WPS8242 Policy Research Working Paper 8242 Women’s Entrepreneurship How to Measure the Gap between New Female and Male Entrepreneurs? Frédéric Meunier Yulia Krylova Rita Ramalho Development Economics Global Indicators Group November 2017 Policy Research Working Paper 8242 Abstract This paper analyzes data on female and male entrepre- are more frequently used by female entrepreneurs, only neurship that were collected by the World Bank Group’s three economies have similar or equal number of women Entrepreneurship Database. Recognizing the importance of business owners relative to men. The gap in female entre- a differentiated approach to entrepreneurship in terms of preneurship is especially apparent in low-income economies, legal entities, the data on female and male business owners where women are much less likely than men to start a new are collected at the level of limited liability companies and business. The paper also provides new insights into the sole proprietorships. Forty-four of the 143 economies that relationship between female entrepreneurship and various participated in the Entrepreneurship project provided some institutional factors, including women’s financial inclusion, sex-disaggregated data for 2016. The paper finds that the the gender gap in education, and legal rights disparities. gender gap in business ownership remains high in many The analysis suggests a need to expand the collection of economies around the world. In the majority of the ana- sex-disaggregated data, to trace the economies’ progress lyzed economies, less than one-third of new limited liability in narrowing the existing gender gap in entrepreneurship. company owners are women. Although sole proprietorships This paper is a product of the Global Indicators Group, Development Economics. It is part of a larger effort by the World Bank to provide open access to its research and make a contribution to development policy discussions around the world. Policy Research Working Papers are also posted on the Web at http://econ.worldbank.org. The authors may be contacted at fmeunier@worldbank.org. The Policy Research Working Paper Series disseminates the findings of work in progress to encourage the exchange of ideas about development issues. An objective of the series is to get the findings out quickly, even if the presentations are less than fully polished. The papers carry the names of the authors and should be cited accordingly. The findings, interpretations, and conclusions expressed in this paper are entirely those of the authors. They do not necessarily represent the views of the International Bank for Reconstruction and Development/World Bank and its affiliated organizations, or those of the Executive Directors of the World Bank or the governments they represent. Produced by the Research Support Team Women’s Entrepreneurship: How to Measure the Gap between New Female and Male Entrepreneurs? Frédéric Meunier Yulia Krylova Rita Ramalho JEL: L26, J16 Keywords: Female entrepreneurship, business ownership, gender gap The data collection was made possible thanks to the work of Aure Demoulin, Marianne Petrosyan, Tatyana Sydorenko, Enrique Yepiz Mendivil and Han Seul Yoon. The authors are very thankful to Noa Catalina Gimelli, Anja Robakowski-Van Stralen, Santiago Croci Downes, Sarah Iqbal, Asif Mohammed Islam and Alice Ouedraogo for helpful discussions and comments. The authors are especially grateful to the Department for International Development (DFID) for providing financial support making the collection and dissemination of the sex-disaggregated data on female entrepreneurship possible. 1. Introduction Women’s economic empowerment is a cornerstone of the 2030 Agenda for Sustainable Development. The 2016 Report of the United Nations Secretary-General’s High-Level Panel on Women’s Economic Empowerment provides strong evidence that women are lagging behind men in terms of the number of female business owners, the size of women-owned businesses, and their access to economic resources. Specifically, women-owned enterprises are smaller and disadvantaged in their access to credit, resources, and assets (UN Secretary-General’s High-Level Panel on Women’s Economic Empowerment 2016, 2). With data on the existing gender gap in female entrepreneurship sparse, tracking the progress achieved by women in this area becomes more important. Cross-country comparisons are essential for in-depth analysis of the development of female entrepreneurship in different institutional, legal and socio-cultural environments. Measuring women’s entrepreneurial activity is critically important for a better understanding of how female entrepreneurs contribute to the economy and society. However, there are few data sets related to female entrepreneurship with comparable cross-country data. To address this issue, the 2017 edition of the World Bank Group’s Entrepreneurship Database expanded its scope to collect comparable cross-country data on the number of new female and male LLC owners and sole proprietors. The importance of female entrepreneurship for economic development is widely recognized. Numerous studies demonstrate the positive impact of female entrepreneurs on economic growth and development, as well as sustainable and durable peace (Cuberes and Teignier 2014; Fetsch, Jackson, and Wiens 2015; Lewis et al. 2014; Woetzel et al. 2015). Moreover, economies characterized by high levels of female entrepreneurial activity are more resilient to financial crises and experience economic slowdowns less frequently (Global Entrepreneurship Research Association 2017, 29). Despite different methodologies, these studies find significant socioeconomic benefits of female entrepreneurship. According to Woetzel et al. (2015), a “full-potential” scenario—in which women participate in the economy identically to men— would contribute as much as $28 trillion, or 26 percent, to annual global GDP by 2025. Currently, the potential of female entrepreneurs is not fully realized in many economies. Indeed, an analysis of 15 gender indicators across 95 economies shows that 46 of these economies have very high levels of gender inequality on more than half of the indicators (ibid.). Another cross-country study demonstrates that gender gap- related income losses differ by geographical region (Cuberes and Teignier 2014). Economies in the Middle East and North Africa have the highest income loss associated with lower economic opportunities for women (27 percent); in Europe, this loss is less than 10 percent (ibid., 21). This study provides further evidence of gender gaps in female business entry and ownership in many economies worldwide. Indeed, less than one-third of LLC owners are women in the vast majority of economies. Although sole proprietorships are more frequently used by female entrepreneurs, only three economies have similar or equal numbers of women business owners relative to men. The study also suggests that the gap in female entrepreneurship is reinforced by other gender inequalities, such as low financial inclusion of women, the gap in education, and legal rights disparities. Section 2 reviews the coverage and limitations of existing female entrepreneurship data sets. Section 3 presents the methodology and describes the data collection process, with a particular focus on the new gender-specific indicators. Section 4 consists of a comparative analysis of gender gaps in business entry and ownership across economies. Section 5 discusses how institutional factors can influence female entrepreneurship. Specifically, this section analyzes the link between the level of female entrepreneurship and other factors, including legal barriers for women to doing business, their level of education and their ability to access bank accounts and capital. 2 2. Female Entrepreneurship and Existing Data Sets The lack of comprehensive sex-disaggregated data on business entry and ownership presents a significant obstacle to the global and diversified analysis of female entrepreneurship. Due to insufficient standardized and country-comparable data, the diagnostics of gender gaps in entrepreneurship are limited. This section offers a brief overview of the existing data sets and indicators commonly used to measure female entrepreneurship and analyzes their limitations. The Global Entrepreneurship Monitor (GEM) was launched in 1999 and is now carried out by more than 400 experts on entrepreneurship from over 100 research and academic institutions (Global Entrepreneurship Research Association 2017). The GEM considers the broad definition of entrepreneurship as “any attempt at new business or new venture creation, such as self-employment, a new business organization, or the expansion of an existing business, by an individual, a team of individuals, or an established business” (Reynolds, Hay, and Camp 1999, 3). This definition of entrepreneurship is not limited to a specific type of legal entity. Since 2004, the Global Entrepreneurship Research Association has published biannual reports on women’s entrepreneurship which provide analysis of female entrepreneurs who intend to start and run businesses. The most recent report, for 2015, covers 83 economies. One of the key indicators used is the Total Early-Stage Entrepreneurship Activity (TEA) female and male rates which measure the percentage of the adult population either in the process of starting a business or who have recently started a business (Global Entrepreneurship Research Association 2015, 17). Methodologically, the GEM reports rely heavily on country-level surveys. For the TEA, the GEM collects data with an Adult Population Survey (APS) of at least 2,000 randomly selected adults in each economy. In addition, a National Expert Survey (NES) collects in-depth opinions from at least 36 national experts about the factors that affect the entrepreneurship environment in each economy. In 2011, the Organisation for Economic Co-operation and Development (OECD) launched a gender initiative to strengthen gender equality in three areas: education, employment and entrepreneurship. The OECD broadly defines entrepreneurs as “people who own and work in their own business, including un- incorporated businesses and own-account workers” (OECD 2016, 122). The OECD Gender Data Portal provides data on 18 indicators related to female entrepreneurship including the share of female-owned sole- proprietor enterprises, earnings gap in self-employment and attitudes toward entrepreneurial risk. However, geographic coverage is limited to the 35 OECD members and partner economies. Furthermore, some indicators do not have comprehensive country coverage. The 2011–2015 data on the share of sole-proprietor enterprises owned by women, for example, are available for only one country (France). The United Nations launched the Evidence and Data for Gender Equality (EDGE) project in 2013 to strengthen national systems on gender data collection in critical areas of policy making. As of June 2017, the list of Minimum Set of Gender Indicators contained 52 quantitative indicators and 11 qualitative indicators related to national norms. Two of the indicators measure entrepreneurial activity directly, namely the percentage of women-owned firms (defined by size) and the proportion of workers who are self- employed. Between 2012 and 2015, EDGE focused on the development of guidelines for the collection of gender indicators based on household surveys. The EDGE pilot project was conducted in only seven developing economies—Georgia, Maldives, Mexico, Mongolia, the Philippines, South Africa and Uganda. Similar to the OECD gender initiative, the EDGE project defines entrepreneurs as “persons who have direct control over an enterprise they own alone or with other individuals” (UNSD 2017). In recent years, several composite indices of female entrepreneurship have been introduced based on the combination of different sources. Launched in 2015, the Global Women Entrepreneur Leaders Scorecard is based on sources such as the World Bank’s Global Findex database, the World Bank’s Women, Business and the Law database, the World Economic Forum, Transparency International, the Global 3 Entrepreneurship Monitor, and the Global Gender Gap Index, among others. The Global Women Entrepreneur Leaders Scorecard identifies impediments to high-impact female entrepreneurship in 31 economies. High-impact female entrepreneurs are defined as those “who own and operate businesses that are innovative and growth oriented” (Aidis, Weeks, and Anacker 2015). A composite index of 21 indicators, the Scorecard highlights key aspects of an economy’s institutional and business environment, gender access issues and individual-level entrepreneurial characteristics. The Global Entrepreneurship Index (GEI), developed by the Global Entrepreneurship and Development Institute (GEDI) in 2011, is another composite index of entrepreneurial activity. The GEDI launched the Female Entrepreneurship Index (FEI) in 2013. It measures the global development of high-potential female entrepreneurs, who are defined as “women who own and operate businesses that are innovative, market expanding, and export-oriented” (Terjesen and Lloyd 2015, 4). The FEI consists of 23 gender-specific variables that inform three sub-indices: (i) entrepreneurial environment, including equal rights and market size, secondary education, business risk, and access to childcare; (ii) entrepreneurial eco-system, including support and training for small and medium-size businesses and labor force parity; and (iii) entrepreneurial aspirations, including expenditure on research and development and external financing. A comparative analysis of the existing data sets devoted to global entrepreneurship shows certain limitations. Most existing data sets and indicators are based on data which are largely self-reported by individuals or by domestic entrepreneurship experts. As a result, some of these data are reported sporadically or based on perceptions. Several indicators among the reviewed data sets represent composite indices that aggregate a set of different sources and other data points. A further limitation is the wide range of definitions of female entrepreneurship. These definitions can vary—which can create issues of comparability among data sets. In addition, the various data sets use different input data about factors facilitating or impeding the development of entrepreneurship and output data measuring female entrepreneurial activity. A comparative analysis of the existing data sets, with a focus on their input and output indicators, is presented in Table A1 in the appendix. The existing data sets related to female entrepreneurship usually apply a general approach that covers various types of business entities. They do not differentiate between sole proprietorships, LLCs or corporate organizations. However, several studies point to the importance of a differentiated approach to female entrepreneurship (Aidis and Weeks 2016; Estrin and Mickiewicz 2011; Terjesen and Lloyd 2015). For example, based on their analysis of the Female Entrepreneurship Index calculated for 77 economies, Terjesen and Lloyd (2015) suggest that “although all forms of female entrepreneurship are important, more sophisticated ventures require additional resources, skills, and aspirations” (2015, 5). A survey of high-tech firms conducted in 2004 by the Kauffman Foundation provides substantial evidence of the existence of discrepancies in organizational form between male and female business owners. Robb and Coleman (2009) conclude that women-owned high-tech firms are more likely to be organized as sole proprietorships or partnerships during their start-up year (38.7 percent versus 24.9 percent for firms owned by men) and are less likely to be organized as either corporations or as LLCs (61.3 percent versus 75.1 percent). Even at the initiation stage, male entrepreneurs tend to develop larger and more sophisticated businesses than women. In this respect, disaggregated data on the organizational form of women-owned businesses could provide new insights into lower levels of participation by women in growth-oriented entrepreneurship. 4 3. Methodology and Data Collection The Entrepreneurship Database was launched in 2007 to benchmark formal entrepreneurial activity across economies. An advantage of the Entrepreneurship Database is its reliance on official statistics that come mostly from business registries and national statistical agencies. The Entrepreneurship Database defines an entrepreneur as “any economic unit of the formal sector incorporated as a legal entity and registered in a public registry, which is capable, in its own right, of incurring liabilities and of engaging in economic activities and transactions with other entities” (Ács, Desai, and Klapper 2008, 267). In contrast to many entrepreneurship indices, the Entrepreneurship Database does not include the informal sector, owing primarily to the difficulties associated with quantifying the number of firms that comprise it. Considering that statistical agencies around the world define business entities in various ways, the Entrepreneurship Database takes into account their legal form. The standard unit of measurement provides comparable data on entrepreneurial activity across economies. The Entrepreneurship Database helps clarify the relationship between new firm registration, the regulatory environment, and economic growth. Research using the Entrepreneurship Database shows a significant relationship between the level of cost, time, and procedures required to start a business and new firm registration (Divanbeigi and Ramalho 2015; Klapper, Lewin, and Quesada Delgado 2009; Klapper and Love 2010). A recent study, for example, shows that an improvement of 10 percentage points in the overall measure of business regulation (Doing Business distance to frontier score) is linked to an increase of around 0.6 new businesses per 1,000 adults (Divanbeigi and Ramalho 2015, 8). The Entrepreneurship Database also helps explain the relationship between entrepreneurship and financial development, including the impact of financial crises on the formation of new businesses in the economy (Klapper and Love 2011; Klapper, Meunier, and Diniz 2014). The 2017 edition of the Entrepreneurship Database contains annual data for 143 economies on the number of limited liability companies (LLCs) registered (both new and total) between 2006 and 2016. The Entrepreneurship Database was expanded in 2017 to include a gender dimension of business ownership. To do so, it combines comparable cross-country data on new businesses registered in those economies where national statistics include sex-disaggregated data. Furthermore, recognizing the importance of a differentiated approach to entrepreneurship in terms of organizational form, the data on female and male business owners are collected at two levels—LLCs and sole proprietors. This allows for in-depth analysis of gender differences in business entry worldwide. The Entrepreneurship Database facilitates both a greater understanding of the dynamics of new business registration around the world and in-depth analysis of the relationship between gender and entrepreneurship at various organizational levels. To ensure cross-country comparability, the Entrepreneurship Database employs a consistent unit of measurement that is applicable and available among the diverse sample of participating economies. The Entrepreneurship Database and World Bank Group’s Doing Business jointly developed a data collection methodology to measure entrepreneurial activity systematically. The primary sources of information for the Entrepreneurship Database are national business registries. In cases where the business registry is unable to provide the data, alternatives sources—such as statistical agencies, tax and labor agencies, ministries of economy and chambers of commerce—are used. The data collection process involves telephone interviews and email correspondence with business registries. The gender-specific indicators used in the Entrepreneurship Database include the percentage of new female LLC owners, the percentage of new female sole proprietors and the percentage of new LLCs with female ownership. Table A2 in the appendix presents sources of sex-disaggregated data. The OLS regression analysis presented in this study uses two dependent variables: the percentage of new female LLC owners and the percentage of new female sole proprietors. Using these variables allows for the identification of 5 particular effects that institutional factors have on female entrepreneurship at different levels. The independent variables include the Women, Business, and the Law measure of legal rights disparities, years of women’s education, and account ownership. The control variable used is gross national income per capita. The descriptions and sources for the dependent and independent variables are included in Table A3 in the appendix. The Entrepreneurship Database uses the World Bank’s groupings of economies based on income. All economies are divided into three income groupings: low income, middle income and high income. The indicator used for these groupings is gross national income per capita in U.S. dollars, converted from local currency (World Bank 2017). For geographic units, the Entrepreneurship Database also uses the World Bank’s regional groupings. Under this classification, participant economies fall into seven regions: East Asia and the Pacific (EAP), Europe and Central Asia (ECA), Latin America and the Caribbean (LAC), Middle East and North Africa (MENA), OECD high-income economies (OECD), South Asia (SAS) and Sub-Saharan Africa (SSA). Of the 143 economies participating in the Entrepreneurship Database, 44 economies provided sex- disaggregated data on female and male entrepreneurship. Of these, 15 economies are classified as high income, 24 as middle income, and five as low income. They represent diverse cultural, political, institutional, geographic and socioeconomic environments. Table A4 in the appendix places the 44 economies that provided sex-disaggregated data into 21 groups, determined by their region and gender indicators. Of the 44 economies providing sex-disaggregated data, only 22 provided data on both new female LLC owners and new female sole proprietors. In seven economies, sex-disaggregated data were limited to the number of new female LLC owners and did not include data on sole proprietors. Conversely, 11 economies provided the data on the number of new female sole proprietors but did not provide data on female LLC owners. In one economy, Albania, sex-disaggregated data included the number of LLCs with at least one female business owner, but did not include either the number of new female LLC owners or new female sole proprietors. For 2016, observations related to new female LLC owners include 32 economies, while observations related to new female sole proprietors cover 35 economies. A limited number of economies provided panel data on the number of new female LLC owners and sole proprietors over the last five years. Specifically, 24 economies reported panel data on the number of new female LLC owners between 2012 and 2016, while 28 economies provided the data on female sole proprietors for the same period. The insufficient coverage of sex-disaggregated data limits empirical analysis of female business entry and suggests the need to expand the collection of time-series data on female entrepreneurship over the coming years. The regression analysis is based on indicators calculated for 2016. The descriptive statistics, including the number of observations available for each indicator, are included in Table A5 in the appendix. 6 4. Comparative Analysis of the Gap between Female and Male Entrepreneurs The economies examined in this study show substantial variations in the percentage of new female business owners at the level of both LLCs and sole proprietorships. Figure 1 shows the percentage of new female LLC owners calculated for 32 economies where official business registries provided the relevant data. Among these economies, the percentage of new female LLC owners in 2016 ranges from a high of 39.1 percent in Romania to a low of 1.2 percent in Afghanistan. In most economies (87 percent of those included in the sample), less than one-third of new LLC owners were women in 2016. All 32 economies studied exhibit significant gender gaps in business entry at the level of LLCs. Furthermore, in all but one economy (Estonia), less than 1 percent of the female adult population are new LLC owners. In Estonia, 1.2 percent of the female adult population registered a new LLC in 2016. Figure 1: Percentage and number of new female and male LLC owners in 2016 100 New LLC owners, by gender (%) 90 80 59,196 332,884 24,518 10,663 207,951 76,113 63,112 2,488 18,793 18,184 101 70 73,085 15,933 8,705 1,256 5,132 53,477 825 18,504 320 212 14,900 13,642 80,100 3,459 117,886 5,530 39,535 90,901 8,377 60 913 7,093 50 40 30 38,050 Nigeria 162,372 12,705 Chile 36,119 Malaysia 26,899 5,336 Mexico 85,552 1,202 20 Georgia 7,102 59 Korea, Rep. 23,070 7526 Belarus 3,186 Mauritius 1,690 Zambia 4,862 Morocco 11,516 459 292 110 Germany 13,791 Netherlands 3,770 70 Jordan 1,017 Pakistan 2,635 Oman 2,402 United Arab Emirates 11,365 Kosovo 740 Nepal 4,834 Turkey 8,775 10 Saudi Arabia 794 Mauritania 81 Afghanistan 89 0 Brunei Darussalam Samoa Estonia Jamaica Vanuatu Romania Taiwan, China Dominica St. Lucia Kazakhstan New female LLC owners New male LLC owners Source: Entrepreneurship Database. Note: The labels show the absolute numbers of new female LLC owners and new male LLC owners. Thirty-five economies provided data on female-owned sole proprietorships for 2016. Figure 2 shows the proportion of new female sole proprietors in these economies. The percentage of new female sole proprietors ranges from a high of 60.7 percent in Austria to a low of 0.7 percent in Afghanistan. Only three economies—Austria, the Philippines, and Estonia—recorded a similar or higher number of female-owned sole proprietorships than male-owned sole proprietorships in 2016. 7 Figure 2: Percentage and number of new female and male sole proprietors in 2016 100 New sole proprietors, 90 13,701 132,465 168,252 17,988 1,060 80 219,709 3,888 113,622 12,217 1,716 285,078 185,556 152,133 by gender (%) 21,971 17,200 73,478 51,840 1,478 19,367 101,717 8,650 19,952 1,373 70 17,115 8,934 7,470 4,861 2,582 30,677 1,134 2,854 7,769 73,504 39,960 60 5,809 50 40 21,143 149,760 Malaysia 136,492 15,277 1,056 30 France 143,464 3,450 1,377 Germany 156,216 Poland 101,332 Netherlands 67,686 8,553 Belarus 12,223 Nigeria 37,188 Croatia 25,655 Italy 73,243 Taiwan, China 9,161 Chile 8,946 Georgia 3,886 Azerbaijan 36,234 860 20 Mauritius 3,304 Senegal 6,977 Zambia 2,505 Kosovo 1,574 Oman 5,401 Suriname 592 United Arab Emirates 5,387 Mexico 753 Jordan 244 10 Mauritania 492 Saudi Arabia4,212 Turkey2,213 Nepal 937 Afghanistan 42 0 Estonia Tajikistan Philippines Brunei Darussalam Austria Jamaica Rwanda Romania New female sole proprietors New male sole proprietors Source: Entrepreneurship Database. Note: The labels show the absolute numbers of new female- and male-owned sole proprietorships registered in 2016. Gender gaps in female business entry and ownership are associated with substantial losses to national income and economic development at both the national and regional levels. While the data show that female entrepreneurs choose to start their firms as sole proprietorships more often than LLCs, there was a significant gender gap between female and male entrepreneurs in 2016. The average proportion of new female LLC owners and sole proprietors in three income groups are shown in figure 3. Low-income economies are characterized by the largest gaps in female business ownership at the level of both LLC owners and sole proprietors. Figure 3: Average income-group percentages of new female LLC owners and sole proprietors in 2016 40 Average share of new female LLC owners and sole proprietors (%) 35 30 25 20 15 10 5 0 Low income Middle income High income New female LLC owners New female sole proprietors Source: Entrepreneurship Database. 8 The gender gap in business ownership is observed in every income group. However, women in low-income economies are proportionately less likely to start businesses at the level of either LLCs or sole proprietorships than those in middle- and high-income economies. The significant gender gaps observed in low-income economies suggest that few women are able to start new businesses. One of the biggest gaps can be observed in the Middle East and North Africa region, where only one out of four women participates in the labor force (Gatti et al. 2013:10). Despite a marginal increase in women’s participation in economic activities in recent years, it is estimated that it would take 150 years for the economies of the Middle East and North Africa to reach the current world average for female labor force participation (Gatti et al. 2013, 10). The Entrepreneurship Database provides further evidence of the substantial gender gap in female entrepreneurship in the Middle East and North Africa region. Over the past five years, however, the number of women-owned businesses has risen steadily in some economies, including Morocco, Jordan and the United Arab Emirates. Figure 4 depicts the proportion of new female business owners in 2016 in the five economies in the Middle East and North Africa region included in this study. Morocco had the largest proportion of new female LLC owners (17.7 percent), followed by Jordan (15.5 percent) and Oman (15 percent). Figure 4: The level of female business ownership in select economies in the Middle East and North Africa in 2016 20 30 Share of new female LLC owners Share of new LLCs with at least 18 16 25 one female owner (%) 14 20 12 10 15 8 6 10 (%) 4 5 2 0 0 Source: Entrepreneurship Database. Levels of female business ownership are relatively low in the Middle East and North Africa region compared to those in the OECD high-income group. Women entrepreneurs in the Middle East and North Africa face barriers including financial constraints and a lack of female-friendly entrepreneurship policies. For example, women in the Middle East are half as likely as men to have a formal bank account (Demirgüç- Kunt et al. 2015). Furthermore, women business owners across the region identify similar challenges to doing business, such as accessing financial management skills training, finding and keeping good employees and securing capital (CAWTAR and IFC 2007, 7). Inequalities surrounding legal rights also hamper the participation rate of female entrepreneurs. Gender legal disparities are higher than the estimated world average in the Middle East and North Africa (Iqbal et al. 2016, 11). Of the regional economies included in the Entrepreneurship Database, Morocco has the lowest measure of legal rights disparities; Saudi Arabia has the highest (Iqbal et al. 2016, 13). Indeed, legal rights disparities correspond to differences in female business ownership in these economies. 9 The gender gap in business ownership precludes the economies of the Middle East and North Africa from benefiting from the gains associated with female entrepreneurship, including job creation and economic development. A “full-potential” scenario—in which women participate in the economy at the same rate as men—would add an estimated $2.7 trillion, or 47 percent, to annual regional GDP by 2025 (Woetzel et al. 2015, 34–35). This underscores the importance of developing policies and programs that support female entrepreneurship. Of the 44 economies that provided related sex-disaggregated data, 24 provided data on new female LLC owners between 2012 and 2016 and 28 reported the data on new female sole proprietors for the same period. These data show that—in some economies—there was a significant increase in the percentage of new female LLC owners and sole proprietors over this five-year period. Figure 5 shows that the gender gap in business ownership narrowed in Azerbaijan, Belarus, Georgia, Kosovo, Nepal, Oman, and Romania between 2012 and 2016. The largest increase in the proportion of female LLC ownership is reported in Nepal, where new female LLC ownership rose from 4 percent in 2012 to 11 percent in 2016. Conversely, a decreasing number of new female LLC owners is reported in economies including Afghanistan, Saudi Arabia and Turkey. In Saudi Arabia and Turkey, a decrease in the number of new female LLC owners was accompanied by an increase in the number of newly-registered LLCs compared to 2012. An increasing proportion of new female sole proprietors is observed in economies including Azerbaijan, Georgia, Kosovo, Nepal and Oman, where the gender gap narrowed compared to 2012. The largest overall increase is observed in Kosovo where the proportion of new female business owners rose from 9 percent in 2012 to 25 percent in 2016. Figure 5: Economies with the most significant growth in the proportion of new female business owners 45 35 3,886 33,708 38,050 3,492 New female sole proprietors (%) 40 32,267 31,795 29,108 3,151 New female LLC owners (%) 30 2,077 2,476 19,456 36,234 35 19,373 25 3,351 5,401 3,497 7,102 14,705 30 5,839 14,004 4,197 4,957 20 2,857 1,574 25 6,109 3,053 3,774 3,186 1,609 3,938 4,415 740 20 15 2,340 381 1,265 1,220 130 257 279 15 10 720 719 10 582 937 3,217 3,640 4,834 5 5 1,181 249 1,221 150 0 0 2012 2013 2014 2015 2016 2012 2013 2014 2015 2016 Kosovo Nepal Georgia Nepal Kosovo Oman Belarus Romania Georgia Azerbaijan Source: Entrepreneurship Database. Note: The labels show the absolute numbers of new female LLC owners and sole proprietors. 10 5. Institutions and Female Entrepreneurship The new data on the number of female LLC owners and sole proprietors provide a snapshot of business ownership demographics in various economies. This measure of female entrepreneurship can be analyzed with other indicators that can influence female entrepreneurship. The World Bank’s Women, Business, and the Law (WBL) database and the Global Findex database, for example, provide additional information on institutions that help to contextualize the observed variations in the proportion of new female LLC owners and sole proprietors across economies. Gender gaps in female business entry reflect disparities in women’s legal rights. In particular, they signal other inequalities in access to institutions, use of property, getting a job, providing incentives to work, going to court, building credit and protecting women from violence. Currently, the Women, Business, and the Law database captures aspects of gender inequality in 190 economies around the world. Using these data, the Women, Business, and the Law database constructs a measure of legal gender disparities. A recent study finds that a high degree of legal gender disparities “is negatively associated with a wide range of outcomes, including years of education of women relative to men, labor force participation rates of women relative to men, proportion of women top managers, proportion of women in parliament, percentage of women that borrowed from a financial institution relative to men and child mortality rates” (Iqbal et al., 21). In addition, the Entrepreneurship Database identifies another important gender outcome of legal disparities across economies. Figure 6 shows that the Women, Business, and the Law measure of legal disparities is negatively correlated with the proportion of new female LLC owners and sole proprietors, implying that such disparities constitute a significant barrier for the development of female entrepreneurship. Figure 6: The WBL measure of legal disparities and the level of female entrepreneurial activity Sources: Entrepreneurship Database; adapted from Iqbal et al. (2016). Note: The regression results are presented in tables A6 and A7. The models are based on 30 and 35 observations, respectively. The relationship is significant at the 1 percent level after controlling for income per capita. Economies with more gender disparities are also characterized by relatively low numbers of new female entrepreneurs at the level of both LLCs and sole proprietorships. Importantly, the negative effect of legal rights disparities tends to be more burdensome for female sole proprietors. Again, most economies that participated in the study show gender disparities in legal rights that are important for entrepreneurship, such as registering a business, applying for a passport, obtaining a national identification card, traveling outside the home, opening a bank account, legally administering property, and acquiring equal property rights 11 without male consent. Although these gender disparities in legal rights affect all women, they are even more restrictive for female entrepreneurs who want to start new businesses. Overall, the data show that gender equality in legal rights is critical for fostering female entrepreneurship. Specifically, equal legal rights facilitate access for female business owners to economic resources and finance. Many studies highlight the benefits of formal schooling to entrepreneurship and business performance (Fayolle and Kyrö 2008; Islam and Amin 2016; Iversen, Malchow-Møller, and Sørensen 2016; Kobeissi 2010; Van Der Sluis, Van Praag and Vijverberg 2008). Importantly, there is evidence that female entrepreneurs benefit more from education than their male counterparts (Van Der Sluis, Van Praag and Vijverberg 2008, 797). Several factors explain the positive relationship between education and entrepreneurship. First, starting and running a successful business requires start-up skills on the part of entrepreneurs. Second, national education systems play a critical role in the creation of high-quality human capital and the formation of positive attitudes toward entrepreneurship. As such, human capital is an important determinant of entrepreneurial development. Educated and experienced entrepreneurs are better prepared to face challenges that arise in rapidly changing and highly-competitive business environments. The entrepreneur’s level of education is of particular importance for more sophisticated forms of entrepreneurial activity. Also, high-quality human resources are more likely to create innovative high- growth businesses in the most technologically-advanced industries. In this respect, Gakidou et al. (2010) show that “the substantial increase in education, especially of women, and the reversal of the gender gap have important implications for the status and roles of women in society.” Importantly, more developed economies with higher levels of education are also characterized by higher rates of female participation in the labor force. Formal education can develop the knowledge and skills in women required to run their own businesses. To identify links between formal education and female business ownership, this study relies on the Institute for the Health Metrics and Evaluation (IHME) Database, which contains information about global educational attainment spanning the last 50 years. The database provides estimates of average years of educational attainment per capita by year (1970-2015), gender and age group for 188 economies. The study uses age-standardized and population-weighted estimates for females over 25 years of age (Institute for Health Metrics and Evaluation 2017). Figure 7 demonstrates that a higher mean number of years of education is positively associated with the level of female entrepreneurial activity. Figure 7: Years of education of women and the level of female entrepreneurial activity Sources: Entrepreneurship Database; adapted from the Institute for Health Metrics and Evaluation (2017). 12 Note: The regression results are presented in tables A6 and A7. The models are based on 31 and 33 observations, respectively. The relationship is significant at the 1 percent level after controlling for income per capita. This analysis suggests that economies where women have a higher number of years of education are also characterized by relatively high numbers of new female entrepreneurs at the level of both LLCs and sole proprietorships. Importantly, the positive effect of education is slightly stronger for female sole proprietors. Overall, the data show that education is critical for fostering female entrepreneurship. The educational attainment variable also captures the quality of entrepreneurs; there is a broad consensus that individuals with a higher number of years of schooling are more capable of starting more sophisticated businesses in the most technologically-advanced industries. The positive relationship between educational attainment and business ownership is observed in all regions and income groups, suggesting that equal access to education is critically important for the development of female entrepreneurial activity. In this context, narrowing the gender gap in education also contributes to narrowing the gap between male and female business owners. The Global Findex database provides evidence that large gender gaps in access to capital, bank accounts and finance persist in many economies despite progress in expanding financial inclusion. Importantly, a significant number of women remain unbanked globally. In 2011, only an estimated 47 percent of women had a bank account compared to 54 percent of men; by 2014, these numbers had risen, to 58 percent and 65 percent, respectively (Demirgüç-Kunt et al. 2015). However, the same 7 percentage point gender gap persisted. Furthermore, large disparities exist in account ownership across economies in different income groups. In developing economies, this gap was estimated at 9 percentage points; in OECD high-income economies it is virtually nonexistent (Demirgüç-Kunt et al. 2015). At the same time, Figure 8 shows that access to bank accounts as savings and payment mechanisms is positively associated with female business ownership. Figure 8: Access to financial institution accounts and the level of female entrepreneurial activity Sources: Entrepreneurship Database; Global Findex Database (http://datatopics.worldbank.org/financialinclusion/), World Bank. Note: The regression results are presented in tables A6 and A7. The models are based on 25 and 32 observations, respectively. The relationship is significant at the 1 percent level after controlling for income per capita. 13 This analysis suggests that the removal of barriers to account ownership tends to benefit the development of female entrepreneurial activity at the level of both LLCs and sole proprietorships. Importantly, the positive effect of account ownership is stronger for female sole proprietors. Considering the existing disparities in account ownership across different income groups, it can be argued that women in less- developed economies would have greater entrepreneurial advantages from easier access to bank accounts. Another obstacle that is particularly restrictive for female entrepreneurial activity is access to the economic resources needed to start a new business, including capital and finance (Estrin and Mickiewicz 2011; Brush and Cooper 2012). Global Findex data show that the problem of insufficient access to formal loans persists in many economies worldwide. In 2014, women in OECD high-income economies were about 20 percent less likely than their male counterparts to report having borrowed from a financial institution in the past 12 months (Demirgüç-Kunt et al. 2015). However, developing economies were characterized by the overall low level of formal credit for both men and women (Demirgüç-Kunt et al. 2015). Policies that enhance financial inclusion are beneficial for the development of entrepreneurship. Comparing data from the Entrepreneurship Database with that from the relevant Global Findex database indicators allows for the identification of links between women’s access to loans from financial institutions and the percentage of new female LLC owners and sole proprietors. Figure 9 demonstrates that there is a positive relationship between an economy’s female business ownership and the percentage of women who borrowed from a financial institution within the past 12 months. Figure 9: Access to borrowing from financial institutions and female entrepreneurial activity Sources: World Bank Entrepreneurship Database; Global Findex Database. Note: The regression results are presented in tables A6 and A7. The models are based on 25 and 34 observations, respectively. The relationship for female LLC owners is significant at the 5 percent level after controlling for income per capita. This analysis suggests that the availability of formal loans to women who start their own businesses can be beneficial for the development of female entrepreneurship at the level of both LLCs and sole proprietorships. Importantly, the positive effect of borrowing from financial institutions is stronger for female sole proprietors. However, a number of economies are characterized by extremely low levels of access to capital for women. In such cases, female entrepreneurs must often rely on informal social networks for resource acquisition; such networks tend to be male-dominated (Aidis et al. 2008; Estrin and Mickiewicz 2011; Krylova 2016). The importance of public policies aimed at expanding women’s financial inclusion is underscored by this point. 14 6. Conclusion Comparisons of gender-neutral and gender-specific indicators of entrepreneurship highlight the importance of collecting data on female business owners. The systematic and consistent collection of such data is crucial for developing meaningful, evidence-based recommendations and public policies related to women’s economic empowerment and their contribution to international development. The lack of sex- disaggregated data in many economies limits the understanding of the issues surrounding female entrepreneurship. As previously stated, a number of national statistics authorities do not compile sex- disaggregated data on entrepreneurial activity. This study suggests that the gender gap in business ownership remains high in many economies around the world. In the vast majority of the analyzed economies, less than one-third of new LLC owners are women. Although sole proprietorships are more frequently used by female entrepreneurs, only three economies have similar or equal number of women business owners relative to men. The gap in female entrepreneurship is especially apparent in low-income economies where women are much less likely than men to start a new business. This suggests a need to intensify efforts to boost female business ownership. Progress in this area should be tracked closely over the coming years through expanding the collection of standardized and country-comparable sex-disaggregated data on business entry and ownership within the Entrepreneurship Database. This study also explores interlinked and reinforcing factors that impact female entrepreneurship, including women’s financial inclusion, legal rights disparities and the gender gap in education. This analysis shows that national economies should prioritize the expansion of financial inclusion, equal legal rights and access to education for women. The elimination of gender disparities in these spheres also contributes to the narrowing of the gender gap in entrepreneurship. Sustainable Development Goal (SDG) 5, which targets all forms of discrimination against women and girls, provides an opportunity to tackle these issues holistically. The achievement of SDG 5 is critically important. Without boosting women’s economic participation and moving towards gender equality, it will be significantly more challenging for economies to achieve other SDGs or the 2030 Agenda for Sustainable Development and, most importantly, to reach their full economic and social potential. In this respect, further research is needed to provide policy-relevant evidence on female entrepreneurship. Such research could measure female directorship in addition to female ownership. The development of solutions to reduce the existing gender gap in business formation would also require in-depth analysis of business demography, characteristics of women-owned businesses, and determinants of their growth. 15 APPENDIX Table A1: Data Sets related to female entrepreneurship Data set and Type of Definition of Examples of input Examples of output coverage in data female indicators indicators latest report entrepreneurship GEM Special Primary Any attempt at Surveys covering following  Female TEA rates and Report on data new business or issues, by gender: female/male ratio Women’s new venture  Fear of failure  Intentions of women to start Entrepreneursh creation  Capability perceptions a business within the next 3 ip  Opportunity perceptions years (83 economies in  Personal connections 2015) (knowledge of entrepreneurs) OECD Gender Primary Women who own  Attitudes toward  Share of sole-proprietor Data Portal data and work in their entrepreneurial risk, by enterprises owned by women (35 OECD own business, gender  Earnings gap in self- economies, including  Feasibility of self- employment partner unincorporated employment, by gender  Share of employed who are economies in businesses and  Share of the population employers 2016) own-account who report borrowing money  Share of women inventors workers to start a business, by gender  Access to training and money to start a business, by gender Evidence and Primary Women who have  Proportion of the  Percentage of firms defined Data for data direct control over population with access to by size owned by women Gender an enterprise they credit, by gender  Proportion of employed Equality own alone or with  Proportion of adult who are own-account workers (EDGE) other individuals population owning land, by (self-employed) (7 pilot gender economies in  Gender gap in wages 2015)  Proportion of children under age 3 in formal care  Gender parity index of the enrolment education Global Women Secondary High-impact  Law business regulations  Female start-ups ratio Entrepreneur data women  Access to education  College educated start-ups Leaders entrepreneurs who  Access to banks  Growth-oriented start-ups Scorecard own and operate  Equal legal rights  Market expanding start-ups (31 economies in businesses that are  Access to small and 2015) innovative and medium-size enterprise growth oriented training Female Secondary Women who own  Equal rights and market  Entrepreneurship ratio that Entrepreneursh data and run size measures the ratio of female to ip Index businesses that are  Secondary education male TEA (77 economies in innovative,  Business risk 2015) market expanding  Access to childcare and export-  SME support and training oriented  Labor force parity  Expenditure on research and development, financing 16 Table A2: Sources of Sex-Disaggregated Data on Business Ownership Economy Data Source Afghanistan Afghanistan Central Business Registry and Intellectual Property Albania Institute of Statistics (INSTAT) Austria Austrian Institute for Small and Medium Enterprises Research Azerbaijan Ministry of Taxes Belarus Ministry of Justice of Belarus Brunei Darussalam Registry of Companies and Business Names Division Chile Ministry of Economy, Development, and Tourism Croatia Bureau of Statistics of the Ministry of Justice Dominica Companies and Intellectual Property Office Estonia Centre of Registers and Information Systems France National Institute of Statistics and Economic Studies Georgia National Statistics Office of Georgia (GEOSTAT) Germany Federal Statistical Office Italy Italian Union of Chambers of Commerce, Industry, Crafts and Agriculture Jamaica Companies Office of Jamaica Jordan Companies Control Department Kazakhstan Committee on Statistics of the Ministry of National Economy Korea, Rep. Ministry of Strategy and Finance Kosovo Kosovo Business Registration Agency Malaysia Companies Commission of Malaysia Mauritania Single Window Unit Mauritius Corporate and Business Registration Department Mexico Ministry of Economy Morocco Moroccan Office of Industrial and Commercial Property Nepal Office of the Company Registrar Netherlands Netherlands Chamber of Commerce Nigeria Corporate Affairs Commission Oman National Center for Statistics and Information Pakistan Securities and Exchange Commission Philippines Securities and Exchange Commission Poland Ministry of Economic Development Romania National Trade Register Office Rwanda Rwanda Development Board Samoa Ministry of Commerce Industry and Labour Saudi Arabia Ministry of Commerce and Investment Senegal National Agency for Statistics and Demography St. Lucia Registry of Companies Suriname Chamber of Commerce and Industry Taiwan, China Department of Commerce of the Ministry of Economic Affairs 17 Economy Data Source Tajikistan Statistics Agency under the President of the Republic of Tajikistan Turkey Directorate of Internal Trade of the Ministry of Customs and Trade United Arab Emirates Federal Competitiveness and Statistics Authority Vanuatu Asian Development Bank Zambia Patents and Companies Registration Agency 18 Table A3: Variable Description and Source Internal source Name Description Source Percentage of new female The number of female business owners Entrepreneurship Database LLC owners of new limited liability companies over the total number of business owners of new limited liability companies Percentage of new female sole The number of new female sole Entrepreneurship Database proprietors proprietors over the total number of new sole proprietors Percentage of new LLCs with The number of newly registered limited Entrepreneurship Database female ownership liability companies with at least one female business owner over the total number of newly registered limited liability companies External sources Name Description Source The Women, Business, and A composite indicator of legal The Women, Business, and the Law the Law (WBL) measure of disparities faced by women in seven Database legal gender disparities areas: accessing institutions, using property, getting a job, providing incentives to work, going to court, building credit, and protecting women from violence Years of education of women Mean number of years of education by The Health Metrics and Evaluation aged over 25 age and sex estimated based on (IHME) Database censuses and nationally representative surveys Account ownership, by The percentage of women aged over 15 Global Findex Database women with an account Access to formal loans, by The percentage of women aged over 15 Global Findex Database women who borrowed from a financial institution within the past 12 months Gross national income per The U.S. dollar value of a country's World Development Indicators capita final income in a year, divided by its population 19 Table A4: Economies with sex-disaggregated data grouped according to their region and gender- specific indicators in 2016 Regions Indicator ECA EAP LAC MNA OECD SSA SAS Number of Belarus; Brunei Dominica; Jordan; Chile; Mauritania; Afghanistan; new female Georgia; Darussalam; Jamaica; Morocco; Estonia; Mauritius; Pakistan LLC owners Kazakhstan; Malaysia; Mexico; Oman; Germany; Nigeria; Kosovo; Nepal; St. Lucia Saudia Korea, Rep.; Zambia Romania; Samoa; Arabia; Netherlands Turkey Taiwan, United Arab China; Emirates Vanuatu Number of Albania; Brunei Jamaica; Jordan; Chile; Mauritius; Afghanistan; new LLCs Azerbaijan; Darussalam; Mexico Morocco Estonia; Nigeria; Pakistan with at least Belarus; Malaysia; Oman; Italy Zambia one female Georgia; Nepal; Saudia owner Kazakhstan; Taiwan, Arabia; Kosovo; China; United Arab Romania; Vanuatu Emirates Tajikistan; Turkey Number of Azerbaijan; Brunei Jamaica; Jordan; Austria; Mauritania; Afghanistan new female Belarus; Darussalam; Mexico; Oman; Chile; Mauritius; sole Croatia; Malaysia; Suriname Saudia Estonia; Nigeria; proprietors Georgia; Nepal; Arabia; France; Rwanda; Kosovo; Taiwan, United Arab Germany; Senegal; Romania; China; Emirates Italy; Zambia Tajikistan; Philippines Netherlands; Turkey Poland Source: Entrepreneurship Database. 20 Table A5: Descriptive statistics Variable Number of Mean Std. Deviation Min. Max. Observations Percentage of new female LLC 32 22.4 9.7 1.2 39.1 owners Percentage of new female sole 35 30.8 13.8 0.7 60.7 proprietors The Women, Business, and the 42 19.0 10.9 5.9 49.9 Law (WBL) measure of legal gender disparities Years of education of women 42 8.7 3.8 0.7 13.3 aged over 25 Account ownership, by gender 36 54.9 30.4 4.0 99.0 Access to formal loans, by 36 10.6 4.9 0.0 20.0 gender Gross national income per 44 12,981.9 14,045.6 630.0 48,940.0 capita 21 Table A6: OLS regressions with the percentage of new female LLC owners and institutional factors Percentage of new female LLC Number of Adjusted R-squired owners observations The Women, Business, and the -0.467*** (0.124) 30 0.303 Law (WBL) measure of legal gender disparities Years of education of women 1.889*** (0.315) 31 0.541 aged over 25 Account ownership by women 0.354*** (0.076) 25 0.455 Access to formal loans by 1.184** (0.439) 25 0.190 women Standard errors in brackets. *p < 0.1 **p<0.05 ***p<0.01 Sources: The data were derived from the Entrepreneurship Database, the Women, Business, the Institute for Health Metrics and Evaluation Database, and the Law Database, and Global Findex Database. Note: ***(**) (*) denotes significance at the 1 (5) (10) percent level. Standard errors reported in parentheses. This table reports results from OLS regressions of new female business owners registered in 2016 to such institutional indicators as women’s legal rights disparities, access to education, account ownership, and access to formal loans. The estimations reported control for gross national income per capita. 22 Table A7: OLS regressions with the percentage of new female sole proprietors and institutional factors Percentage of new female sole Numbers of Adjusted R-squired proprietors observations The Women, Business, and the -0.605*** (0.179) 35 0.265 Law (WBL) measure of legal gender disparities Years of education of women 2.340*** (0.511) 33 0.408 aged over 25 Account ownership by women 0.336*** (0.114) 32 0.223 Access to formal loans by 0.748 (0.553) 32 0.050 women Standard errors in brackets. *p < 0.1 **p<0.05 ***p<0.01 Sources: The data were derived from the Entrepreneurship Database, the Women, Business, the Institute for Health Metrics and Evaluation Database, and the Law Database, and Global Findex Database. Note: ***(**) (*) denotes significance at the 1 (5) (10) percent level. Standard errors reported in parentheses. This table reports results from OLS regressions of new female business owners registered in 2016 to such institutional indicators as women’s legal rights disparities, access to education, account ownership, and access to formal loans. The estimations reported control for gross national income per capita. 23 References Ács, Z. J., L. Szerb, E. Autio, and A. Lloyd. 2017. Global Entrepreneurship Index 2017. Washington, D.C.: The Global Entrepreneurship and Development Institute. Ács, Z. J., S. Desai, and L. Klapper. 2008. What Does “Entrepreneurship” Data Really Show? Small Business Economics 31: 265–81. Aidis, R., S. Estrin, and T. Mickiewicz. 2008. “Institutions and Entrepreneurship Development in Russia.” Journal of Business Venturing 23 (6): 656–72. Aidis, R., and J. Weeks. 2016. “Mapping the Gendered Ecosystem: The Evolution of Measurement Tools for Comparative High-Impact Female Entrepreneur Development.” International Journal of Gender and Entrepreneurship 8 (4): 330–52. Aidis, R., J. Weeks, and K. Anacker. 2015. Global Women Entrepreneur Leaders Scorecard 2015: From Awareness to Action. ACG Inc. http://i.dell.com/sites/doccontent/corporate/secure/en/Documents/2015- GWEL-Scorecard-Executive-Summary.pdf. Brush, C. G., and S. Y. Cooper. 2012. “Female Entrepreneurship and Economic Development: An International Perspective.” Entrepreneurship and Regional Development 24 (1–2): 1–6. CAWTAR (Center of Arab Women for Training and Research) and IFC (International Finance Corporation). 2007. “Women Entrepreneurs in the Middle East and North Africa: Characteristics, Contributions and Challenges.” CAWTAR, Tunis and IFC, Washington, DC. Cuberes, D., and M. Teignier. 2015. “Aggregate Effects of Gender Gaps in the Labor Market: A Quantitative Estimate.” Economics Working Paper E14/308, University of Barcelona, Barcelona. http://www.marcteignier.com/research_files/GGLMAP_CT.pdf. Demirgüç-Kunt, A., L. Klapper, D. Singer, and P. Van Oudheusden. 2015. “The Global Findex Database 2014: Measuring Financial Inclusion around the World.” Policy Research Working Paper 7255, World Bank, Washington, DC. Divanbeigi, R., and R. Ramalho. 2015. “Business Regulations and Growth.” Policy Research Working Paper 7299, World Bank, Washington, DC. Estrin, S. and T. Mickiewicz. 2011. “Institutions and Female Entrepreneurship.” Small Business Economics 37 (4): 397–415. Fayolle, A., and P. Kyrö. 2008. The Dynamics Between Entrepreneurship, Environment and Education. Cheltenham: Edward Elgar Publishing. Fetsch, E., C. Jackson, and J. Wiens. 2015. “Women Entrepreneurs are Key to Accelerating Growth. Kauffman Foundation.” July 20. http://www.kauffman.org/what-we-do/resources/entrepreneurship- policy-digest/women-entrepreneurs-are-key-to-accelerating-growth. Gakidou, E., K. Cowling, R. Lozano, and C. J. Murray. 2010. “Increased Educational Attainment and its Effect on Child Mortality in 175 Countries Between 1970 and 2009: A Systematic Analysis.” The Lancet, 376 (9745): 959–74. 24 Gatti, R., M. Morgandi, R. Grun, S. Brodmann, D. Angel-Urdinola, J. M. Moreno, E. M. Lorenzo. 2013. “Jobs for Shared Prosperity: Time for Action in the Middle East and North Africa.” Washington, DC: World Bank. Global Entrepreneurship Research Association. 2017. The 2015/2016 Global Entrepreneurship Monitor. London: Global Entrepreneurship Research Association. http://www.gemconsortium.org/report. _______. 2015. Special Report: Women’s Entrepreneurship. London: Global Entrepreneurship Research Association. Institute for Health Metrics and Evaluation. 2017. Global Educational Attainment 1970-2015. http://ghdx.healthdata.org/record/global-educational-attainment-1970-2015. Iqbal, S., A. Islam, R. Ramalho, and A. Sakhonchik. 2016. “Unequal before the Law: Measuring Legal Gender Disparities across the World.” Policy Research Working Paper 7803, World Bank, Washington, DC. Islam, A., and M. Amin. 2016. “Women Managers and The Gender-Based Gap in Access to Education: Evidence from Firm-Level Data in Developing Countries.” Feminist Economics, 22(3): 127–153. Iversen, J., N. Malchow-Møller, and A. Sørensen. 2016. “Success in Entrepreneurship: A Complementarity Between Schooling and Wage-Work Experience.” Small Business Economics 47 (2): 437–60. Karlan, D., and J. Zinman. 2010. “Expanding Credit Access: Using Randomized Supply Decisions to Estimate the Impacts.” Review of Financial Studies 23: 433–64. Klapper, L., A. Lewin, and J. M. Quesada Delgado. 2009. “The Impact of the Business Environment on the Business Creation Process.” Policy Research Working Paper 4937, World Bank, Washington, DC. Klapper, L., and I. Love. 2010. “The Impact of Business Environment Reforms on New Firm Registration.” Policy Research Working Paper 5493, World Bank, Washington, DC. _______. 2011. “The Impact of the Financial Crisis on New Firm Registration.” Economics Letters 113 (1): 1–4. Klapper, L., F. Meunier, and L. Diniz. 2014. “Entrepreneurship around the World: Before, During, and After the Crisis.” IFC Smart Lessons Brief, World Bank, Washington, DC. Klapper, L. F., and S. C. Parker. 2011. “Gender and the Business Environment for New Firm Creation.” The World Bank Research Observer 26 (2): 237–57. Kobeissi, N. 2010. “Gender Factors and Female Entrepreneurship: International Evidence and Policy Implications.” Journal of International Entrepreneurship 8 (1): 1–35. Krylova, Y. 2016. “Corruption and Gender Inequality: The Case of Nicaragua.” International Journal of Ethics, 12(3): 273–289. Lewis, K. V., C. Henry, E. J. Gatewood, and J. Watson. 2014. Women’s Entrepreneurship in the 21st Century: An International Multi-Level Research Analysis. Cheltenham: Edward Elgar Publishing. 25 OECD (Organisation for Economic Co-operation and Development). 2016. Entrepreneurship at a Glance 2016. Paris: OECD Publishing. http://www.oecd.org/std/business-stats/entrepreneurship-at-a-glance- 22266941.htm. Reynolds, P. D., M. G. Hay, and S. M. Camp. 1999. Global Entrepreneurship Monitor, 1999: Executive Report. Kauffman Center for Entrepreneurial Leadership at the Ewing Marion Kauffman Foundation. Robb, A. M., and S. Coleman. 2009. “Sources of Financing for New Technology Firms: A Comparison by Gender.” Kansas City: Ewing Marion Kauffman Foundation. https://www.researchgate.net/publication/266202326_Sources_of_Financing_for_New_Technology_Firm s_A_Comparison_by_Gender. Terjesen, S. A., and A. Lloyd. 2015. “The 2015 Female Entrepreneurship Index.” Kelley School of Business Research Paper 15–51. Available at Social Science Research Network (SSRN). http://dx.doi.org/10.2139/ssrn.2625254. UN Secretary-General’s High-Level Panel on Women’s Economic Empowerment. 2016. “Leave No One Behind: Taking Action for Transformational Change on Women’s Economic Empowerment.” http://hlp- wee.unwomen.org/-/media/hlp%20wee/attachments/reports-toolkits/hlp-wee-report-2016-09-call-to- action-en.pdf?la=en. Van Der Sluis, J., M. Van Praag, and W. Vijverberg. 2008. “Education and Entrepreneurship Selection and Performance: A Review of the Empirical Literature.” Journal of Economic Surveys 22 (5): 795–841. Woetzel, J., A. Madgavkar, K. Ellingrud, E. Labaye, S. Devillard, E. Kutcher, J. Manyika, R. Dobbs, and M. Krishnan. 2015. “The Power of Parity: How Advancing Women’s Equality Can Add $12 Trillion to Global Growth.” Washington, DC: McKinsey & Co. 26