WPS5113 Policy Research Working Paper 5113 Remittances and the Brain Drain Revisited The Microdata Show That More Educated Migrants Remit More Albert Bollard David McKenzie Melanie Morten Hillel Rapoport The World Bank Development Research Group Finance and Private Sector Team November 2009 Policy Research Working Paper 5113 Abstract Two of the most salient trends surrounding the issue of The data show a mixed pattern between education migration and development over the past two decades and the likelihood of remitting, and a strong positive are the large rise in remittances, and an increased flow relationship between education and the amount remitted of skilled migration. However, recent literature based on conditional on remitting. Combining these intensive cross-country regressions has claimed that more educated and extensive margins gives an overall positive effect of migrants remit less, leading to concerns that further education on the amount remitted. The microdata then increases in skilled migration will hamper remittance allow investigation as to why the more educated remit growth. This paper revisits the relationship between more. The analysis finds that the higher income earned education and remitting behavior using microdata from by migrants, rather than characteristics of their family surveys of immigrants in 11 major destination countries. situations, explains much of the higher remittances. This paper--a product of the Finance and Private Sector Team, Development Research Group--is part of a larger effort in the group to study the determinants and consequences of migration and remittances. Policy Research Working Papers are also posted on the Web at http://econ.worldbank.org. The author may be contacted at dmckenzie@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 Remittances and the Brain Drain Revisited: The microdata show that more educated migrants remit more# Albert Bollard, Stanford University David McKenzie, World Bank, BREAD, IZA and CReAM Melanie Morten, Yale University Hillel Rapoport, Bar-Ilan University, EQUIPPE and CID, Harvard University Keywords: Remittances, Migration, Brain Drain, Education. JEL Codes: O15, F22, J61. # We are grateful for funding for this project from the Agence Française de Développement (AFD). We thank the various individuals and organizations who graciously allowed us to use their surveys of immigrants and Michael Clemens for helpful comments. All opinions are of course our own and do not represent those of AFD, or of the World Bank. 1. Introduction Two of the most salient trends surrounding the issue of migration and development over the last two decades are the large rise in remittances, and an increased flow of skilled migration. Officially recorded remittances to developing countries have more than tripled over the last decade, rising from US$85 billion in 2000 to US$305 billion in 2008 (World Bank, 2008, 2009). The number of highly educated emigrants from developing countries residing in the OECD doubled between 1990 and 2000 (Docquier and Marfouk, 2005) and is likely to have grown since as developed countries have increasingly pursued skill-selective immigration policies. However, despite this positive association at the global level between rising remittances and rising high-skilled emigration, there are concerns that the increasingly skill-selective nature of immigration policies may hamper the rise in remittances, due to a belief that more educated individuals may remit less. This belief is accepted as fact by many: for example, the OECD (2007, p. 11) writes "low-skilled migrants tend to send more money home". The main empirical evidence to support this across a range of countries comes from two recent papers (Faini, 2007 and Niimi, et al. 2008) which use cross-country macroeconomic approaches to claim that the highly skilled (defined as those with tertiary education) remit less. Yet there are many reasons not to believe these cross-country estimates nor to consider them useful for policy. Both studies relate the amount of remittances received at a country level to the share of migrants with tertiary education, at best telling us whether countries which send a larger share of highly skilled migrants receive less or more remittances than countries which send relatively fewer skilled migrants.1 This does not answer the factual question "do more educated individuals remit more or less?" There are a host of differences across countries which could cause a spurious relationship between remittances and skill level across countries. For example, if poverty is a constraint to both migration and education, we may find richer developing countries being able to send more migrants (yielding more remittances) and that the migrants from these countries also have more schooling. In addition to this, by focusing on the relative share of migrants who are skilled rather than the absolute number, these papers are not 1 A further concern is that the macroeconomic data on remittances covers only remittances through formal sources, and the share of total remittances which are thus reported by country will differ, and may differ in a way which is correlated with their share of tertiary-educated migrants if migrants differ in their propensity to use formal remittance channels according to education level. 2 informative as to what one should expect to happen to remittances as destination countries continue to adopt more skill-intensive migration policies. This paper revisits the relationship between remittances and the educational level of migrants using microdata, allowing us to compute the association between an individual's education level and remitting behavior. An intensive effort allows us to put together the most comprehensive micro-level database on remitting behavior currently available, comprising of data on 33,000 immigrants from developing countries from 14 surveys in 11 OECD destination countries. Using this new dataset, we begin by establishing the factual relationship between the propensity to remit and education.2 With microdata we can ask whether or not more educated individuals are more or less likely to remit (the extensive margin), and whether they send more or less remittances if they do remit (the intensive margin). We find a mixed association between education and remittances at the extensive margin, and a strong positive relationship at the intensive margin. Combining the two, the fact is that more educated migrants do remit significantly more ­ migrants with a university degree remit $300 more yearly than migrants without a university degree, where the mean annual remittance over the entire sample is $730. Theory provides reasons why the relationship between the amount remitted and education could be positive or negative. The more educated are likely to earn more, be repaying education loans, have more access to financial institutions, but also have their family members accompanying them, have wealthier families with less need for remittances, and have presumably less intention of returning to their home country. Using other variables from the microdata we investigate which channels seem to explain the differential remitting behavior of the more educated. We find remitting behavior to have the associations with these different individual characteristics that are predicted by theory, and that the higher income of more educated migrants appears to be the main reason they remit more. The remainder of the paper is set out as follows. Section 2 summarizes several theories of remitting behavior and the predictions they give for the relationship between education and 2 We do not attempt to estimate the causal impact of education on remittances. From a policy perspective, the interest is in whether migration policies which shift the education composition of migrants affect remittances, not on whether education policies to change how much education individuals have affects remittances. Moreover, we lack convincing instruments to identify the latter. 3 remittances. Section 3 then describes our dataset of immigrant surveys with remittances. Section 4 provides results, and Section 5 concludes. 2. Theoretical background Theoretically there are several reasons to believe that there will be differences between the remitting patterns of highly-skilled emigrants and less-skilled emigrants. On one hand there are several factors which would tend to lead highly skilled migrants to be more likely to remit and/or send a larger amount of remittances. First, highly skilled individuals are likely to earn more as migrants, increasing the potential amount they can remit. Second, their education may have been funded by family members in the home country, with remittances providing a repayment of this family investment. Third, skilled migrants are less likely to be illegal migrants, and more likely to have bank accounts, lowering the financial transactions costs of remitting. However, on the other hand there are several factors which may lead highly skilled migrants to be less likely to remit or to remit less. First, highly skilled migrants may be more likely to migrate with their entire household, so not have to send remittances in order to share their earnings abroad with other household members. Second, they may come from richer households, who have less need for remittances to alleviate liquidity constraints. Third, they may have less intention of ever returning to their home country, reducing the role of remittances as a way of maintaining prestige and ties to the home community. A priori then, it is not clear which direction will dominate, and thus whether the highly skilled will remit more or less on average. One key point to note from all of these theoretical channels is that education doesn't enter directly as a determinant of remittances; rather, education is associated with other things that affect remitting behavior. Before we turn to the empirical analysis, it may therefore be useful to summarize the existing literature and clarify the theoretical relationship between education and remittances, and the implied testable predictions regarding education. In this section we present a brief summary of the theoretical literature based on Rapoport and Docquier (2006) and focus the discussion on the role of education. Thanks to the new economics of labor migration (Stark, 1991), migration is now recognized as an informal familial arrangement, with benefits in the realms of mutual insurance, consumption smoothing, and intergenerational financing of investments, including education. Remittances are an integral part of such implicit arrangements and can be seen as combining an 4 altruistic component, a repayment-of-loans component, an insurance component, an inheritance component, and exchanges of a variety of services. In the discussions below we select three of these motives - altruism, exchange, and investment - both for their general empirical relevance and for the fact that they are the ones through which education is most likely to affect remittances. 2.1 Altruism Building on Rapoport and Docquier (2006) and Niimi et al. (2008), we write the migrant's utility function as: U M (1 N S )V (C M ) N V (C N ) SV (C S ) , V'>0 and V''<0, where: C M is the migrant's consumption level, C N is the consumption of the family members in the host country (North), C S is the consumption level of the family members in the home country (South) N N f N and S S 1 f N , with 1 N S to denote that the migrant prefers to have his relatives close to him,3 and f N is the fraction of the family (of total size normalized to unity) who lives in the North. With V(.) = ln(.) and noting that C M y M T N TS , C N y N TN and C S y S T S , the migrant's remittance decision may be written as: Max U M (1 N S ) ln( y M TN TS ) N ln( y N TN ) S ln( y S Ts ) TN ,TS From the first order conditions we get the optimal levels of transfers to the accompanying family and of remittances: TN N y M y N (1 N S ) * and TS* S y M y S (1 N S ) . 3 Another interpretation is that the people who live with the migrant are closer relatives -- spouse, children -- than those left behind and therefore receive a higher altruistic weight in the migrant's utility function. 5 We may now ask: how do educated migrants differ from non-educated migrants? First, they earn more ( y M y M ), which all else equal should induce more remittances as e ne TS S 0 ; and second, the conventional wisdom is they tend to have more family members y M with them as they have a higher propensity to move with their immediate family ( f N f Nne ); all e else equal this should act to decrease remittances as: TS* TS* N TS* S . . y S ( N S ) S y M 0 .4 f n N f N S f N From the perspective of this paper, it is interesting to note that education does not enter directly in the model at this stage: it is assumed exogenous and does not have any impact beyond its effect on the migrants' income (it is also assumed preferences are independent of education). More importantly, the reason why more educated migrants may remit less in an altruistic model is that they are more likely to bring their families with them. This raises in turn two important issues. First, from a social welfare viewpoint, this begs the question of why we should care about the level of remittances: if remittances are lower when more educated individuals migrate because families stay together, isn't this a welfare gain? Second, from a methodological perspective, this theory suggests that the location/composition of the family (i.e., which fraction of the family is accompanying the migrant and which fraction is staying in the home country) is jointly determined with remittances. This makes it difficult to estimate the causal impact of family composition on remittances. Instead, we will merely ask whether differences in remitting patterns by education level disappear when we condition on family composition. Empirically we will also see that while less-educated migrants do have more relatives in the home country, they also have larger household sizes and also have larger numbers of relatives with them in the destination country. 4 To prove this we must first note that the condition for a negative sign is y M N 1 while the condition for yS S yM 1 N having positive transfers is 1 . It is easy to see that the latter condition implies the former as long as yS S 1. 6 2.2 Exchange and investment motives There are many situations of pareto-improving exchanges where remittances "buy" various types of services such as taking care of the migrant's assets (e.g., land, cattle) or relatives (children, elderly parents) at home. Such motivations are generally the sign of a temporary migration, and signal the migrants' intention to return. In such exchanges, there is a participation constraint determined by each partner's external options, with the exact division of the pie (or surplus) to be shared depending on their bargaining power. How does education interact with such exchange motives? Two directions emerge from the short discussion above: through the effect of education on intentions to return, on the one hand, and through its effect on threat points and bargaining powers, on the other hand. The conventional wisdom is that migrants with higher education have lower intentions (and propensities) to return than migrants with low education (see Faini, 2007), either because they tend to be better integrated, or can obtain permanent resident status more easily. Should this be the case, educated migrants should transfer less for an exchange motive, reflecting their lower propensities to return.5 What about bargaining powers? As is well known, exchange models allow for different possible contractual arrangements reflecting the parties' outside options and bargaining powers (see, e.g., Cox, 1987, Cox et al., 1998). This has two complementary implications for the role of education as a determinant of remittances in an exchange model. First, to the extent that education is associated with higher income, this is likely to increase the migrants' willingness to pay and lead to higher remittances; and second, to the extent that educated migrants come from more affluent families, this is likely to increase the receiving household bargaining power and also lead to higher remittances.6 On the whole, an exchange motive therefore predicts education will have an ambiguous effect on remittances, with the sign of the effect depending on whether return intentions or bargaining issues matter more in determining remittance behavior. The investment motive may be seen as a particular exchange of services in a context of imperfect credit markets. In such a context indeed, remittances may be seen as part of an implicit 5 Again, as we shall see, this conventional wisdom is not supported by the data, meaning that exchange motives are equally relevant for educated and less educated migrants as far as return intentions are concerned. 6 To save place we did not include the formal development of these points, which is available from the authors upon request. 7 migration contract between the migrant and his or her family, allowing the family access to higher (investment motive) and/or less volatile (insurance motive) income. Since the insurance motive does not in theory give rise to clear differences in transfer behavior between educated and less educated migrants, we will focus here on the investment motive. The amount of investment financed by the family may include physical (e.g., transportation) and informational migration costs, as well as education expenditures, and the repayment of this implicit loan through remittances is obviously expected to depend on the magnitude of the loan. Hence, the investment motive clearly predicts that all else equal, more educated migrants should remit more to compensate the family for the additional education expenditures incurred. 2.3 Summary of predictions To summarize, both the altruistic and the exchange/investment motives for remittances give unclear theoretical predictions as to whether more educated migrants should remit more or less. Once the migrants' incomes are controlled for, their education level should not play any role under the altruistic hypothesis (assuming preferences are exogenous to education) except for its effect on the spatial distribution of the family. As already noted, the conventional wisdom here is that the highly educated tend to move with their closer family, which will affect remittances negatively. Similarly, education is expected to impact negatively on remittances under the exchange hypothesis as educated migrants have lower propensities to return. While this is likely to affect mainly the likelihood of remittances (i.e., to affect them at the extensive margin), bargaining mechanisms play in the other direction and should translate into higher remittances for those who remit (i.e., at the intensive margin), with the sign of the total expected effect being theoretically uncertain. Finally, education is likely to have a clear positive impact on remittances under the investment hypothesis. Given the discussion above and the fact that the descriptive statistics of our sample do not support the conjecture that more educated migrants have a substantially higher propensity to move with their family or a substantially lower propensity to return, we should expect the other forces at work to dominate and give rise to more remittances originating from migrants with more education; which is indeed what we find. 8 3. Data An intensive effort allows us to put together the most comprehensive micro-level database on remitting behavior currently available, comprising of data on 33,000 immigrants from developing countries from 14 surveys in 11 OECD destination countries. These countries were the destination for 79% of all global migrants to OECD countries in 2000 (Docquier and Marfouk, 2005). The focus on destination country data sources allows us to look directly at the relationship between education and remittance sending behavior by analyzing the decision to remit by the migrants themselves. It also enables us to capture the remittance behavior of individuals who emigrate with their entire household, whereas using household surveys from the remittance-recipient countries would typically miss such individuals. Since more-educated individuals are believed to be more likely to emigrate with their entire household than less- educated individuals (Faini, 2007), it is apparent that using surveys from migrant-sending countries will not be appropriate for examining the relationship between remittances and education. The majority of the empirical literature on immigrants has used data from either Census or labor force surveys. However, neither contains information on remittances. Instead, we must use special purpose surveys of immigrants. We have pulled together all of the publicly available datasets we are aware of,7 along with six additional surveys that are not publicly available, but which other researchers were generous enough to share. Table 1 provides an overview of our comprehensive database of migrants, outlining a summary of the datasets, sample population, and survey methodology. Our database covers a wide range of populations, covering both nationally representative surveys such as the New Immigrant Survey (NIS) in the United States (drawn from green card recipients) and the Spanish National Survey of Immigrants (ENI), which draws on a neighborhood sampling frame, as well as surveys which focus on specific migrant communities within the recipient country, such as the Black/Minority Ethnic Survey (BME) in the United Kingdom and the Belgium International Remittance Senders Household Survey, which surveyed immigrants from Senegal, Nigeria and the Congo. In all cases, we keep only migrants who were born in developing countries.8 7 Exceptions include longitudinal surveys of immigrants from Canada and New Zealand, which can only be accessed through datalabs in these countries, and so are not included here. 8 High Income countries are defined based on the World Bank Country Classification Code, April 2009. 9 For each country dataset we construct comparable covariates to measure household income, remittance behavior, family composition, and demographic characteristics. Remittances are typically measured at the household level, not the individual level. Our level of analysis is therefore the household and we define variables at this level whenever possible, for example by taking the highest level of schooling achieved by any migrant adult in the household. All financial values are reported in constant 2003 US$. In addition, we drop any observations where reported annual remittances are more than twice annual household income. We always use sample weights provided with the data. To pool the data, we post-stratify by country of birth and education so that the combined weighted observations match the distribution of developing country migrants to all OECD countries in the year 2000 (Docquier and Marfouk, 2005). See the data appendix for further details. Table 2 presents summary statistics for each country survey and the pooled samples of all destination countries. Overall, 37% of the migrants in our database have completed a university degree, ranging from 4% in the Spanish NIDI survey to 59% in the Belgium IRSHS survey. The remainder of the table summarizes the covariates by the maximum educational attainment of all adult migrants in the household. The significance stars indicate that the mean of the variable is statistically different between university-educated and non-university educated households. Altogether, including both the extensive and intensive margins, more educated migrants send home an average of $874 annually, compared with $650 for less educated migrants. There are two opposing effects: a negative effect of education on the extensive margin, and a positive effect of education on the intensive margin. At the extensive margin, migrants with a university degree are less likely to remit anything than those without a degree: 32% of low-skilled migrants send any money home, compared with 27% of university-educated migrants. However, conditional on remitting (the intensive margin), highly educated migrants send more money back, sending about 9% more than less-educated migrants. Table 2 also shows how characteristics which can affect remittance behavior differ between less- and more-educated migrants. Firstly, more skilled migrants are both more likely to live in a household where adults are working, as well as have a higher household income, than low skilled migrants. However, contrary to conventional wisdom, the household composition of the two types of migrants is not so different: on average, only 6% of low skilled migrants have a spouse outside the country, compared with 3% of high skilled migrants. Low skilled migrants are 10 significantly less likely to be married than high skilled migrants (74% against 63%). Low skilled migrants do have more children (an average of 2.03, versus 1.37 for high skilled migrants), as well as more children living outside the destination country (on average, 0.50 children compared to 0.25), than high skilled migrants. However, low skilled migrants also have more family inside the recipient country than high skill migrants: the average household size for low skilled migrants is 3.76 people, statistically different from a mean household size of 3.36 people for high skilled migrants. Another piece of conventional wisdom, that more educated people are less likely to return home, is also not supported by our data. In fact, more educated migrants have spent less time abroad than less educated migrants (a mean of 10.3 years for low-skill migrants, compared to a mean of 8.4 years for high-skill migrants), and the reported plans to return home are very similar between the two groups: 9% of skilled migrants report planning to return home, compared to 11% of low-skilled migrants. The simple comparison of means in Table 2 shows differences in remittance behavior by education status. However, these comparisons of means only allow us to say that more-educated developing country emigrants remit more than less-educated developing country emigrants. This risks confounding differences in remittance behavior among migrants from different countries with differences in remittance behavior by education level. So we next carry out regressions which enable us to establish whether more educated households from the average migrant- sending developing country remit more or less than less educated households from the same country. 4. Results Table 3 presents the main results. The top panel measures education by university degree and the bottom panel by years of schooling. In each panel, we regress three different remittance measures on education: total remittances (both extensive and intensive margins), an indicator for having remitted in the previous year (extensive margin) and log total remittances conditional on remitting (intensive margin). All regressions include country of birth fixed effects and dataset fixed effects. The key result in Table 3 is that more educated migrants remit more. The coefficient in the top-right shows that in the pooled sample migrants with a university degree remit $298 more per year than non-university educated migrants, when the mean annual remittance for all 11 migrants of $734. This overall effect is composed of a negative (statistically insignificant) effect at the extensive margin, and a highly significant positive effect on the intensive margin. The results are consistent when the second measure of education, years of schooling, is considered. When we consider the individual country results, we see mixed results at the extensive margin, with education significantly positively associated with the likelihood of remitting in two surveys (the USA New Immigrant Survey and Survey of Brazilians and Peruvians in Japan), significantly negatively associated with this likelihood in three surveys (the USA Pew survey and both Spanish surveys), and no significant relationship in the other six surveys, with three positive and three negative point estimates. One general observation is that a more negative relationship appears in surveys which focus on sampling migrants through community-sampling methods, such as the NiDi surveys which go to agglomeration points where migrants cluster, and the Pew Hispanic surveys which randomly dial phone numbers in high Hispanic areas. One might expect the educated migrants who live in such areas (and who take the time to respond to phone or on the street surveys) to perhaps be less successful than educated migrants who live in more integrated neighborhoods and thus who wouldn't be picked up in these surveys. In contrast, at the intensive margin the individual survey results show a positive relationship in 10 out of 12 surveys, five of which are statistically significant, and negative and insignificant relationships in the remaining two surveys. Thus it is not surprising that when we pool the data we find a strong positive association at the intensive level, and that this outweighs the small negative and insignificant relationship when it comes to the total effect. This point is made graphically by Figure 1, which plots the non-parametric relationship between total remittances and years of schooling, after linearly controlling for dataset fixed effects using a partial linear model (Robinson 1988), together with a 95% confidence interval, on a log scale. The vertical lines demarcate the quartiles of the distribution of years of schooling. Average remittances steadily increase from around $500 in the lowest education quartile to close to $1000 for those with university degrees. Moreover, the positive association is most strongly increasing for those with post-secondary education, which shows that not only do those with some university remit more than those without, but that postgraduates are remitting more than those with only a couple of years of university. 12 Next we use this microdata to explore some of the channels through which education might influence remittances. Section 2 set out a number of explanations as to why remitting behavior may vary with education. We observe proxies for many of these. In particular, we can control for differences in household income and work status, differences in household demographics and the presence of family abroad, differences in time spent abroad, differences in legality status, and differences in intentions to return home. Table 4 shows the results of adding this full set of variables to the pooled model, using years of education as the measure of educational attainment. These channels are operating as theory would predict. Households with more income and where adults work more are more likely to remit: households where a migrant member is working send $345 more annually, and a 10% increase in income will cause approximately an extra $38 to be remitted annually. As expected, family composition variables are also strongly significant both overall and for the extensive and intensive margins: a spouse outside the country is associated with a colossal additional $1120 remitted each year, approximately one and a half times the mean annual remittance over all migrants. Each child and parent living outside the destination country are associated with an additional $340 and $180 remitted annually respectively. Residing in the destination country legally is associated with an additional $400 annually, showing no evidence that legal migrants lose their desire to remain in contact with their country of origin. Migrants who plan to move back home also remit significantly more, but this effect is primarily through the extensive margin rather than the intensive margin. We then ask which channels account for the association between education and remittance behavior. Tables 5, 6 and 7 report how the coefficient on education in an OLS regression changes as controls are added for total remittances, the intensive margin, and the extensive margin respectively. The top panel in each table measures education by a university degree and the bottom panel uses years of schooling. In each case we begin by showing the baseline education coefficient from Table 3, which comes from regressing remittances only on education and country of birth and dataset fixed effects. The next row shows how this coefficient changes when we add controls for income and work status. The third row instead adds controls for family composition (household size, dummy if married, dummy if spouse is outside the country, number of children, number of children outside the country, number of parents and 13 number of parents outside the country). The final row adds all the controls from Table 4: both the income and family controls, as well as legal status, time spent abroad, and intent to return home. We find that remittance behavior is primarily accounted for by income, and not by differences in family composition. The baseline result for total remittances from Table 3, controlling only for country of birth and dataset fixed effects, is that migrants with a university degree remit $300 more than migrants without a university degree. Controlling for the full set of covariates (the `all' row) reduces the coefficient on university degree by two-thirds, and it becomes statistically insignificant. The third row adds just the family composition variables to the baseline specification. The main hypothesis for why less skilled migrants remit more is because they are more likely to have family members outside the country. Therefore, we would expect that controlling only for this (but not for other variables such as income) would increase the coefficient on education, but we find the opposite - the coefficient on education reduces to $230 from $300, and remains statistically significant. This casts doubt on the idea that low skilled migrants remit more because of their family composition. One explanation for this is the earlier observation that low skilled migrants are not only likely to have more family abroad, but they are also likely to live in households with more people in the host country. The second row of the table adds just income variables (a dummy for working and log income) to the baseline specification. The coefficient on university degree is cut by more than half, and is no longer statistically significant. This suggests that the income effect is a key channel through which education affects remittances: in short, more educated people send back more money simply because they have higher incomes. Although we find that education is insignificant once we control for income in the pooled sample, this masks heterogeneity in the individual surveys. For example, the education coefficient remains statistically significant even after controlling for all available covariates for three datasets: the Spanish ENI survey, the USA Pew dataset, and the USA NIS survey. There are several reasons why the education coefficient might remain significant in some datasets and not others that we are not able to examine with our dataset. One key variable we cannot control for is the socioeconomic status of the family in the home country. More educated individuals might come from better-off families, and therefore not need to send back as much money. This 14 could explain the negative coefficient in the ENI and the Pew dataset.9 Or more educated individuals might have fewer ties to their home country. We have attempted to control for this using time spent away from the home country, and desire to return home, but this may not fully capture the strength of the ties. We also do not have data on whether migrants are repaying family for loans, for example for education. One additional key issue is that our use of cross- section data does not yield any information about economic shocks that affect either the migrant or the family. Table 6 examines the extensive margin. More educated migrants are less likely to remit anything in the baseline specification, but this is not statistically significant. We find that the negative effect of education on the decision to remit anything is strengthened by the inclusion of different sets of covariates. The coefficient on education (measured by university degree) is negative and significant once any covariates are included. The alternative measure of education, years of schooling, is not statistically significant. The intensive margin result (Table 7), that once the decision is made to remit, more educated migrants remit more, again appears to be driven by the income effect. Adding only family variables to the baseline specification reduces the coefficient on university education by approximately 3%, but it remains highly significant. However, if only income variables are added to only the baseline specification the coefficient becomes statistically insignificant, with approximately the same point value as the full specification with the full set of covariates. 5. Conclusions This paper answers the question "Do more educated migrants remit more?" using micro level data. Our approach has the key advantage over other papers in this literature (Faini, 2007 and Niimi, et al. 2008) in that we are able to link the remittance decision of the migrant with their education level and therefore answer this question directly. In contrast, cross-country macroeconomic analyses which relate the amount of remittances received at a country level to the share of migrants with tertiary education are able at best to tell us whether countries which 9 An alternative explanation may be that the high-earning highly educated are less likely to respond to surveys. Survey methods which draw a sample from areas which are known to have a high concentration of migrants (e.g. the Pew survey) or from sampling locations where migrants tend to congregate (e.g. the NiDi surveys) are particularly likely to miss highly educated high-income individuals who may be living in areas where there are less of their countrymen. 15 send a larger share of highly skilled migrants receive less or more remittances than countries which send relatively fewer skilled migrants. We pull together the most comprehensive database on migrants currently available, comprising over 33,000 migrants in 11 OECD countries. Using this database we examine exactly the decision between remittance decisions and education. Combining both the extensive margin (the decision to remit at all) and the intensive margin (the decision how much to remit), the fact is that more educated migrants do remit significantly more ­ migrants with an university degree remit $300 more yearly than migrants without an university degree. We are able to analyze several competing theoretical channels to understand this result. We find that differences in household composition between high and low skilled migrants do not explain the observed remittance behavior. One explanation may be that although low skilled migrants are more likely to have a spouse and children left in the home country, they have larger families in general than high skilled migrants and tend to live in larger households in the host country. In contrast, we find considerable support that an income effect is the dominant channel through which education operates. More educated migrants earn more money and for this reason remit more than low skilled migrants. This paper has important implications for migration policy. There is much concern about the negative effects of the `brain drain' on developing countries. However, our main finding that remittances increase with education, illustrates one beneficial dimension of high-skilled migration for developing countries. High skilled migrants work better jobs and earn more money than low skilled migrants, and in turn, send more money back home in remittance flows. This suggests that sending highly skilled migrants who are able to earn higher income is one way to increase remittance flows. 16 References Cox, D., Z. Eser and E. Jimenez (1998): Motives for private transfers over the life cycle: An analytical framework and evidence for Peru, Journal of Development Economics, 55: 57-80. Cox, Donald (1987): Motives for private transfers, Journal of Political Economy, 95, 3: 508-46. Docquier, Frédéric and Abdeslam Marfouk (2005) "International Migration by Education Attainment, 1990-2000", pp. 151-99 in C. Özden and M. Schiff (eds.) International Migration, Remittances and the Brain Drain. New York: Palgrave, Macmillan. Faini, Riccardo (2007) "Remittances and the Brain Drain: Do more skilled migrants remit more?", World Bank Economic Review 21(2): 177-91. Groenewold, George, and Richard Bilsborrow (2004) "Design of Samples for International Migration Surveys: Methodological Considerations, Practical Constraints and Lessons Learned from a Multi-Country Study in Africa and Europe", Population Association of America 2004 General Conference. IADB (2005) "Survey of Brazilians and Peruvians in Japan" commissioned by the Multilateral Investment Fund Miotti, Luis, El Mouhoub Mouhoud, and Joel Oudinet (2009) "Migrations and Determinants of Remittances to Southern Mediterranean Countries: When History Matters", Paper presented at the 2nd Migration and Development Conference, Washington DC, September 10-11. Niimi, Yoko, Çaglar Özden, and Maurice Schiff (2008) "Remittances and the Brain Drain: Skilled Migrants do remit less", IZA Working Paper no. 3393. OECD (2007) Policy Coherence for Development 2007: Migration and Developing Countries. OECD, Paris. Rapoport, Hillel and Frederic Docquier (2006): The economics of migrants' remittances, in S.-C. Kolm and J. Mercier Ythier, eds.: Handbook of the Economics of Giving, Altruism and Reciprocity, North Holland, Chapter 17, pp. 1135-98. Robinson, Peter M. (1988) "Root-N Consistent Semiparametric Regression", Econometrica 56: 931-54. Siegel, Melissa (2007) "Immigrant Integration and Remittance Channel Choice", Working Paper Stark, Oded (1991): The migration of labor, Oxford and Cambridge, MA: Basil Blackwell. World Bank (2008) Migration and Remittances Factbook 2008. World Bank, Washington D.C. World Bank (2009) "Migration and Development Brief No. 9", http://siteresources.worldbank.org/INTPROSPECTS/Resources/MD_Brief9_Mar2009.pdf [accessed July 10, 2009]. 17 Data Appendix This paper combines household surveys from many countries, all with different samples and questions. This appendix outlines the actual remittance questions asked in each survey and how all variables used in the paper were coded. General rules Financial variables are annualized, converted to US dollars using nominal exchange rates from the Penn World Table, then deflated with the CPI to 2003 levels. To interpolate information provided only in binned categories, we infer: o Years of education as the midpoints of the schooling ranges o Financial values as the geometric midpoints of the money ranges o An upper bound on the highest category of twice level of the lower bound on this category "Don't know" is coded as missing. For example, about one-third of the "Will return home" indicator values are missing for this reason. We trim all reported remittances greater than twice annual (positive) income Country of birth We drop all migrants born in high income countries. Migrants are classified as being born in a High Income country based on the April 2009 World Bank list When only groupings of countries are provided for some observations, each grouping receives a new dataset-specific "country" code. Only the USA NIS dataset brings the previous two points into serious conflict. For this dataset, we must classify as "high income" everyone born in Europe & Central Asia, except Poland, Russia and Ukraine. And our definition of a developing country in the NIS must include the high income countries: Antigua & Barbuda, Aruba, Bahamas, Bahrain, Barbados, Brunei Darussalam, Cayman Islands, Cyprus, Equatorial Guinea, Faeroe Islands, French Polynesia, Guam, Hong Kong, Japan, Kuwait, Macao, Netherlands Antilles, New Caledonia, Northern Mariana Islands, Oman, Puerto Rico, Qatar, Saudi Arabia, Singapore, Trinidad & Tobago, United Arab Emirates, Virgin Islands. The Belgium IRSHS dataset does not explicitly ask country of birth: we have assigned respondents their ethnicity as country of birth if they answered they were born outside of Belgium. Sample weights 18 We always use the sampling weights provided with each survey dataset. When pooling the datasets we start with these, and then re-scale the weights in three steps to allow comparisons across surveys, eventually using weights post-stratified by education and country of birth in our baseline results: 1. Weight each survey in proportion to its sample size. The weights in each survey were rescaled to sum to the number of observations of developing country migrants in that survey. 2. Post-stratify by education and continent of origin. After weighting each survey in proportion to its sample size, the surveys were pooled and divided into 8 cells: by 4 continents of birth and by whether the respondent had a university degree. The weights in each cell were then rescaled to sum to the total number of developing country migrants in OECD countries in this cell in the year 2000, from the Brain Drain database (Docquier and Marfouk 2005). Migrants in the Brain Drain database of unknown education were assigned an educational attainment in proportion to that of their compatriots so that country totals and relative skill fractions remained accurate. 3. Post-stratify by education and country of origin. After constructing the continental post-stratified weights, we calculate aggregate sample weights for each country in the continent as the sum across surveys of weights of observations of known countries, and of shares of weights of observations of groupings of unknown countries in the continent (eg, "Other Africa"), where the shares of each country within the grouping are calculated from the Brain Drain database. These aggregate sample weights are then re-scaled to the number of migrants in this country-by-education cell in the Brain Drain database. Finally, these total re-scaled weights are re-apportioned to the (sometimes survey-specific) country codes following the reverse procedure (ie, using shares from the Pooled data). In this way, we create weighting cells that, for each survey, partition each continent-by- education cell, but allow different surveys to have different country grouping codes. Total Remittances Target definition Value of money and goods sent by household outside country in the past year Australia LSIA "How much money have you (or your spouse who immigrated with you) sent to relatives or friends overseas since your last interview?" Annualized based on time since last interview Belgium IRSHS "Over the past 12 months, what is the total value (in Euro) of money that you sent to this person in [x]" "What is the total value of goods that you sent to [x] over the past 12 months?" France 2MO "During the last twelve months, in which category is the total transfers of money that you have made to your home country?" France DREES Not available: Survey of extensive margin only Germany SOEP Have you personally given payments or support during the past year 19 (1999) to relatives or other persons outside of your household? Summed over all household members Italy NIDI Following Remits questions: "About how much money was this in total, during these past twelve months?" Japan IADB "How much money ­ on average ­ do you send each time you send money to a family member in Brazil?" "How frequently do you send money to your family in Brazil?" Netherlands CSR "How much money will you send each year to this country?" Norway LKI Not available: Survey of extensive margin only Spain ENI "What is the total amount that you forwarded during the last year?" Spain NIDI Same as Italy NIDI UK BME "Thinking now about the last 12 months, how much money do you think this household has sent to family or friends abroad? Please give an approximate value if you are not sure" USA NIS "How much [financial assistance (such as gifts, transfers, bequests, or loans)] you give during the last twelve months to [XXX] during periods when he/she was not living with you in the same house?" Asked about relatives, friends and employers. Also include "any non-financial assistance in the form of goods or materials" given to anyone other than spouse or children. Includes some transfers for which the country of person [XXX] cannot be determined (less than one-third of total remittances) USA Pew Following Remit questions: "How often?" "On average, how much money do you send?" Remits Indicator Target definition 1 if household sent money or goods outside country in the past year Australia LSIA "Since your last interview have you (or your spouse who immigrated with you) sent any money to relatives or friends overseas?" Annualized based on time since last interview Belgium IRSHS "Over the past 12 months, did you or anyone living in this residence send money to anybody in [x]?" France 2MO Not applicable: Survey of remitters, conducted at post office when remitting. France DREES "Do you send or bring money to your home country?" Germany SOEP 1 if answer to total remittance question (above) > 0 Italy NIDI 1 if answers yes to "In the past twelve months, did you or anyone else in this household send or bring money to family, relatives or friends in your country of birth to be used for their own benefit?", or to "In the past twelve months, did you or anyone else in this household send or bring 20 money to your country of birth which was used to benefit the community there?" Japan IADB "Have you ever sent money to a family member in Brazil?" Netherlands CSR Not applicable: Survey of remitters. Respondent must answer "yes" to the question "Do you or your partner ever send money abroad" for survey to be administered. Norway LKI "Do you send money regularly to family or relatives in the homeland? If so, to whom?" Spain ENI "Do you send money overseas?" Spain NIDI Same as Italy NIDI UK BME Not applicable: Survey of remitters. Administered to HH only if had remitted to family and friends abroad within the last 12 months. USA NIS Defined as positive total remittances. (A simple yes/no question was also asked, but only of 20% of the sample.) USA Pew "Have you sent money to anyone (country of origin) over the past year?" For the remaining variables, we simply note our target definition and any discrepancy from this for each dataset, using the following short-hand: The variable definition in this survey meets the target The variable is not available in this survey Education measured by University degree Target definition 1 if any migrant adult in household has a 3 year University degree or greater Australia LSIA Only includes respondent and spouse--and only about one-third of spouses were interviewed Belgium IRSHS France 2MO Only includes respondent France DREES Only includes respondent, as spouse education categories not fine enough to distinguish university from high school graduation Germany SOEP Italy NIDI Japan IADB Only includes respondent Netherlands CSR Only includes respondent Norway LKI Only includes respondent Spain ENI Only includes respondent Spain NIDI UK BME Only includes respondent USA NIS Only includes respondent and spouse USA Pew Only includes respondent 21 Years of Education Target definition Maximum years of formal education of all migrant adults in household Australia LSIA Continuous variable only for those with post-secondary education. For others, coded based on schooling categories. Only includes respondent and spouse--and only about one-third of spouses were interviewed Belgium IRSHS France 2MO Only includes respondent France DREES Only includes respondent and spouse. For respondent, only observe free- response highest qualification. So assume doctors & engineers have university, and all other trade certificates mentioned are equivalent to finishing high school. For spouse, only observe limited age at completion categories Germany SOEP Use the internally consistent variable coded to match highest educational qualification Italy NIDI Japan IADB Only includes respondent Netherlands CSR Only includes respondent Norway LKI Only includes respondent Spain ENI Only includes respondent Spain NIDI UK BME Only includes respondent USA NIS Only includes respondent, spouse, respondent's parents, & children in household USA Pew Only includes respondent Income Target definition After-tax household income in the past year Australia LSIA Values are before taxes and deductions Belgium IRSHS France 2MO France DREES Use personal income if missing information on household income Germany SOEP Italy NIDI Japan IADB Netherlands CSR Norway LKI Spain ENI Is personal income, not household income Spain NIDI UK BME Values are before taxes and deductions USA NIS Values are before taxes and deductions 22 USA Pew Values are before taxes and deductions Working Target definition 1 if any migrant adult in household is engaged in employment Australia LSIA Only includes respondent and spouse--and only about one-third of spouses were interviewed Belgium IRSHS France 2MO Only includes respondent and spouse France DREES Germany SOEP Italy NIDI Japan IADB Coded on basis of "what most nearly describes the type of work you do?" Netherlands CSR Norway LKI Only includes respondent Spain ENI Only includes respondent Spain NIDI UK BME Only includes respondent USA NIS Only includes respondent and spouse, and spouse coded on basis of "main occupation of this person during your marriage" USA Pew Only includes respondent Household size Target definition Number of people currently living in home of respondent Australia LSIA Belgium IRSHS France 2MO France DREES Germany SOEP Italy NIDI Japan IADB Netherlands CSR Norway LKI Spain ENI Spain NIDI UK BME USA NIS USA Pew 23 Married and Spouse outside of country Married target 1 if main respondent is married Spouse outside of 1 if main respondent is married to someone currently living outside country target country of survey Australia LSIA Belgium IRSHS Neither variable available France 2MO Spouse outside country not available France DREES Germany SOEP Spouse outside country not available Italy NIDI Japan IADB Netherlands CSR Neither variable available Norway LKI Spain ENI Spain NIDI UK BME Neither variable available USA NIS USA Pew Spouse outside country not available Parents and Children, and Parents and Children outside of country Target definitions Numbers of alive parents and children related to main respondent and their spouse, and the numbers of these currently living outside country of survey Australia LSIA These variables are for prior wave three years earlier, with the exception of children in household (which we use to update the total children count) Belgium IRSHS France 2MO Numbers of Parents and Children not available. Parents and Children outside country are coded only as indicator variables France DREES Have both Children variables, but neither Parents variables are available Germany SOEP Have both parent variables, but children outside of country not available Italy NIDI Japan IADB Netherlands CSR Number of parents and children not available. Children outside country coded only as an indicator variable Norway LKI Underestimate parents outside country, as only includes location of respondents' parents, not spouses' too Spain ENI Underestimate parents outside country, as only includes location of respondents' parents, not spouses' too 24 Spain NIDI UK BME USA NIS Underestimate parents outside country, as only includes location of respondents' parents, not spouses' too USA Pew Only asks about how many children live in home country, but not spouse nor parents. Years spent abroad Target definition Years main respondent has spent outside country of birth Australia LSIA Only includes time spent in Australia Belgium IRSHS "What year did migrate to Belgium?" France 2MO "How long have you lived in France?" France DREES Year of interview minus year left country of birth permanently Germany SOEP 2000 ­ year immigrated to Germany Italy NIDI Year of interview minus year of first emigration Japan IADB "How many years have you been living in Japan?" Netherlands CSR "How long have you lived in the Netherlands?" Norway LKI Spain ENI "In which year did you arrive in Spain?" Spain NIDI Year of interview minus year of first emigration UK BME "When did you come to live in the UK?" USA NIS Year of interview minus year first left country of birth for 60+ days USA Pew "How many years have you lived in the (continental) United States?" Legal immigrant indicator Target definition 1 if main respondent has nationally legal immigration status Australia LSIA 1 by sampling definition Belgium IRSHS France 2MO France DREES 1 by sampling definition Germany SOEP Italy NIDI "Did you have a visa or residence or work permits when you entered this country?" Japan IADB Netherlands CSR Norway LKI Spain ENI Coded yes if permanent resident; temporary resident; refugee; student; or European. Spain NIDI Same as Italy NIDI UK BME 25 USA NIS 1 by sampling definition USA Pew Will return home indicator Target definition 1 if main respondent intends to return permanently to country of birth Australia LSIA Belgium IRSHS France 2MO France DREES Germany SOEP If respondent answers no to the question "Do you want to stay in Germany forever?" Italy NIDI Japan IADB Netherlands CSR Norway LKI If answer plans to move to another country when asked if will stay in house. Spain ENI Asks for the next five years Spain NIDI UK BME If respond "Very likely" or "quite likely" to the question "How likely are you to return abroad to live in the country you initially came from?" USA NIS Inverse of "Do you intend to live in the United States for the rest of your life?" USA Pew If doesn't answer "As long as you are able/can", or "All your life" to the question "How long to you think you will remain in the US?" 26 Table 1: Migrant datasets Dataset Name Year N10 Population Methodology Australia Longitudinal Survey of 1997 2,537 Primary applicant migrant arrivals Sample of official records LSIA11 Immigrants to Australia September 1993 - August 1995 of those living in cities Belgium International Remittance 2005 377 -- Awaiting documentation -- Awaiting documentation IRSHS Senders Household Survey France 2MO12 Survey of Households' 2007 713 Remitters to Algeria, Morocco, Interviews of remitters at Transfer of Funds to their Tunisia, Turkey and the countries of post offices in high- Countries of Origin Sub-Saharan Africa migrant regions France Profile & Track of Migrants 2006 4,278 New & regularized migrants with 1+ Sample of official records DREES13 Survey year residence permits Germany German Socio-Economic 2000 854 Resident population of the Federal Sample of official records SOEP14 Panel Study Republic of Germany in 1984. Italy NIDI15 NiDi International Migration 1997 1,072 Egyptians & Ghanaians who Interviews at migrant Survey immigrated within past 10 years meeting places Japan IADB16 Survey of Brazilians and 2005 846 Latin American immigrant adults Interviews in 15 cities Peruvians in Japan living in Japan Netherlands Consumentenbond Survey 2005 648 Major immigrant populations: Face-to-face interviews CSR17 of Remittances Moroccans, Turks, Surinamese, Antilleans, Somalis, and Ghanaians Norway Living Conditions of 1996 2466 The survey includes immigrants Representative survey of LKI18 Immigrants Survey from ten countries Bosnia immigrant population from 10 Number of observations used to calculate first result in each column of Table 2. 11 http://www.immi.gov.au/media/research/lsia/. We choose the 1997 round to maximize the number of remittance observations. 12 Miotti, Mouhoud & Oudinet (2009). 13 Miotti, Mouhoud & Oudinet (2009). 14 The data used in this publication was made available to us by the German Socio-Economic Panel Study (SOEP) at the German Institute for Economic Research (DIW Berlin). Year 2000 cross section chosen as had largest number of foreign born individuals in sample 15 Groenewold & Bilsborrow (2004). 16 IADB (2005). 17 Siegel (2007). 18 Norwegian Social Science Data Services (NSD) 27 Herzegovina, Chile, Iraq, Iran, these countries Pakistan, Serbia, Somalia, Sri Lanka, Turkey and Vietnam Spain ENI19 National Survey of 2006 9,234 Foreign-born who (intend to) live in Sample of official Immigrants Spain for 1+ years neighborhood rosters Spain NIDI20 NiDi International Migration 1997 1,020 Moroccans & Senegalese who Geographical sampling, & Survey immigrated within past 10 years references from sampled UK BME Black / Minority Ethnic 2006 993 Migrant minorities who have Sampling of geographical Remittance Survey remitted in past 12 months blocks USA NIS21 New Immigrant Survey 2003 7,046 Migrants receiving green cards May Sample of official records ­ Novermber 1993 USA Pew22 Pew National Survey of 2006 1,084 Nationally representative sample of Sampled phone numbers in Latinos Latino respondents ages 18 and high-Latino areas older 19 http://www.ine.es/prodyser/micro_inmigra.htm 20 Groenewold & Bilsborrow (2004). 21 http://nis.princeton.edu/. 22 http://pewhispanic.org/datasets/signup.php?DatasetID=7. 28 Table 2: Survey Means by Education Australia Belgium France France Germany Italy Japan Netherlands Norway Spain Spain UK USA USA Pooled Pooled Pooled LSIA IRSHS 2MO DREES SOEP NIDI IADB CSR LKI ENI NIDI BME NIS Pew Extensive Intensive Total Observations 2,656 451 717 4,280 900 1,153 1,065 836 2,466 10,282 1,113 1,152 7,352 1,304 33,022 28,981 26,276 Fraction with 0.32 0.59 0.07 0.18 0.20 0.21 0.14 0.11 0.12 0.23 0.04 0.20 0.34 0.06 0.36 0.37 0.37 University Total remittances ($ p.a.) No university 286 1,681 1,380 368 2,724 2,662 993 988 3,099 2,691 375 1,530 699 793 650 University 379 2,475* 1,652 511 2,227 2,920 1,405* 743** 2,835 2,629 1,145** 671** 868 897 874 Fraction who remit No university 0.41 0.91 0.23 0.18 0.60 0.80 0.34 0.49 0.78 0.15 0.54 0.31 0.32 0.32 University 0.37 0.86 0.23 0.20 0.45** 0.90** 0.29 0.37** 0.48** 0.17 0.43 0.27** 0.27** 0.27** Log remittances No university 5.78 6.92 6.62 6.97 7.89 7.76 6.49 7.15 7.99 6.77 7.01 7.34 6.96 6.82 6.91 University 6.23** 7.29** 6.92 7.01 8.11 7.70 6.81** 7.22 8.49* 6.92 7.40** 6.97 7.02 6.97* 7.00 Household income ($ p.a.) No university 14,457 16,918 23,173 18,612 19,526 10,903 34,014 32,467 14,066 9,074 44,631 33,297 22,417 22,624 23,583 21,964 University 13,556 25,534** 31,301* 28,674** 21,984 13,302* 43,624** 41,995** 19,914** 10,168 50,565 61,084 34,729** 38,948** 38,669** 39,087** Log income No university 9.5 9.5 9.8 9.6 9.8 9.3 10.2 10.1 9.4 9.0 10.3 9.2 9.7 9.6 9.5 9.5 University 9.8** 9.8** 10.0 9.9** 9.8 9.4 10.4 10.3** 9.7** 9.2 10.4 10.0** 10.2** 9.9** 9.9** 9.9** Working No university 0.48 0.70 0.87 0.80 0.63 0.82 0.93 0.48 0.68 0.81 0.82 0.66 0.66 0.65 0.66 0.64 University 0.67** 0.74 0.86 0.86** 0.67 0.87 0.93 0.70** 0.73** 0.66 0.90** 0.78** 0.77* 0.75** 0.74** 0.73** Household size No university 3.81 1.88 2.51 2.90 1.80 1.53 3.82 1.84 3.33 4.10 3.44 3.73 3.76 University 3.44** 2.55** 1.90** 2.58 2.16** 1.76** 3.19** 1.95 3.04* 3.49** 3.17** 3.35** 3.36** Married No university 0.73 0.72 0.65 0.67 0.61 0.56 0.47 0.64 0.66 0.54 0.63 0.63 0.63 University 0.80** 0.51** 0.71* 0.59 0.60 0.48* 0.56** 0.51 0.86** 0.56 0.73** 0.74** 0.74** Spouse outside country No university 0.03 0.25 0.05 0.06 0.42 0.05 0.05 0.05 0.06 University 0.01* 0.19 0.01** 0.05 0.10** 0.03** 0.03** 0.03** 0.03** Number of children No university 1.29 1.16 1.78 1.06 2.50 2.06 1.58 2.25 2.37 1.99 2.05 2.03 University 1.22 0.89** 1.27** 1.00 2.15** 1.85** 0.62** 1.35** 1.81** 1.37** 1.37** 1.37** Children outside country No university 0.21 0.10 0.25 0.71 0.20 0.16 0.38 1.10 0.73 0.49 0.45 0.48 0.50 University 0.07** 0.06 0.17** 0.49* 0.15 0.09 0.26** 0.21** 0.31** 0.37 0.24** 0.25** 0.25** Number of parents No university 1.97 1.13 0.95 1.35 1.42 1.27 2.18 1.81 1.84 1.83 University 2.32** 1.03 0.70** 1.32 1.35** 1.37 2.74** 2.18** 2.21** 2.23** Parents outside country No university 1.48 0.81 0.42 0.94 1.03 1.01 1.23 0.88 0.98 0.98 1.00 University 2.00** 0.88 0.54 0.67** 1.17* 1.04 1.33 1.26** 1.30** 1.31** 1.31** Years spent abroad No university 3.70 9.32 17.90 4.00 19.20 6.69 8.35 18.46 10.06 7.27 14.89 7.35 16.43 9.20 11.17 10.29 University 3.91** 12.28** 12.70** 4.21 13.51** 7.02 9.18 19.36 12.41** 6.74 14.66 7.05 18.34 8.06** 8.75** 8.40** Legal immigrant No university 1.00 1.00 0.84 0.51 0.66 1.00 0.87 0.84 0.85 University 1.00 1.00 0.85 0.39** 0.82* 1.00 0.85** 0.84 0.84 Will return home No university 0.02 0.45 0.06 0.23 0.39 0.01 0.08 0.35 0.63 0.09 0.19 0.09 0.16 0.11 University 0.04 0.65** 0.10* 0.17 0.53** 0.02 0.08 0.51 0.70 0.13** 0.14 0.09 0.12** 0.09* Note: * p < 5%, ** p < 1%. All households not missing university status. Trimmed remittances greater than twice annual income. Pooled sample weights post-stratified by education and country of birth. 29 Table 3: Coefficients from Regressions of Remittance Measures on Education Australia Belgium France France Germany Italy Japan Netherlands Norway Spain Spain UK USA USA Pooled Pooled Pooled LSIA IRSHS 2MO DREES SOEP NIDI IADB CSR LKI ENI NIDI BME NIS Pew Extensive Intensive Total A. Education Measured by University Degree Total Remittances 58.4 922.8** 291.0 526.6 237.5 92.6 168.8 769.5** 554.0* 298.0* ($ per annum) Observations 2,537 377 854 1,072 846 9,234 1,020 7,046 1,084 24,033 Extensive margin: 0.019 0.055 0.014 0.042 0.065 0.091** 0.012 0.049** 0.232** 0.038** 0.140* 0.018 0.010 Remits indicator Observations 2,654 451 4,278 854 1,153 1,030 2,466 10,282 1,112 7,113 1,296 32,651 25,907 Intensive margin: 0.341* 0.433** 0.363 0.492 0.073 0.057 0.333** 0.093 0.430* 0.168 0.397* 0.199 0.249** 0.226** Log remittances Observations 958 317 713 184 545 690 648 3,966 761 993 1,118 514 11,392 9,038 B. Education Measured by Years of Schooling Total Remittances 19.08* 86.50 26.39 7.56 3.03 2.40 13.65 86.53 64.89 57.81 ($ per annum) Observations 2,531 377 854 1,072 846 9,164 1,020 7,033 1,084 23,944 Extensive margin: 0.0080 0.0042 0.0018 0.0145 0.0010 0.0024** 0.0008 0.0023 0.0072** 0.0034** 0.0010 0.0006 0.0014 Remits indicator Observations 2,648 451 5,529 854 1,153 1,030 2,450 10,201 1,112 7,100 1,296 32,535 25,807 Intensive margin: 0.0441* 0.0341 0.0224* 0.0085 0.0032 0.0040 0.0247* 0.0199** 0.0091 0.0548* 0.0329* 0.0369 0.0256** 0.0229** Log remittances Observations 956 317 713 184 545 690 648 3,942 761 993 1,116 514 11,364 9,010 C. Means Total Remittances 316 2,159 1,399 396 2,621 2,692 1,040 932 3,089 2,679 633 1,479 764 2,466 734 ($ per annum) Fraction who Remit 0.40 0.85 0.23 0.19 0.53 0.77 0.34 0.41 0.75 0.15 0.46 0.30 1.00 0.27 Frac. with University 0.32 0.60 0.07 0.18 0.20 0.21 0.12 0.11 0.12 0.23 0.04 0.20 0.33 0.06 0.36 0.31 0.38 Years of Education 13.4 14.2 7.7 12.0 11.5 14.1 13.3 10.7 12.2 11.4 7.5 13.4 13.4 9.4 12.9 12.3 13.0 Note: * p < 5%, ** p < 1%. Six regressions per column. All regressions include country of birth and dataset fixed effects. Means are for sample used in first regression in each column. Trimmed remittances greater than twice annual income. Pooled sample weights post-stratified by education and country of birth. 30 Table 4: Remittance Measures on Years of Schooling for Pooled Sample with All Controls Total Extensive Intensive Remittances Remits Log remittances Years of education 37.81 0.002* 0.017** (29.64) (0.001) (0.005) Log income 384.59** 0.023** 0.364** (105.37) (0.003) (0.034) Working 345.06** 0.113** 0.514** (90.80) (0.010) (0.065) Household size 8.14 0.002 0.015 (17.67) (0.002) (0.016) Married 89.77 0.004 0.097 (68.78) (0.010) (0.061) Spouse outside country 1,120.95** 0.145** 0.568** (236.04) (0.020) (0.097) Number of children 121.56** 0.006 0.099** (36.44) (0.003) (0.027) Children outside country 337.78** 0.048** 0.228** (75.14) (0.006) (0.039) Number of parents 47.07 0.020** 0.125** (53.56) (0.005) (0.045) Parents outside country 182.58** 0.063** 0.243** (38.02) (0.006) (0.045) Years spent abroad / 100 2,539.77 0.251** 1.744** (2,533.08) (0.095) (0.656) Years spent abroad squared / 100 31.43 0.010** 0.033* (27.14) (0.002) (0.015) Legal immigrant 398.79** 0.096** 0.167** (121.36) (0.018) (0.061) Will return home 692.30** 0.095** 0.085 (201.83) (0.021) (0.072) Number of observations 23,944 32,535 11,364 Note: * p < 5%, ** p < 1%. Regressions include country of birth and dataset fixed effects, and dummy variables for missing covariates. Trimmed remittances greater than twice annual income. Pooled sample weights post-stratified by education and country of birth. 31 Table 5: Education Coefficient as Controls are Added: Total Remittances Australia Belgium Germany Italy Japan Spain Spain USA USA Pooled LSIA IRSHS SOEP NIDI IADB ENI NIDI NIS Pew Total A. Education Measured by University Degree Baseline 58.4 922.8** 291.0 526.6 237.5 92.6 168.8 769.5** 554.0* 298.0* (61.1) (351.4) (275.6) (411.6) (374.1) (62.8) (749.4) (254.4) (227.2) (137.6) Income 10.1 557.0* 238.5 623.9 166.5 189.3** 24.7 396.6* 741.5** 102.3 (62.4) (281.4) (262.2) (407.2) (359.8) (63.5) (729.0) (174.4) (263.8) (92.8) Family 29.8 534.7 237.8 306.7 317.5 112.8 6.9 623.6** 698.6** 228.2* (61.4) (310.5) (243.5) (394.7) (380.3) (57.6) (725.9) (204.7) (241.9) (103.1) All 16.5 475.8 144.6 539.6 328.7 181.7** 266.2 402.2** 835.7** 99.9 (62.1) (272.7) (179.8) (383.3) (365.3) (58.6) (698.6) (154.3) (269.9) (71.6) Observations 2,537 377 854 1,072 846 9,234 1,020 7,046 1,084 24,033 B. Education Measured by Years of Schooling Baseline 19.08* 86.50 26.39 7.56 3.03 2.40 13.65 86.53 64.89 57.81 (9.01) (45.11) (29.37) (34.05) (7.92) (7.36) (19.95) (46.50) (44.97) (37.08) Income 7.99 47.80 3.51 32.44 2.59 13.39 26.95 44.98 49.18 32.12 (8.69) (38.28) (27.33) (33.39) (11.50) (7.41) (19.68) (40.00) (45.09) (31.98) Family 17.03 29.28 25.56 47.31 1.86 3.93 10.32 80.78 47.95 55.43 (8.98) (38.45) (27.79) (34.93) (8.62) (6.84) (19.98) (44.75) (46.37) (34.24) All 8.86 33.77 9.66 22.64 1.99 7.57 4.50 54.81 27.01 37.81 (8.91) (36.94) (22.82) (32.79) (10.63) (6.84) (19.32) (37.32) (46.38) (29.64) Observations 2,531 377 854 1,072 846 9,164 1,020 7,033 1,084 23,944 Note: * p < 5%, ** p < 1%. Baseline row includes only country of birth and dataset fixed effects. Income row adds working dummy and log income to Baseline. Family row adds seven family member controls to Baseline. All row is full specification from Table 4. Trimmed remittances greater than twice annual income. Pooled sample weights post-stratified by education and country of birth. 32 Table 6: Education Coefficient as Controls are Added: Remits Indicator Australia Belgium France Germany Italy Japan Norway Spain Spain USA USA Pooled Pooled LSIA IRSHS DREES SOEP NIDI IADB LKI ENI NIDI NIS Pew Extensive Total A. Education Measured by University Degree Baseline 0.019 0.055 0.014 0.042 0.065 0.091** 0.012 0.049** 0.232** 0.038** 0.140* 0.018 0.010 (0.032) (0.029) (0.027) (0.048) (0.043) (0.034) (0.030) (0.015) (0.081) (0.011) (0.060) (0.010) (0.010) Income 0.052 0.112** 0.027 0.023 0.074 0.082* 0.020 0.062** 0.185* 0.000 0.165** 0.043** 0.033** (0.032) (0.029) (0.027) (0.047) (0.042) (0.035) (0.030) (0.015) (0.078) (0.011) (0.058) (0.010) (0.011) Family 0.062 0.069* 0.015 0.039 0.046 0.088* 0.004 0.067** 0.234** 0.022 0.148* 0.031** 0.026* (0.032) (0.032) (0.027) (0.048) (0.041) (0.035) (0.030) (0.013) (0.081) (0.012) (0.060) (0.010) (0.011) All 0.080* 0.113** 0.027 0.028 0.065 0.083* 0.031 0.073** 0.177* 0.006 0.161** 0.043** 0.033** (0.031) (0.030) (0.027) (0.048) (0.038) (0.035) (0.030) (0.014) (0.075) (0.012) (0.059) (0.010) (0.011) Observations 2,654 451 4,278 854 1,153 1,030 2,466 10,282 1,112 7,113 1,296 32,651 25,907 B. Education Measured by Years of Schooling Baseline 0.0080 0.0042 0.0018 0.0145 0.0010 0.0024** 0.0008 0.0023 0.0072** 0.0034** 0.0010 0.0006 0.0014 (0.0043) (0.0040) (0.0025) (0.0084) (0.0040) (0.0005) (0.0025) (0.0018) (0.0021) (0.0012) (0.0060) (0.0009) (0.0010) Income 0.0014 0.0117** 0.0016 0.0071 0.0027 0.0035** 0.0027 0.0049** 0.0074** 0.0015 0.0035 0.0027** 0.0018 (0.0042) (0.0040) (0.0025) (0.0084) (0.0037) (0.0011) (0.0026) (0.0018) (0.0021) (0.0012) (0.0057) (0.0010) (0.0010) Family 0.0018 0.0060 0.0050* 0.0152 0.0062 0.0019** 0.0006 0.0040* 0.0054* 0.0029* 0.0006 0.0000 0.0006 (0.0044) (0.0042) (0.0025) (0.0087) (0.0041) (0.0006) (0.0026) (0.0017) (0.0021) (0.0012) (0.0060) (0.0009) (0.0010) All 0.0025 0.0115** 0.0012 0.0130 0.0031 0.0034** 0.0037 0.0061** 0.0046* 0.0002 0.0059 0.0019* 0.0011 (0.0041) (0.0041) (0.0024) (0.0087) (0.0037) (0.0010) (0.0026) (0.0017) (0.0020) (0.0012) (0.0055) (0.0010) (0.0010) Observations 2,648 451 5,529 854 1,153 1,030 2,450 10,201 1,112 7,100 1,296 32,535 25,807 Note: * p < 5%, ** p < 1%. Baseline row includes only country of birth and dataset fixed effects. Income row adds working dummy and log income to Baseline. Family row adds seven family member controls to Baseline. All row is full specification from Table 4. Trimmed remittances greater than twice annual income. Pooled sample weights post-stratified by education and country of birth. 33 Table 7: Education Coefficient as Controls are Added: Log Remittances Australia Belgium France Germany Italy Japan Netherlands Spain Spain UK USA USA Pooled Pooled LSIA IRSHS 2MO SOEP NIDI IADB CSR ENI NIDI BME NIS Pew Intensive Total A. Education Measured by University Degree Baseline 0.341* 0.433** 0.363 0.492 0.073 0.057 0.333** 0.093 0.430* 0.168 0.397* 0.199 0.249** 0.226** (0.145) (0.131) (0.211) (0.450) (0.171) (0.146) (0.116) (0.066) (0.202) (0.133) (0.169) (0.216) (0.060) (0.071) Income 0.237 0.243* 0.306 0.408 0.021 0.086 0.333** 0.040 0.367 0.097 0.023 0.278 0.143* 0.114 (0.138) (0.116) (0.203) (0.445) (0.165) (0.140) (0.116) (0.064) (0.200) (0.123) (0.168) (0.210) (0.058) (0.067) Family 0.288* 0.258* 0.390 0.423 0.105 0.033 0.333** 0.092 0.495** 0.206 0.364* 0.253 0.246** 0.220** (0.139) (0.128) (0.207) (0.368) (0.178) (0.150) (0.116) (0.061) (0.187) (0.132) (0.166) (0.218) (0.057) (0.066) All 0.179 0.225 0.318 0.293 0.015 0.003 0.323** 0.054 0.409* 0.127 0.071 0.347 0.157** 0.118 (0.134) (0.118) (0.210) (0.309) (0.176) (0.138) (0.117) (0.059) (0.193) (0.123) (0.165) (0.206) (0.055) (0.063) Observations 958 317 713 184 545 690 648 3,966 761 993 1,118 514 11,392 9,038 B. Education Measured by Years of Schooling Baseline 0.0441* 0.0341 0.0224* 0.0085 0.0032 0.0040 0.0247* 0.0199** 0.0091 0.0548* 0.0329* 0.0369 0.0256** 0.0229** (0.0194) (0.0174) (0.0112) (0.0783) (0.0163) (0.0038) (0.0100) (0.0076) (0.0063) (0.0237) (0.0146) (0.0221) (0.0061) (0.0071) Income 0.0266 0.0103 0.0105 0.0387 0.0077 0.0041 0.0247* 0.0114 0.0021 0.0313 0.0008 0.0294 0.0135* 0.0112 (0.0199) (0.0164) (0.0115) (0.0770) (0.0164) (0.0048) (0.0100) (0.0075) (0.0062) (0.0220) (0.0126) (0.0216) (0.0053) (0.0062) Family 0.0383* 0.0101 0.0344** 0.0053 0.0098 0.0042 0.0247* 0.0247** 0.0146* 0.0612** 0.0392** 0.0194 0.0272** 0.0243** (0.0187) (0.0167) (0.0111) (0.0649) (0.0168) (0.0037) (0.0100) (0.0072) (0.0066) (0.0235) (0.0144) (0.0231) (0.0060) (0.0070) All 0.0227 0.0060 0.0268* 0.0183 0.0009 0.0020 0.0274** 0.0179* 0.0086 0.0319 0.0172 0.0128 0.0169** 0.0139* (0.0193) (0.0165) (0.0124) (0.0511) (0.0159) (0.0050) (0.0104) (0.0070) (0.0064) (0.0224) (0.0123) (0.0213) (0.0052) (0.0060) Observations 956 317 713 184 545 690 648 3,942 761 993 1,116 514 11,364 9,010 Note: * p < 5%, ** p < 1%. Baseline row includes only country of birth and dataset fixed effects. Income row adds working dummy and log income to Baseline. Family row adds seven family member controls to Baseline. All row is full specification from Table 4. Trimmed remittances greater than twice annual income. Pooled sample weights post-stratified by education and country of birth. 34 Figure 1 Total Remittances by Years of Schooling Total household remittances ($ p.a.) 2000 1500 1000 500 5 10 15 20 Years of schooling of most educated migrant Semi-parametric regression line from partial linear model with dataset dummy variables evaluated at means. 95% pointwise confidence intervals shown from 500 bootstrap repetitions. Vertical lines separate quartiles. 35