WPS4613 Policy ReseaRch WoRking PaPeR 4613 A Gendered Assessment of the Brain Drain Frédéric Docquier B. Lindsay Lowell Abdeslam Marfouk The World Bank Development Research Group Trade Team May 2008 Policy ReseaRch WoRking PaPeR 4613 Abstract This paper updates and extends the Docquier-Marfouk consequences for developing countries. The .findings data set on inter-national migration by educational show that women represent an increasing share of the attainment. The authors use new sources, homogenize OECD immigration stock and exhibit relatively higher definitions of what a migrant is, and compute gender- rates of brain drain than men. The gender gap in skilled disaggregated indicators of the brain drain. Emigration migration is strongly correlated with the gender gap in stocks and rates are provided by level of schooling and educational attainment at origin. Equating women's and gender for 195 source countries in 1990 and 2000. men's access to education would probably reduce gender The data set can be used to capture the recent trend in differences in the brain drain. women's skilled migration and to analyze its causes and This paper--a product of the Trade Team, Development Research Group--is part of a larger effort in the department to analyze the impact of migration on poverty and economic development.. Policy Research Working Papers are also posted on the Web at http://econ.worldbank.org. The author may be contacted at frederic.docquier@uclouvain.be. 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 A Gendered Assessment of the Brain Drain Frédéric Docquiera, B. Lindsay Lowellb and Abdeslam Marfoukc a National Fund for Scienti...c Research, IRES, Cath. Univ. of Louvain and World Bank b c ISIM, Georgetown University University of Brussels (ULB) March 2008 Abstract This paper updates and extends the Docquier-Marfouk data set on inter- national migration by educational attainment. The authors use new sources, homogenize de...nitions of what a migrant is, and compute gender-disaggregated indicators of the brain drain. Emigration stocks and rates are provided by level of schooling and gender for 195 source countries in 1990 and 2000. The data set can be used to capture the recent trend in women's skilled migration and to analyze its causes and consequences for developing countries. The ...ndings show that women represent an increasing share of the OECD immigration stock and exhibit relatively higher rates of brain drain than men. The gender gap in skilled migration is strongly correlated with the gender gap in educational attainment at origin. Equating women's and men's access to education would probably reduce gender di¤erences in the brain drain. JEL Classi...cation: F22, J61. Keywords: Brain drain, Gender, Human capital, Migration. This paper is a product of the World Bank research program on the inter- national migration of women initiated in December 2005. It bene...tted from the ...nancial support of the World Bank (Contract PO. 7620076). We thank Caglar Ozden and Maurice Schi¤ for their support and suggestions, as well as Daniel Reyes and Mirja Sjoblom for their help. Corresponding author: Frédéric Docquier, IRES, Catholic University of Louvain, Place Montesquieu, B-1348 Louvain-La-Neuve, Belgium. E-mail: . 1 1 Introduction International migration is a diverse phenomenon and its impact on source and des- tination countries has attracted increased attention of policymakers, scientists and international agencies. The migration pressure has increased over the last years and is expected to intensify in the coming decades given the rising gap in wages and the di¤ering demographic futures in developed and developing countries. Understanding and measuring the consequences for migrants, host countries'residents and those left behind is a major and di¢ cult task. In particular, the impact of the brain drain on sending countries results from a complex combination of direct and feedback e¤ects which are extremely di¢ cult to quantify. Due to the lack of harmonized data, the brain drain debate has, until recently, remained essentially theoretical1. New data sets have been developed to assess the magnitude of the brain drain. In particular, Docquier and Marfouk (2006)2 provided estimates of emigration stocks and rates by educational attainment for 195 source countries in 2000 and 174 countries in 1990. This data set gave rise to a couple of extensions as well as to a number of empirical studies on the determinants and consequences of the brain drain3. One important extension which has been strongly disregarded in the literature concerns the gender gap in international migration. In particular, little research has addressed the issue of female migration while a considerable strand of literature has focused attention on male migration. The share of women in international migration increased over the last decades. According to the United Nations, this share increased from 46.8 to 49.6 percent between 1960 and 2005. This evolution is mostly due to the rising representation of women in the immigration stock of the most advanced countries (from 48.9 to 52.2 percent)4. It results from many factors such as the rise in women's educational attainment, the increased demand for women's labor in health care sectors and other services, or cultural and social changes in the attitude towards female migration in many source countries. Although family reunion programs ad- mit many women in destination countries, women cannot be considered as passive companion migrants. The feminization of international migration raises speci...c eco- nomic issues related to the gendered determinants and consequences of migration. In particular, women's brain drain is likely to a¤ect sending countries in a very peculiar way. First of all, women's level of schooling is a fundamental ingredient for growth. Many studies demonstrate that women's education complements children's invest- ments in school and has important e¤ects on the human capital of future generations 1See Commander et al. (2004) or Docquier and Rapoport (2007) for literature surveys. 2Henceforth, DM06. 3See Docquier et al. (2007), Beine et al. (2007b), Cecchi et al. (2007), Krueger and Rapoport (2006), Nimii and Ozden (2006), Javorcik et al. (2006), Grogger and Hanson (2007), Easterly and Nyarko (2005), etc. 4In developing countries, the share of women has been relatively stable over time. 2 (see World Bank, 2007). Better educated mothers are superior teachers in the home, as demonstrated by Behrman et al. (1997) in the case of India. Hence, for a given investment in children, more educated mothers produce children with higher levels of human capital (Haveman and Wolfe 1995, Summers 1992). It can also be ar- gued that schooled women contribute more income to the household, which may lead to more investment in child schooling and lower fertility rates. Another argument is that mothers with a high level of education have greater command of resources within the household (higher bargaining power), which they choose to allocate to children at higher levels than do men (see Quisumbing, 2003). Unsurprisingly, at the aggregate level, many studies have emphasized the role of female education in raising labor productivity and economic growth, suggesting that educational gender gaps are an impediment to economic development. This is the result obtained in Knowles et al. (2000) who use Barro and Lee's human capital indicators, or Coulombe and Tremblay (2006) who relied on the International Adult Literacy Survey to build an homogenized indicator of human capital. These studies suggest that investment in the human capital of women is crucial in countries where the gender gap in education is high5. Societies that have a preference for not investing in girls or that lose a high proportion of skilled women through emigration may experience slower growth and reduced income. Second, women's brain drain is a crucial issue as women's human capital is an even scarcer resource than men's human capital. At the world level, our estimates based on Barro and Lee (2000) and own calculations reveal that the percentage of women with post-secondary education rose from 7.3 to 9.8 percent between 1990 and 2000, while the male proportion rose from 10.9 to 12.5 percent. Similarly, the percentage of women with completed secondary education rose from 31.6 to 34.7 percent during the same period while the male proportion rose from 45.4 to 46.8 percent. Although the gender gap decreases over time, women are still lagging far behind men. In addition, the convergence movement is mainly perceptible in high- income countries where recent generations of women are as well or more educated than young men. In low-income countries, the gender gap is much greater (in 2000, only 2.4 percent of women had post-secondary education, against 5.5 percent for men) and the convergence is slow. Such a gender gap in education is ampli...ed by the fact that women have lower participation rates than men. As women still face unequal access to tertiary education and skilled jobs in less developed countries, women's brain drain may generate higher relative losses than male brain drain. Finally, as documented in Morrison, Schi¤ and Sjoblom (2007), the feminization of migration is likely to a¤ect future amounts of remittances, the size of diaspora externalities and the structure of activities in source countries. In this report, women are shown to send remittances over longer time periods, to send larger amounts to 5In the same vein, Klasen (1999) or Dollar and Gatti (1999) demonstrated that gender inequality acts as a signi...cant constraint on growth in cross-country regressions, a result con...rmed by Blackden et al. (2006) in the case of sub-Saharn Africa. 3 distant family members and have di¤erent impacts on household expenditures at origin. In a study on South Africa, Collinson (2003) shows that employed men remit 25 percent less than employed women. Regarding the determinants of migration, it is also argued that women and men do not respond to push and pull factors with the same intensity. Social networks are usually seen as more important for women who rely more strongly on relatives and friends for help, information, protection and guidance at destination. Without a gendered assessment of the brain drain, it is obviously impossible to conduct a complete analysis of these issues. In this paper, we build on the DM06 data set, update the data using new sources, homogenize 1990 and 2000 concepts, and introduce the gender breakdown. We pro- vide revised stocks and rates of emigration by level of schooling and gender. Our gross data reveal that the share of women in the skilled immigrant population increased in almost all OECD destination countries between 1990 and 2000. Consequently, for the vast majority of source regions, the growth rates of skilled female emigrants were always bigger than the growth rates obtained for unskilled women or skilled men. The evolution was particularly in the least developed countries. This feminization of the South-North brain drain mostly reects gendered changes in the supply of education. We show that the cross-country correlation between emigration stocks of women and men is extremely high (about 97 percent), with women's numbers slightly below men's ones. However, these skilled female migrants are drawn from a much smaller population. Hence, in relative terms, the correlation in rates (88 percent) is much lower than in stocks. On average, women's brain drain is 17 percent above men's. This gender gap in skilled emigration rate is strongly correlated with the gen- der gap in educational attainment of the source population, reecting unequal access to education. Although causality is hard to establish, it is very likely that equating men and women's educational attainment at origin would strongly reduce the gender gap in skilled migration. The remainder of this paper is organized as follows. Section 2 provides a brief survey of existing data sets on the brain drain. Section 3 then describes our method- ology and presents the measure of emigrant stock in 1990 and 2000. Section 4 analyzes emigration rates. Section 5 summarizes the main results. 2 Background The ...rst serious e¤ort to put together harmonized international data set on migra- tion rates by education level was by Carrington and Detragiache (1998, 1999). They used US 1990 Census data and other OECD statistics on international migration to construct estimates of emigration rates at three education levels for 61 developing countries (including 24 African countries). Adams (2003) used the same technique to build estimates for 24 countries in 2000. Although Carrington and Detragiache's study initiated new debates on skilled migration, their estimates su¤er from a number of limitations. The two most important ones were: i) they transposed the education 4 structure of the US immigration to the immigration to the other OECD countries (transposition problem); ii) immigration to EU countries was estimated based on OECD statistics reporting the number of immigrants for the major emigration coun- tries only, which led to underestimate immigration from small countries (under re- porting problem). Docquier and Marfouk (2006) generalized this work and provided a comprehensive data set on international skilled emigration to the OECD. The construction of the database relies on three steps: i) collection of Census and register information on the structure of immigration in all OECD countries (this solves the transposition and under reporting problems noted for Carrington Detragiache); (ii) summing up over source countries allows for evaluating the stock of immigrants from any given sending country to the OECD area by education level, and iii) comparing the educational structure of emigration to that of the population remaining at home, which allows for computing emigration rates by educational attainment in 1990 and 2000. The DM06 data relies on assumptions, some of which were relaxed in a couple of extensions. Most of these extensions required additional assumptions but con...rmed, to a large extent, the reliability of using DM06 data in descriptive analysis and empirical regressions. First, with only two points in time, DM06 does not give a precise picture of the long-run trends in international migration. To remedy this problem, Defoort (2006) computes skilled emigration stocks and rates from 1975 to 2000 (one ob- servation every 5 years). She uses the same methodology as in DM06 but only focuses on the six major destination countries (the USA, Canada, Australia, Germany, the UK and France). Her study shows that, at the world level or at the level of developing countries as a whole, the average skilled migration rate has been extremely stable over the period. This suggests that the heterogeneity in the brain drain is mostly driven by the cross-section dimension, thus rein- forcing the value of the DM06 cross-country data set based on a much more comprehensive set of destination countries. Second, counting all foreign born individuals as immigrants independently of their age at arrival, DM06 does not account for whether education has been acquired in the home or in the host country. Controlling for the country of training can be important when dealing with speci...c issues such as the ...scal cost of the brain drain. Beine, Docquier and Rapoport (2006) use immigrants' age of entry as a proxy for where education has been acquired and propose alternative measures of the brain drain by de...ning skilled immigrants as those who left their home country after age 22, 18 or 12. Data on age of entry are collected in a dozen countries. For OECD countries where such data cannot be obtained, Beine et al. estimate the age-of-entry structure using a gravity model. They ...nd that corrected skilled emigration rates are highly correlated 5 to those reported in DM066. Third, general emigration rates may hide important occupational shortages (e.g. among engineers, teachers, physicians, nurses, IT specialists, etc). In poor countries shortages are particularly severe in the medical sector where the number of physicians per 1,000 inhabitants is extremely low. Clemens and Pettersson (2006), and Docquier and Bhargava (2006) provided data on the medical brain drain. The elasticity of medical brain drain rates (as measured by Docquier and Bhargava) to DM06 general rates amounts to 0.44 (R2 = 0:39). Many observations are far from the overall trend. This suggests that the general brain drain may not reveal important aspects of occupational heterogeneity. In this literature, the gender dimension has been largely disregarded. An excep- tion is a paper by Dumont, Martin and Spielvogel (2007) which relies on a similar methodology than the one used here and analyzes emigration rates by gender and educational level from about 75 countries. Compared to this study, we use a slightly di¤erent de...nition of high-skill migration (including all post-secondary levels, even those with one year of US college), and rely on plausible estimates of the structure of the adult population in countries where human capital indicators are missing. We repeat the exercise for 1990 and 2000, thus shedding light on the recent feminization of the brain drain. We provide emigration stocks and rates for 195 countries in 1990 and 2000. Our data set can be used to capture the recent trend in women's skilled migration, as well as to analyze its causes and consequences for developing countries. 3 Emigration stocks by education level and gender This section describes the methodology and data sources used to compute emigration stocks by educational attainment and gender for each source country in 1990 and 2000. Subsequently, we discuss the main insights from the data. 3.1 Methodology and data sources It is well documented that statistics provided by source countries do not provide a realistic picture of emigration. When available, which is very rare, they are incom- plete and imprecise. Whilst detailed immigration data are not easy to collect on an homogeneous basis, information on emigration can only be captured by aggregating consistent immigration data collected in receiving countries, where information about the birth country, gender and education of natives and immigrants is available from national population censuses and registers (or samples of them). More speci...cally, 6Regressing corrected rates on uncorrected rates gives R2 of 0.9775, 0.9895 and 0.9966 for J=22,18,12. 6 the receiving country j's census usually identi...es individuals on the basis of age, gen- der g, country of birth i, and skill level s. Our method consists in collecting (census or registers) gender-disaggregated data from a large set of receiving countries, with the highest level of detail on birth countries and three levels of educational attainment: s = h for high-skilled, s = m for medium-skilled and s = l for low-skilled. Let Mt;g;s i;j denote the stock of adults 25+ born in j, of gender g, skill s, living in country j at time t. Table 1 describes our data sources. For countries where population registers (mainly Scandinavian countries) are used, data is based on the whole population. In countries where Census data are used, statistics are either based on the whole population (Australia, New Zealand, Belgium, etc.) or on a sample of it (e.g. 25 percent in France, etc.). In some cases, we combine comprehensive register data on the numbers of adult males and females, but use sample data to estimate the educa- tional structure (the UK is estimated on 10 percent of the population; in Germany, the microcensus is based on 1 percent of the population). The education structure is sometimes given by region or groups of countries; we then assume a constant share within the region. In a couple of countries, we use household and labor force surveys to estimate the educational structure. Finally, we also use IPUMS International data set for Mexico, Spain and the United States. Aggregating these numbers over destination countries j gives the stock of em- igrants from country i: Mt;g;s = i without gender breakdown. Xj Mt;g;s. This is the method used in DM06, i;j By focusing on census and register data, our methodology badly captures illegal immigration for which systematic statistics by education level and country of birth are not available7, except in the USA. Demographic evidence indicates most US illegal residents are captured in the census. However, there is no accurate data about the educational structure of these illegal migrants. Hence, we probably underestimate the number of unskilled in the immigrant population, assuming that most illegal im- migrants are uneducated. Nevertheless, this limitation should not signi...cantly distort our estimates of the migration rate of highly-skilled workers. 7 Hatton and Williamson (2002) estimate that illegal immigrants residing in OECD countries represent 10 to 15 percent of the total stock. 7 ! " # # # $ % & ' " & ' " $ ! ( $ ) % ! *+& , ' ' ! " " % ! - . ! - ' ! / . ! / ' ! 0 1 . 2 2 0 1 . 2 2 0 1 . & 1 *+& , *+& , ' ! ' ! 3 4 3 4 3 4 3 % 3 % 3 % * ! * * ( " ( . " ( . . ! *+& , 3 3 3 3 3 3 2 % 2 2 + / " " + ' *+& ' *+& !""" # $ % & & & & & '% In this paper, we rely on the same principles as in DM06 and turn our attention to the homogeneity and the comparability of the data. This induces a couple of methodological choices: In what follows, the term "source country" usually designates independent states. We distinguish 195 source countries: 191 UN member states, Holy See, Taiwan, Hong Kong, Macao and Palestinian Territories. We aggregate North and South Korea, West and East Germany and the Democratic Republic and the Republic of Yemen. We consider the same set of source countries in 1990 and 2000, although some of them had no legal existence in 1990 (before the secession of the Soviet block, former Yugoslavia, former Czechoslovakia and the German and Yemen reuni...cations) or became independent after January 1, 1990 (Eritrea, East-Timor, Namibia, Marshall Islands, Micronesia, Palau). In these cases, the 1990 estimated stock is obtained by multiplying the 1990 value for the pre-secession state by the 2000 country share in the stock of immigrants (the share is gender- and skill-speci...c). The set of receiving countries is restricted to OECD nations. We thus focus on the structure of South-North and North-North migration. Generally speak- ing, the skill level of immigrants in non-OECD countries is expected to be very low, except in a few countries such as South Africa (1.3 million immigrants in 2000), the six member states of the Gulf Cooperation Council (9.6 million immigrants in Saudi Arabia, United Arab Emirates, Kuwait, Bahrain, Oman and Qatar), some Eastern Asian countries (4 million immigrants in Hong-Kong and Singapore only). According to their census and survey data, about 17.5 percent of adult immigrants are tertiary educated in these countries (17 percent in Bahrain, 17.2 percent in Saudi Arabia, 14 percent in Kuwait, 18.7 percent in South Africa). Considering that children constitute about 25 percent of the immigration stock, we estimate the number of educated workers at 1.9 million in these countries. The number of educated immigrants in the rest of the world lies between 1 and 4 million (if the average proportion of educated immigrants among adults lies between 2.5 and 10 percent). This implies that focusing on OECD countries, we should capture a large fraction of the world-wide educated migration (about 90 percent). Nevertheless, we are aware that by disregarding non-OECD immigration countries, we probably underestimate the brain drain for several developing countries (such as Egypt, Sudan, Jordan, Yemen, Pak- istan or Bangladesh in the neighborhood of the Gulf states, Botswana, Lesotho, Namibia, Swaziland and Zimbabwe, etc.). Incorporating data collected from selected non-OECD countries could re...ne the data set. To allow comparisons between 1990 and 2000, we consider the same 30 receiving countries in 1990 and 2000. Consequently, Czechoslovakia, Hungary, Korea, Poland and Mexico are considered as receiving countries in 1990 despite the fact that they were not members of the OECD. 9 We only consider the adult population aged 25 and over. This excludes students who temporarily emigrate to complete their education. In addition, as it will appear in the next section, it will allow us to compare the numbers of migrants with data on educational attainment in source countries. It is worth noticing that we have no systematic information on the age of entry. It is therefore impossible to distinguish between immigrants who were educated at the time of their arrival and those who acquired education after they settled in the receiv- ing country; for example, Mexican-born individuals who arrived in the US at age 5 or 10 and graduated from US high-education institutions are counted as highly-skilled immigrants. As mentionned above, Beine et al (2007a) provided corrected measures by age of entry and found a very high correlation with the uncorrected numbers. Migration is de...ned on the basis of the country of birth rather than citizenship. Whilst citizenship characterizes the foreign population, the "foreign-born" con- cept better captures the decision to emigrate8. Usually, the number of foreign- born is much higher than the number of foreign citizens (twice as large in countries such as Hungary, the Netherlands, and Sweden)9. Another reason is that the concept of country of birth is time invariant (contrary to citizenship which changes with naturalization) and independent of the changes in policies regarding naturalization10. The number of foreign-born can be obtained for a large majority of OECD countries although in a limited number of cases the national census only gives immigrants'citizenship (Germany, Hungary, Italy, Japan and Korea). It is worth noting that the concept of foreign born is not fully homogeneous across OECD countries. In most receiving countries, foreign born are individual born abroad with foreign citizenship at birth. In a couple of countries, foreign born means "overseas-born", i.e. an individual simply born abroad. We distinguish three levels of education. Medium-skilled migrants are those with upper-secondary education completed. Low-skilled migrants are those with less than upper-secondary education, including those with lower-secondary and primary education or those who did not go to school. High-skilled migrants are those with post-secondary education11. This assumption is compatible with Barro and Lee's human capital indicators (based on the 1976-ISCED classi...- cation). Some migrants did not report their education level. As in DM06, we 8In some receiving countries such as Germany, immigrants'children (i.e. the second generation) usually keep their foreign citizenship. 9By contrast, in other OECD countries with a restricted access to nationality (such as Japan, Korea, and Switzerland), the foreign population is important (about 20 percent in Switzerland). 10The OECD statistics report that 14.4 million foreign born individuals were naturalized between 1991 and 2000. Countries with a particularly high number of acquisitions of citizenship are the US (5.6 million), Germany (2.2 million), Canada (1.6 million), and Australia and France (1.1 million). 11In the US case, this includes those with one year of college 10 classify these unknowns as low-skilled migrants12. Educational categories are built on the basis of country speci...c information and are compatible with hu- man capital indicators available for all sending countries. A mapping between the country educational classi...cation is sometimes required to harmonize the data13. 3.2 Women's share in OECD immigration According to our estimates, the average share of women in the OECD immigrant population decreased from 51.6 to 50.6 percent between 1990 and 2000. Country- speci...c shares range from 41.8 in Iceland to 59.8 in Poland . It amounts to 53 percent in the United Kingdom, 52.3 in Canada, 51 in the United States, 49.5 in France and 46.2 in Germany. This share increased or stagnated in almost all countries over the 1990s. The only signi...cant decreases are observed in Belgium (-3.8 percentage points) and Ireland (-2.8). Remarkable increases were observed in Austria (+11.3 percentage points), Portugal (+6.4) and, to a lower extent, in Turkey, Korea, Japan and Switzerland. The average share of women in the OECD skilled immigrant population increased from 48.0 to 49.7 percent between 1990 and 2000. Country-speci...c shares range from 39.8 percent in Iceland to 56.4 in Poland. It amounts to 50.2 percent in the United Kingdom, 49.9 in the United States, 48.4 in Canada (the only country where there are more skilled women than skilled men), 46.6 in France and 45.2 in Germany. This share increased in almost all countries except in Belgium (-2.1) and Spain (- 1.4). Remarkable increases in female share were observed in the Czech Rep (+18.6 percentage points), Finland (+9.2) and Turkey (+9.1). 12Country speci...c data by occupation reveal that the occupational structure of those with un- known education is very similar to the structure of low-skilled workers (and strongly di¤erent from that of high-skilled workers). See Debuisson et al. (2004) on Belgium data. 13For example, Australian data mix information about the highest degree and the number of years of schooling. 11 Figure 1. Women's share in total immigration 65,0% 60,0% 1990 2000 55,0% 50,0% 45,0% 40,0% 35,0% 30,0% 25,0% 20,0% l . ndaolP d gaut UK an en SAU ay g e d orP Rephc anpaJ yr liaa ngauH dnlare iarst lytaI cena Au ealZ dsnalr Swed eykruT reaoK inapS burm anel Fr p.eRk coixe eecrG Cze itzwS daanaC ndalniF ndalerI rwoN xe M miulgeB Ic weN struA heteN arkmneD Lu lovaS nyamreG Figure 2. Women's share in skilled immigration 60,0% 55,0% 1990 2000 50,0% 45,0% 40,0% 35,0% 30,0% 25,0% 20,0% algurt cee en ay d d . d reG Po ndalinF lytaI ryagnuH dsnlar anpaJ g UK reaoK SAU liaa an cen ny an raF mbur mar iarts anlr coixe p.eRk Swed heteN rwoN inapS ndaolP ndalerI struA daanaC ealZ weN arkmneD Au eykruT Rephc xe M Icel Ge umigleB Lu zetiwS valoS Cze 12 3.3 Stocks by education level and gender Tables 2 and 3 give the emigration stocks for 1990 and 2000, respectively . We distinguish total, low-skill and high-skill emigration stocks, the medium skilled can be easily obtained by substraction. Although the data set reveals speci...c information by country, we only report here data by country group. We consider income groups (following the World Bank classi...cation), regional groups and groups of developing countries as de...ned in the UN classi...cation, as well as a couple of groups of particular interest (OECD members, large countries with population above 75 million, Sub- Saharan Africa, Latin America and the Caribbean, Middle East and Northern Africa and Islamic countries). On the whole, we record 41.7 million immigrants aged 25+ and 58.2 million in 2000. The female share in adult OECD immigration was stable over the decade (50.6 percent in 1990 and 50.9 percent in 2000). These numbers are (for adults aged 25 and over) in line with the UNDP global numbers reported for the OECD countries (50.2 and 50.6 for these two years). However, the women's share varies across education level. The share in unskilled migration is above 51 percent (it decreased from 51.5 to 51.1 percent during the decade). The share in skilled migration is below 50 percent but strongly increased between 1990 and 2000 (from 46.7 to 49.3 percent). The number of skilled women immigrants increased by 74 percent (from 5.8 to about 10.1 million). The rise was important for developing countries (both middle and low-income) where the number of skilled women emigrants was multiplied by 2.1 (+110 percent). Such an increase is in women skilled emigration is observed in every source region and is mainly due to the fact that women's rise in schooling level was more rapid than men's rise (supply e¤ect). To a lesser extent, this also reects the fact that skilled women are increasingly on the move. Indeed, as it will appear from the next section, the female skilled adult population increased by 67.9 percent at the world level and 83 percent in developing countries. Figure 3 compares the average annual growth rates of women's total and skilled emigration stock and men's skilled emigration stock by region over the decade. In almost all regions the growth rate for skilled women is always bigger than for all women or skilled men. The evolution was particularly strong for migrants from the least developed countries, especially from low-income countries. The growth rate observed for Central and Southern Asia, Sub-Saharan Africa and Central America are particularly high. Table 4 reports countries sending the largest stocks of migrants to the OECD. In absolute terms (number of educated emigrants), the largest countries are obviously strongly a¤ected by the brain drain. The elasticity of emigration stock to popula- tion size amounts to 63.2 percent, revealing that small countries are relatively more a¤ected that large countries. The ...ve largest diasporas (all education categories) originate from Mexico (6.434 million), United Kingdom (2.990 million), Italy (2.337 million), Germany (2.299 million) and Turkey (1.942 million). Eight other countries have diaspora above 1 million: India, the Philippines, China, Vietnam, Portugal, Ko- 13 rea, Poland and Morocco. In most of these countries, the women's share varies from 48 to 52 percent. However, women's share is particularly high for the Philippines (62.2 percent), Germany (57.4), Korea and Poland (around 56 percent). Focusing on skilled emigrants, the ranking unsurpisingly shows that rich countries with highly educated population have better educated diasporas. The elasticity of skilled emigration to population size at origin amounts to 65.7 percent. The largest skilled diasporas originate from the United Kingdom (1.487 million), the Philippines (1.111 million) and India (1.034 million). Germany and Mexico send more than 0.9 million skilled natives abroad. Four other countries have diasporas above 0.5 million: China, Korea, Canada and Vietnam. In these top-countries, the share of women among skilled migrants is large in Jamaica (62.1 percent), the Philippines (60.3) and other countries such as Japan, Russia, Ukraine, Poland and Colombia. Figure 3. Annual average growth rate of total/skilled stock of emigrants Data by region (1990-2000) 20% 18% 16% Women total emig. 14% Women skilled emig. 12% Men skilled emig. 10% 8% 6% 4% 2% 0% ia ia ia ia . ca nia As As As As Africa Africa Africa Africa Afri Zeal Asia America Europe America rn Ocea Europe Europe America Europe New Caribbean Central Easte + Western Southern Middle Western Southern Central Eastern South Eastern Northern South-East. Others North Southern Northern Western Austr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migration rates We count as migrants all adult (25 and over) foreign-born individuals living in an OECD country. However, it is obvious that the pressure exerted by 1,036,000 Indian skilled emigrants (4.3% of the educated total adult population) is less important than the pressure exerted by 15,696 skilled emigrants from Grenada (84% of the educated adult population). A more meaningful measure can then be obtained by comparing the emigration stocks to the total number of people born in the source country and belonging to the same gender and educational category. This method allows us to evaluate the pressure imposed on the labor market in the source country. 4.1 Methodology and data sources In the spirit of Carrington and Detragiache (1998), Adams (2003), Docquier and Mar- fouk (2006) or Dumont and Lemaitre (2006), our second step consists in calculating the brain drain as a proportion of the total educated population born in the source country. Although our analysis is based on stocks (rather than ows), we will refer to these proportions as emigration rates. Denoting Nt;g;s as the stock of individuals j aged 25+, of skill s, gender g, living in source country i, at time t, we de...ne the emigration rates as :i mit;g;s = Mt;g;s Nt;;gs + Mt;g;s i :i In particular, mit;g;h can be used as a proxy of the brain drain in the source country i. This step requires using data on the size and the skill and gender structure of the adult population in the source countries. Population data by age are provided by the United Nations14. We focus on the population aged 25 and more. Data are miss- ing for a couple of countries but can be estimated using the CIA world factbook15. Population data are split across educational group using international human capi- tal indicators. Several sources based on attainment and/or enrollment variables can be found in the literature. As in Docquier and Marfouk (2006), human capital in- dicators are taken from De La Fuente and Domenech (2002) for OECD countries and from Barro and Lee (2001) for non-OECD countries. For countries where Barro and Lee measures are missing, we predict the proportion of educated using Cohen- Soto's measures (see Cohen and Soto, 2007). In the remaining countries where both Barro-Lee and Cohen-Soto data are missing (about 70 countries in 2000), we trans- pose the skill sharing of the neighboring country with the closest enrolment rate in secondary/tertiary education, the closest gender gap in enrollment rates and/or the closed GDP per capita. This method gives good approximations of the brain drain rate, broadly consistent with anecdotal evidence. 14See http://esa.un.org/unpp. 15See http://www.cia.gov/cia/publications/factbook. 18 Tables 5 and 6 give the structure of the adult population (25+) by country group and region of origin. The world adult population increased from 2.559 to 3.180 billion people between 1990 and 2000 (+24.3 percent). This global growth rate hides important changes across education categories. While the unskilled population increased by 19.7 per- cent, the skilled populaiton rose by 52.5 percent. Consequently, the proportion of post-secondary educated workers in the world adult population increased from 9.1 to 11.1 percent over the period. Although women still face unequal access to education in many countries, is worth noticing that women's share in the skilled adult popu- lation increased from 40.4 to 44.5 percent (their share in the unskilled population remains above 55 percent). Our data reveal that gender gaps in human capital are strongly linked to the level of economic development. The share of women in the skilled population is still very low in low-income countries (30.3 percent) and in the least developed countries (28.5 percent). The educational achievement of women is particularly worrisome in Western Africa (13.3 percent) and Northern Africa (14.7 percent). Figure 4 compares the average annual growth rates of women's total/skilled and men's skilled adult population by region over the decade. Figure 4. Annual average growth rate of total/skilled adult population (25+) Data by region (1990-2000) 20% 18% 16% 14% Women total LF Women skilled LF 12% Men skilled LF 10% 8% 6% 4% 2% 0% ica an ica ca al. Asia Asia African African Asian Asia Asial Afri Ze Oceanias ast. America Amer Amer Europe Africa Europe Europe Europe Africa Caribbe New ern rn Western Souther Eastern Centra + tern Souther Norther Other South Eastern Middle South-E Central North Southern East Northe Wes Western Austr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t comes out that the highest growth rates were observed in the poorest regions of Sub-Saharan Africa, Paci...c Islands and Southern Asia. The level of schooling of the adult population also increased signi...cantly in Northern Africa. The change in the intensity of the brain drain will then result from the comparison of the growth rate of skilled emigrants with skilled residents/natives. In many African countries (except in Southern and Northern Africa) and in Central America and Southern Asia, the growth rate of the stock of skilled female emigrants exceeded the growth rate of the skilled female population. The brain drain increases signi...cantly in these regions. The opposite movement was observed in Southern and Northern Africa, or in Paci...c Islands. 4.2 Emigration rates by education level and gender Tables 7 and 8 show the emigration rates of unskilled and skilled workers, as well as global emigration rates by country groups and region of origin in 1990 and 2000. The reported index gives the female/male ratio in emigration rates by education level. Our cross-country results are very similar to those described in Docquier and Marfouk (2006). The correlation between the old and updated skilled emigration rates in 2000 is 94 percent. Skilled emigration rates are high in small and poor countries. Small developing islands of the Caribbean (47.2 percent) and the Paci...c (63.1 percent) are particularly a¤ected. At the world level, women and men exhibit almost the same total emigration rates (1.6 percent in 1990 and 1.8 in 2000). Women's emigration rates are, however, lower than men's in the less developed countries, especially in Northern and Sub-Saharan Africa. On the contrary, skilled emigration rates are more pronounced among women. In 2000, the average (weighted) female/male ratio of brain drain amounted to 1.20. Huge ratios were observed in regions where women have a poor access to education such as Central Africa (2.225), Eastern Asia (2.030), Southern Africa (1.914) and Western Africa (1.842). Between 1990 and 2000, and despite the rise in women's level of schooling, men's and women's skilled emigration rates slightly increased. Although the gender ratio of skilled migration rates decreased at the world level and in most regions, it rose in some developing regions such as Central and Western Africa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able 9 depicts the situation of the 30 most a¤ected countries in 2000 regarding skilled migration rates. The right panel is based on the full sample. Small islands are the most a¤ected. The emigration rate exceeds 80 percent in nations such as Guyana, Jamaica, St. Vincent, Grenada, Haiti, Cape Verde and Palau. Only three of these top-30 countries have a population above 4 million. On the right panel, we eliminate small countries and focus on countries with more than 4 million inhabitants. About one-third of the most a¤ected countries are located in Sub-Saharan Africa and 7 are Central American or Caribbean countries. The brain drain exceed 30 percent in nine countries, including ...ve Sub-Saharan African ones. Regarding gender disparities, Figure 5 and 6 compares stock and rates of skilled migration by gender. Figure 5 shows that the correlation in stocks is extremely high (97 percent). On average, the number of skilled female migrants is lower than the number of skilled men. Figure 6 reveals that the correlation is lower in rates (88 per- cent); women's rate is on average 17 percent above men's. However, the female/male ratio in emigration rates varies strongly across countries. As shown on Table 10, it ranges from 0.522 in Bhutan to 4.378 in Nigeria. Countries where women are dispro- portionately a¤ected are Nigeria, Cameroon, Sao Tome and Principe, the Democratic Republic of Congo, Angola and Guinea. On the other hand, men are over-represented in Bhutan, Lesotho, Cambodia, Saudi Arabia, Jordan and Botswana. This gender gap in skilled emigration rate is strongly correlated with the gender gap in educa- tional attainment of residents. The gender gap in migration is especially strong in countries where women have little access to education. A simple regression of the log of the female/male ratio in skilled emigration rates on the log of the female/male ratio in post-secondary educated adult population gives an elasticity of -50 percent (R2 = :54) and an intercept which is not signi...cantly di¤erent from zero. Hence, equating men and women's educational attainment would strongly reduce the gender gap in skilled migration. It is also worth noticing that the correlation between the gender gap in skilled migration and variables such as the UN gender empowerment measure or the proportions of seats held by women in the parliament is almost equal to zero. 25 Figure 5. Women's and men's brain drain in 2000 - Stocks 14 45 degree line 12 stock 10 the of log- 8 drain brain 6 Women's WBD= 0.9873.MBD 4 R2 = 0.9705 2 2 4 6 8 10 12 14 Men's brain drain - log of the stock Figure 6. Women's and men's brain drain in 2000 - Rates 100% WBD = 1.1783.MBD R2 = 0.88 90% 45 degree line 80% 70% % in 60% drain 50% brain 40% Women's 30% 20% 10% 0% 0% 10% 20% 30% 40% 50% 60% 70% 80% 90% 100% Men's brain drain in % 26 ! " # $%" ! " # $%" ! ! ! ! ! " ! # $ %& ! ! ' ( ( ! ) ) * & +( (, ! " - , ! - & ! ! (( ! # . & " & /0 ! ! ) & ! # * ! ! 1 ! ! - ! ' $ - 2 ! ! ! ! ! / & 3 * ! ! ! 02 ! * . ) ! ! ! ! !! # ! 3 ( 4 ! ( ! ) , ( ! /5& ! ! 6 ! ! 7 4 * 8 9 : ! ! 6 0 $ *( 3 * ! ! ! ! ! # * ! ! ! 7 ( ! ! !! 7 ( 2 ! 7 ! ' & ( " * ! 7 # ! ! & ( ! * ! ! ! ! % " & * ! ; * ! ! 7 (( < ( ) & ! ! !" ! " # $ % & '! ( ) * * &( ( % + % % ' ( , '% ( -& '' ( .'% & ' ' & * % ( & /( 0 1 & 2 &( , ' ) 3' ' 4 2 , '% 5 ' * ( 1 ( 0 ' " # (/ & / ' 0 * 6 , '% 0 ( % # &( * &( , ' / ! $ " "6 / (% 7( 5 & ' 8 % '% ( / %( * 0 * ( * ( ' * 0 * ) + % * 3' ! # $ % 9 ( ( 5 ( 3% 5 * &( :05 ; * & & %'1 ** % $ # (/ < < ) / ! ( / * % =3> / 8 ' % 0 ( % & (% 5 Conclusion In this paper, we build on the DM06 data set, update the data using new sources, ho- mogenize 1990 and 2000 concepts, and introduce the gender breakdown. We provide revised stocks and rates of emigration by level of schooling and gender. We repeat the exercise for 1990 and 2000, thus shedding light on the recent feminization of the brain drain. We provide emigration stocks and rates for 195 countries in 1990 and 2000. Although our data set deserves some extensions (e.g. adding points in time and accounting for migration to non OECD destination countries), it can be used to capture the recent trend in women's brain drain, as well as to analyze its causes and consequences for developing countries. Our gross data reveal that the share of women in the skilled immigrant population increased in almost all OECD destination countries between 1990 and 2000. Conse- quently, for the vast majority of source regions, the growth rates of skilled women emigrants were always bigger than the growth rates obtained for unskilled women or skilled men. This evolution particularly occurs in the least developed countries. This feminization of the South-North brain drain mostly reects gendered changes in the supply of education. The cross-country correlation between emigration stocks of women and men is extremely high (about 97 percent), with women's numbers slightly below men's ones. 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