal program for the development of the Far East and Baikal region: Main objectives: Achievement of accelerated development and retention of population in the regions of the Far East Federal Okrug. Key target indicators: Jobs created, high-value jobs created, total private sector investment attracted, permanent population of the Far East Federal Okrug retained, total taxes collected. Instruments: Delegation of territories for accelerated socio-economic development (that benefit from federal tax discounts), support for strategically important private investment projects, support for the institutions for development, infrastructure investment, granting of land parcels (1 ha large) to stimulate entrepreneurial activity.127 Motivation: Avoiding the natural resources-dependent path of economic development that underutilizes the potential of the regions and Russia as a whole as an economic link between Europe and Asia. Utilizing this potential will require greater economic integration of the Far East into the economic landscape of Russia. The program also responds to national security challenges.128 Assessment of results and effectiveness: The program is widely recognized as ineffective, and it has recently been defunded. According to the state Duma committee for regional development and issues of Far East and the North, in 2015 only 45 percent of the program’s planned objectives were met, while the program still used 95 percent of allocated funding.129 Federal program for the development of the North Caucasus Federal Okrug: Main objectives: Development of manufacturing and agricultural sectors to support growth of the economy of the regions and improvement of the incomes of the population, improvement of quality of life of the population through better access to high quality education and healthcare, attraction of private investment, decrease in dependence on federal transfers, decrease in the level of unemployment, and the development of innovation activity in healthcare. Key target indicators: Output of industrial and agricultural products, total volume of private investment, total tax collection, level of unemployment, share of students studying in morning shifts, income levels, number of high value-added jobs, number of tourists visiting the region. Instruments: The first phase of the program that ended in 2016 prioritized investment in municipal and connective infrastructure and services; the subsequent two phases running until 2025 are supposed to focus on economic development and infrastructure that supports industry, agriculture, and tourism. Infrastructure investment priorities include water and sanitation, healthcare infrastructure, urban space and parks, industrial parks, and storage facilities for agricultural produce. Economic development measures focus on support and co-financing for private sector investment projects, investment promotion, and services. The program also includes budget See for example: Government of Russian Federation (2013). State Program of the Russian Federation: Social and Economic Development of the 127  Far East and Baikal Regions. 128  Government of the Russian Federation (2009). Strategy of Socio-Economic Development of the Far East and Baikal Regions until 2025. 129  Primamedia.ru (2016). No effectiveness, no money. Retrieved from http://primamedia.ru/news/548538/. [In Russian] 76 ANNEX transfers to the region from the federal government. Motivation: Equalization of the levels of socio-economic development of the regions is seen as a necessary condition for the transition to an innovative, socially-oriented model of development for the country. Securing the political stability of the region is stated as one of the secondary objectives. The policy paper also identifies disparities in the level of economic development as a threat to national security. Assessment of results and effectiveness: The program has been highly successful and impactful in terms of its contribution to the quality of infrastructure and the accessibility of social services. In 2016, out of 50 investments supported by the program, 48 were implemented for different forms of social infrastructure. However, despite the region’s improved economic performance, it is acknowledged that the challenges of unemployment and lack of private investment in the region persist. In 2016, the program supported 17 private sector investment projects that together generated 3,000 jobs (a rather small amount for a total population of 10 million people).130 Federal program for the development of the Arctic region until 2020: Main objectives: Improving the level of socio-economic development of the Arctic territories through better coordination of federal and regional governments, implementing state programs in the Arctic territories, and improving the monitoring and evaluation system of socio-economic development of the Arctic territories. Key target indicators: The program is primarily a coordination framework for other federal interventions; thus, it uses indicators from sectoral programs that make up its components. Instruments: The program has an analytical and organizational focus. It includes measures for improvement of the coordination between federal government agencies and regional governments, as well as the establishment of a monitoring and evaluation system. Motivation: Achieving balanced development of the Arctic region through targeted and prioritized development of selected areas, utilization of a selective approach to investment, and targeting high potential economic clusters while ensuring the territorial unity and national security of Russia. Assessment of results and effectiveness: No assessments available at this stage. G overnment of the Russian Federation (2017). Development of the Northern Caucasus; Selected Important Indicators for 2016. Retrieved from 130  http://m.government.ru/info/27263/. [In Russian] 77 in collaboration with