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Determinants of International Migration: A Methodological Study Based on Egypt
Richard E. Bilsborrow, Samir Farid and Qi Zhang
Presented at the International Population Conference
of the International Union for the Scientific Study of Population, December 5-10, 2021
1. Introduction
There is rapidly increasing interest in international migration in many parts of the world, with the population
constituted by international migrants (defined as living outside their country of birth) reaching 281 million in
2020, 50% more than in 2000 (and 3.5% of the world total: UN Population Division, 2020). Migration flows,
especially from developing to developed countries, have been growing since the 1990s, due to increasing global
inequalities and vast improvements in communication systems and reductions in transport costs. This has led to
governments in receiving countries to restrict immigration (Esipova et al 2011; Tjaden & Laczko 2019), although
the international community recognizes that international migration has positive socio-economic effects in both
countries of origin and destination (UN 2006, 2009, Skeldon 2013), culminating in migration targets of the
Sustainable Development Goals (2030).
Nevertheless, migration continues to be the “poor stepchild of demography” (Kirk, 1960, p. 307): since 1960, the
field of fertility has advanced greatly, linked to linked to global programs of large investments in data collection,
analysis and publications, in contrast to migration. But internal and international migration flows have come to
be the major determinants of population change and growth within and across countries, as fertility, mortality
and natural population growth decline (except for Sub-Saharan Africa). Meanwhile, knowledge of the causes of
migration and therefore the ability to formulate better policies is compromised by the lack of adequate research,
in turn linked to weak data (CGD 2009; UN High Level Dialogues; UN 2018, Global Compact for Safe, Orderly and
Regular Migration, Objective 1: “Collect and utilize accurate and disaggregated data as a basic for
evidence-based policies.”). Thus, data shortcomings limit analyses, in turn impairing advances in theory and
policy (see Massey et al 1993 comments on this linkage between migration theory and policy).
The MED-HIMS (Mediterranean Household International Migration Survey) program is one of the main recent
regional efforts still ongoing (Bilsborrow 2018b) to respond to the need for better data to improve knowledge
about migration, but does not include in-depth analysis. Egypt was the first country to complete a MED-HIMS
1
survey, in 2013, has the largest sample as well as by far the largest population of any country in the Middle
East-North Africa (MENA) region, and a long history of emigration, mostly labor migration to the Gulf
Cooperation Council (GCC) and other Arab states (notably Jordan and Libya). The MENA region continues to
attract particular interest following the Arab Spring, civil war in Syria, and large outflows of migrants from
countries in the region and from migrants in transit. In Egypt, most out-migrants are male and “temporary”,
migrating for work and returning, but there has been little study of this type of labor migration, much less its
determinants, including roles of labor recruiting agents, visa policies, migration networks, and return migration.
While all countries have different and often unique circumstances and policy concerns, there has been little
in-depth quantitative research on the factors responsible for international migration from developing countries
due to the lack of adequate data sets at the household level in developing countries (Bilsborrow et al., 1997;
Groenewold & Bilsborrow, 2008; Bilsborrow, 2018, for IOM GMDAC). Many major UN and other global meetings
on international migration have occurred in recent years, documenting the data shortcomings and lack of
research findings on the determinants and consequences of this migration (viz., Global Compact for Safe, Orderly
and Regular Migration, 2018: Objective 1, “Collect and utilize accurate and disaggregated data as a basis for
evidence-based policies.” This paper hopes to help address this important need.
2. Conceptual approach
Theories of migration are commonly traced back to Ravenstein (1989) and have been advanced by social
scientists of all disciplines. At the relevant micro or household level, this includes human capital theory, justifying
individual attributes, such as age, gender, education, work experience, and occupation, as key determinants
(Sjaastad 1962); the sociological push-pull theory of Lee (1966), both evolving to view migration as a household
decision (Mincer 1978). This led to the New Economics of Labor Migration (NELM) theory, which views
households as allocating household labor across time and space based on household needs, human capital, and
risk reduction (Stark 1984; Stark & Bloom 1985; Taylor & Lopez-Feldman 2010). Much sociological work has
found marital status, family relationships, and migration networks fundamental determinants (Massey 1990;
Curran & Rivero-Fuentes 2003; White 2016). Recent disciplinary reviews are found in White (2016) on geography,
including on the importance of distance and “place utility” (Wolpert 1965), economics (Greenwood, on access to
information & labor market opportunities and conditions, Todaro, 1969), and sociology (White & Johnson, on
family ties & life cycle). In addition to all these potential factors, International migration is also affected by
government policies on migration including promoting or preventing, visa availability and costs/requirements,
and border controls, as well as language/culture, historical ties from colonialism and trade, transport costs, etc.
(Massey et al. 1993; Bilsborrow et al 1997).
2
Regarding return migration, there has been neither little formal theorizing nor large empirical studies (DeHaas,
et al 2015). While affected by the same individual and household factors as emigration, how might it be
different? One attempt to address this theoretically is Cassarino (2004), who cites as important ties with the
origin household and society and the type of returnee, in turn drawing on Cerase (1974). Cerase studied Italian
migrants returning from the US and classified then in various types: returns of failure, those who had trouble
socially integrating or obtaining work; returns of conservatism, persons achieving target savings; and returns of
innovation, actors aiming to invest in the origin. Cassarino also notes key roles of returnee’s preparedness and
willingness to return and resources available (to cover travel costs) and new skills/education acquired abroad.
Based on the migration theories above, we formulate a broad conceptual model of the determinants of
emigration (Fig. 1). This model takes the macro-contexts of Egypt and of countries of destination as implicit,
including government policies, economy, visa requirements, border controls, etc. (indicated by dotted lines).
Each other construct includes specific multiple factors identified by theory and previous research to be
potentially important in influencing migration decisions of individuals, nested in households, with both individual
and household characteristics affecting migration (straight-line arrows). Each construct comprises variables to be
tested in the statistical model.
3. Brief background on international migration
from Egypt
We undertook a computer review of the recent literature, finding it concentrated on studies of aggregate
data/flows of migrants, small data sets when households were studied, and immigration/adaptation of migrants
rather than determinants, and a geographic focus on North America and Europe (c.f. also, White, Introduction
2016). We cite here only those most relevant to the proposed models for Egypt, e.g., several finding education
not positively linked to emigration, as found in Egypt and contrary to the usual theoretical expectations (Mayda
2010; Rendall & Parker 2014), and some based on small household surveys: Massey & Espinosa (1997),
Chengrong & Nangia (1998) & Mora & Taylor (2006) on Mexico, Bohra & Massey (2009) on Nepal, Liang &
Chungu (2013) on China, plus others from the Latin America Migration Project and the Migration in Africa Project
3
(MAFE). A particularly interesting study is Gonzalez-Ferrer et al (2014) based on the MAFE data, unique in its
combined study of the determinants of both emigration and return migration, outward from three African
countries (Senegal, Ghana, Dem. Rep. of the Congo) to six European countries and back. As the sample sizes of
those actually returning were literally only 12, 15 and 16 adults in the three countries, investigators actually
studied only intentions to return, with 85 of 662 emigrants intending to return to Senegal, 50 of 441 to Congo
and 83 of 472 to Ghana—still fairly small numbers.
This illustrates the severe limitations of sample size in prior studies (also cited in Bilsborrow 2018a, b). On the
determinants of emigration, the usual age, education and current household income effects were found in a logit
model, along with strong effects of (country of) residence of spouse/children. Estimates of factors affecting
return migration were weaker, but included time abroad, work status in Europe, and having a family in origin
(positive on return), and whether the migrant had been sending remittances or made visits while living in Europe
(actually negative on return, perhaps serving as a substitute for returning rather than paving the way for return
(as found in Constant & Massey 2002). In another MAFE study on actual return migration to Senegal, Flahaux
(2017) found those returning to be more likely a repeat migrant or unemployed in the destination, and unlikely
to return if their family was in the destination or if they had visited the origin in person since departing.
In the MENA region, there have been few studies on the determinants of international migration (Fargues &
Venturini (2015). For example, David & Jarreau (2016) used three waves of the Egyptian Labor Market Panel
Survey in 1998-2012 to find emigrants positively selected on household wealth, with unemployment or working
in the informal sector also being incentives to emigrate. And Gang and Bauer (1999) analyzed return migration to
Egypt of 474 males from 6 villages, finding access to information networks with Egypt reducing time abroad
(associated with return).
4. The Data for Egypt
The data used in the present research for Egypt come from the Egypt Household International Migration Survey
(Egypt-HIMS), which was part of the Mediterranean Household International Migration Survey (MEDHIMS)
project. MEDHIMS was initiated via international workshops promoted by the MEDSTAT projects of the European
Commission and Eurostat, starting in 2010. The project involved top technical officials of the statistical offices of
eight countries in the MENA region (Middle East-North Africa) of the Mediterranean basin participating in
MEDHIMS, as well as funding/stakeholder agencies, including the European Commission, Eurostat, the World
Bank, and UNHCR initially, later joined by the International Labour Office, UN Population Fund, International
Organization for Migration, and the League of Arab States. These meetings resulted in the development of
4
detailed, user-friendly prototype questionnaires, agreed upon by representatives of the government statistical
offices in the region, plus accompanying manuals on sampling, training interviewers and supervisors, survey
fieldwork organization, and analysis/tabulation plans. There was also an important component of international
technical assistance from consultants, led by Farid and coordinated by Giambattista Cantisani. Participating
countries agreed to use same the basic questionnaires (but could add a few country-specific questions) to ensure
the collection of comparable data in all countries, to facilitate comparisons and generalizations across countries.
The documents and international aid led to large sample sizes and high-quality data in the first two countries to
implement the full survey questionnaires-- Egypt in 2013 and Jordan in 2014. Subsequently, Morocco in 2018
and Tunisia in 2020 have carried out nationally representative surveys on international migration based on a
shorter “light” version of the MEDHIMS questionnaires, also developed and agreed upon by all the participating
MEDHIMS countries and stakeholders.
The Egypt questionnaire comprised six modules: a household screening questionnaire, focusing on household
membership and composition, including key questions to carefully identify international migrants of interest as
well as non-migrants; four detailed and comparable individual-level questionnaires--for current out-migrants
(emigrants), return migrants (from abroad), forced migrants , and non-migrants; and finally, a module on1
housing/household living conditions. The paper here is based on data from the five modules, excluding forced
migrants. Specialized sampling procedures were used. First, the sample frame itself was one of the four
independent large national samples prepared by CAPMAS based on data from the most recent census available
at the time (in 2006), which was updated in 2011. Numbers of enumeration areas (EA) in each province of Egypt
were selected in proportion to the population, then in each sample EA, averaging about 90 households in urban
areas and 80 in rural ones, households were screened in the field to identify all those with one or more
emigrants (called current migrant, in emigrant households), who were automatically selected into the sample,
plus three non-migrants randomly from non-migrant households in the EA cluster. The result was oversampling
households with international migrants (see Bilsborrow et al., 1997; also Bilsborrow et al., 1984). This was done
to ensure that the field work would be economically efficient in collecting data on significant numbers of migrant
households, in contrast to the results from the usual random sampling procedures of household surveys, which
results in small numbers of migrants compared to non-migrants (details on the sampling frames and sampling
procedures for Egypt as well as Jordan and Morocco are found in Bilsborrow (2013).
1 In the case of Egypt, the sample of forced migrants was based on a totally separate, non-probability sample of householdsdrawn from lists of refugees and asylum seekers in the Cairo metropolitan area, provided by UNHCR, and is therefore notincluded in the research reported here.
5
The sample size of the Egyptian survey is perhaps the largest ever for a specialized household survey on
international migration in a developing country, with over 90,000 households initially screened using module 1,
providing data for 83,358 households. Of these, 5,259 reported having one or more emigrants living abroad
(defined as a former household member who was aged 15-59 at the time of emigration since 2000, to exclude
dependents as they are not migration decision-makers) and who had not returned by the time of the survey in
2013 (referred to as current migrants or emigrants). Meanwhile, 4,695 households (from among the emigrant
households plus the non-migrant households) were found to have one or more return migrants since 2000, the
reference year). Households with non-migrants were also sampled (at a much lower rate) and interviewed to
collect data to compare with that of migrant households, numbering 3,135. All emigrants and return migrants
were administered a detailed individual questionnaire as was one non-migrant adult in every household, the
total number of households being 11,703, with total individuals interviewed being 22,635 (emigrants, return
migrants, and non-migrants). Because of the oversampling of households with emigrants compared to migrants
in the last-stage sampling units (EAs), it was crucial for supervisors to keep track of the households listed,
sampled, and successfully interviewed for migrant households and non-migrant households, to be able to
properly weight all data for all analyses.
Fieldwork was carried out in 2013 by the government statistics office, CAPMAS (Central Agency for Public
Mobilization and Statistics). Samir Farid, Chief Technical Advisor, helped coordinate various aspects of the project
in Egypt, from questionnaire design (viz., additional questions on health suggested by and funded by the World
Health Organization were adapted and added to the module 1 screening questionnaire for all household
members), to manuals for training interviewers and supervisors, the conduct of fieldwork, data cleaning and data
analysis. He also led the production of a wealth of tabulations, leading to the comprehensive government
descriptive publication (Farid et al. 2016) with over a thousand tabulations, along with additional tabulations on
the CAPMAS website.
The data were subsequently made available to Dr. Farid for us to undertake multivariate statistical analyses
starting in late 2017, which resulted in findings being publicly reported here for the first time. Given the careful
attention to the screening and listing of households in sample enumeration areas and funds available, very large
samples were available, providing an extraordinarily rich dataset for analysis, which promise to yield a
much-improved understanding of the factors behind emigration and return migration in Egypt and the other
participating MEDHMS countries in the (MENA) region, the analysis of which should provide useful information
for policy as well as methodological lessons.
5. Some descriptive results on emigrants vs. non-migrants
6
Before we examine the multivariate results, we examine some of the descriptive data and findings, which is
always important to do first. Table 1 shows the characteristics of individuals in all survey households—of
non-migrants, emigrants (out-migrants), and return migrants for whom data were collected for 2000-2013. This
allows us to begin to understand how migrants differ from non-migrants, and return migrants from out-migrants,
providing initial insights also about the factors that may be responsible for emigration and subsequently return
migration.
Table 1. Characteristics of emigrants and non-migrants, Egypt-HIMS 2013
CharacteristicEmigrant(age 15+)
Return migrant(age 15+)
Non-migrant(age 15-59)
1. Survey households• Urban/Rural residenceUrban 19.7 25.8 47.5Rural 80.3 74.2 52.5Total 100.0 100.0 100.0• Household headshipMale 51.0 92.4 85.2Female 49.0 7.6 14.8Total 100.0 100.0 100.02. Characteristics of migrants and non-migrants• Age composition (At first migration) (Current age) (Current age)
15-19 10.7 1.2 22.120-24 33.3 4.8 15.925-29 28.7 11.9 13.330-34 13.2 18.2 10.635-39 7.4 18.9 10.440-44 4.0 14.4 8.345-49 1.9 12.1 8.050-59 0.7 13.2 11.460+ 0.1 5.3 --Total 100.0 100.0 100.0
• SexMale 97.9 89.1 45.7Female 2.1 10.9 54.3Total 100.0 100.0 100.0
• Current educational levelBelow primary complete 21.9 28.7 22.9Primary/Preparatory 14.6 13.8 27.5Secondary 48.3 42.4 37.1Higher 15.2 15.1 12.5Total 100.0 100.0 100.0
• Current occupationManagers 2.1 9.1 4.7Professionals 7.2 10.2 17.5Technicians & associated professionals 3.7 4.9 7.0Clerical support workers 1.2 1.4 5.3Service and sales workers 11.6 5.8 11.8
7
Skilled agricultural, forestry, and fishery workers 9.7 26.6 16.1Craft and related trades workers 49.5 26.9 22.6Plant and machine operators and assemblers 8.1 10.8 10.4Elementary occupations 6.9 4.3 4.6Total 100.0 100.0 100.0
Number 5847 5085 11703Note all data in this table refer to all sample households and individuals from 2000 to 2013, and not only the cohort
2010-2013 used in the multivariate analyses below.
Survey household characteristics
Most households with migrants reside in rural areas-- 80 % of emigrant households and 74% of the return
migrant households, in contrast to a bit over half of households in Egypt, showing the selectivity of migrants
from rural areas. Emigrants also tend to come from larger households than non-migrants, in both urban and rural
areas. Among non-migrant households, the traditional pattern of male-headship exists in both urban and rural
areas, with the overall percentage of male-headed households being 85 percent, rising to 92% for households
with a return migrant. A very different pattern is observed among households with emigrants, where 49% are
female-headed. This shows that many of the migrants are actually male household heads, whose absence
creates de facto female headship. Data on return migrant households shows this is usually only a temporary
situation, until the emigrant returns.
In terms of household possessions & assets, most households in Egypt own most modern household appliances
with little variation by migration status or urban rural residence, although rates of ownership are generally
higher among the return migrant households than either emigrant or non-migrant households.
Characteristics of individual migrants and non-migrants
Age-sex distribution
The distribution of emigrants by age at migration is distorted demographically. It shows an inverted U-shaped
pattern with respect to age at first migration, with a low percent among persons aged 15-19 (11) and most first
migrants young at age 20-29 (62%), resulting in a median age at first migration, among those migrants who
moved abroad since the beginning of the year 2000, of 25.1 years. The age distribution of return migrants also
has an inverted U-shape in terms of current age at time of interview in 2013. Only a tiny percent return at age
15-19 years (1.2), with others returning with a broad peak extending over the age range 25-49 years (over 75%).
In contrast, more than half of non-migrants (51%) are in the age range of 15-29 years, with another 22% aged
15-19, and a similar percent in the broad age range of 45 to 59 years.
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The results also clearly show that migration of individuals from Egypt is predominantly male― only 2% of
emigrants aged 15+ being female, along with 11% of return migrants and in contrast to 54% of the non-migrant
population.
Education
A majority of migrants and non-migrants are relatively well educated, but migrants tend to be better educated,
as the percentage who completed secondary or higher education being 64 among emigrants and 58 among
return migrants in contrast to 50 among non-migrants. Among emigrants who first moved abroad during the
years 2010-2013, 51% had completed secondary education while another 19% had university degrees.
Motives for migration
Around 87 percent of the individual emigrants studied moved abroad for economic reasons, with only 10 percent
for social reasons and 3 percent for other reasons. The three most important economic motives for first
migration from Egypt were ‘to improve standard of living’ (34%), followed by ‘income in Egypt was insufficient’
(25%), and ‘lack of employment opportunities’ (11%). Among female return migrants in survey households
(comprised of those few who moved as individuals and returned and overwhelming those who left with husband
and returned with him), social reasons were the main motive for the first migration with 60% moving to reunite
with family and 25% to get married and join the husband abroad.
Who migrates where?
The vast majority of emigrants from Egypt (95%) go to Arab countries, mainly in the Gulf and neighboring Jordan
and Libya, with only 5% going to other destinations outside of Arab region, predominantly to Europe (3%) and
North America and Australia (1%).
Pre-migration contact with recruiters
Around 31% of emigrants had prior contact with a private recruiter to work abroad and facilitate the migration.
Also regarding whether the migrant had a visa before emigrating, it should be pointed out that Egyptian citizens
do not need a visa or work permit to enter several Arab countries, including Iraq, Jordan and Libya, which were
the first destination for nearly two-fifths of the emigrants. Thus virtually all of these emigrants who first moved
to these three countries did not have a pre-migration work permit or contact with a labor recruiter and started
looking for a job upon arrival, often contacting labor recruiters and migrant networks in the destination country.
This contrasts with the common procedure of working through labor recruiters operating in Egypt for emigrants
going to the Gulf region countries apart from Iraq.
9
The role of networks in migration
Around two-thirds (65%) of emigrants had networks in their country of destination before departure from Egypt.
These migration networks were mostly extended family members and close friends, mostly prior male migrants.
More than four-fifths of these migrants who had a network at destination received assistance whether before
the move and /or upon arrival in the destination country.
Employment situation of migrants before leaving and after
Around three-fourths (74%) of the emigrants were employed in the 3-month period preceding the migration,
with the remaining 26% who were not working evenly divided between those seeking work and those not
seeking work. One in two emigrants (54%) had a job waiting for them upon arrival in their destination, with 98
percent of male migrants currently working abroad compared with 30% of female migrants. The economic sector
of work was often different in the country of destination than in the country of origin, and often did not match
their skills in Egypt. Most migrants in the Arab region ended up in the construction sector (47%), followed by the
wholesale and retail trade (12%), agriculture (11%) and manufacturing (7%).
For emigrants from rural areas of Egypt, the main occupational change was from agriculture to trading, with
others in unstable or casual employment. Migrants from urban areas in Egypt, by contrast, had more diversity in
occupations abroad, with 30% in upper-level occupations in managerial, professional, and technical positions,
but a majority in the lower echelons of the occupational structure. Most of the highly skilled migrants of older
ages were involved in occupations similar to those they had before migration, while most of the younger
migrants got involved in craft and related trades and in services occupations, far from their specialization,
resulting in skill wastage. In terms of benefits provided to migrants by current employer abroad, most Egyptian
migrants are not provided with any form of benefits, with only 29% receiving housing benefits, 24% payments for
overtime, 21% health insurance, and 18% paid annual leave.
Remittances sent by current migrants
Around 70% of emigrants sent money to their origin households in the 12-month period preceding the survey,
on average six times, with 72% submitted via the formal financial system in Egypt.
Migration Intentions
About 11% of the non-migrants interviewed intend to move to another country, while most (70%) intend to
remain in Egypt with the remaining 19% undecided. Substantial differences are reported by gender, with 17% of
men but only 6% of women saying they intend to migrate. Among prospective migrants, 85% intend to migrate
10
for economic reasons, 8% for social reasons (mainly to obtain more education), and 7% for other reasons. The
economic motives include income-related reasons (54%) and work-related reasons (31%).
6. Methods of statistical analysis
We used a logistic model with the dependent variable being whether the household member 15-59 emigrated
since 2000 and continued to live abroad, to explore factors associated with the person’s most recent emigration.
A wealth of potentially relevant variables at individual and household levels is available, including situation
before emigration (work status; education, whether married or with children, and countries of residence);
contact with labor recruiters; migration networks; etc. Data were pooled from migrants and non-migrants to
create the population at risk of emigration for each year for each individual and sample household.
Non-migrants include those who had never migrated for more than three continuous months to another country,
plus those who had but had returned (return migrants from abroad living in the sample household at the time of
the survey in 2013). Together, these three groups constitute the population at risk, or the appropriate
comparison group (Bilsborrow et al. 1997). The dependent variable is then whether the person emigrated or not,
assigned a value of 1 if the person emigrated in the most recent years of 2010-13, in order to focus on the most
recent time period, for two reasons, first, to minimize recall error (see Som, 1973), and second, to minimize
endogeneity risk from certain potentially important household variables (e.g., household incomes and assets)
having been collected only at the time of the survey rather than at the time of the emigration (decision). The
result of this was to limit our estimation to the most recent time period, but with such a large sample available,
this still left the analysis to be based on a large sample of 10,133 individuals (about half the total)—perhaps still
the largest ever for a multivariate statistical investigation of the determinants of emigration from a developing
country, from a specialized migration survey based on a nationally representative sample.
The dependent variable being dichotomous—whether the person emigrated or not--the appropriate statistical
approach is a logistic model. The results are then interpreted as follows: odds ratios above 1.0 indicate the
explanatory variable had a positive impact on emigration, while values below 1.0 indicate a negative effect.
Larger odds ratios indicate larger effects. Statistical significance is indicated by P values (models estimated using
Stata). While the usual criterion for judging statistical significance is the 0.05 level, with this large sample the
0.01 level or better is more appropriate.
7. Multivariate results
Table 2 below shows the results on the determinants of emigration of individuals from Egypt in 2010-13, with
hypothesized signs (see Appendix for actual regression results). These results are very strong statistically (most at
11
the 0.001 level), and mostly consistent with theoretical expectations. This includes results for important variables
rarely investigated in prior empirical research due to lack of data, including variables capturing the characteristics
of the individual (migrant) at (or just before) the time of migration and household variables also measured at the
time of the migration decision. Among the significant individual variables are the migrant’s age, marital status,
urban vs. rural residence in childhood, work situation before emigration, and knowledge of a foreign language.
Significant household variables measured at the time of migration included urban/rural residence, household
size, and whether the household had another emigrant still living abroad or a return migrant from abroad living
in the household. While the discussion of the results below focuses on those for all age groups together (15-59 at
time of migration), major differences across larger 15year age groups will also be briefly described (15-29, 30-44,
45-59).
a. Results for individual-level variables
Overall, individual-level characteristics were very strong, and much stronger than household factors, which adds
to the evidence accumulating from other recent research finding individual characteristics generally stronger
than household factors (ADD REFS), suggesting that migration is mostly an individual decision although often
affected to a lesser degree by household factors. Thus the effects of the following individual characteristics were
all highly significant at the 0.001 level: age, sex, whether lived in an urban area when growing up, education,
knowledge of another language besides Arabic, marital status, and whether had own children under age 15 living
in the household at time of migration decision. The economic activity of the person prior to emigration is also a
powerful factor, captured in three independent variables reflected different dimensions of economic activity:
first, whether the person ever worked before the move, or work experience (years of work could have been even
more useful, but was not available); second, whether was actively looking for work a month before; and third,
type of occupation, based on the first digit of the detailed occupation code of the International Labour Office.
These results are described in more detail below, beginning with age.
For age, older adults are less likely to emigrate than younger adults (using 15 as a common lower age for adults
in low-income countries), as is generally expected for migrants, given there is always some element of risk going
abroad, usually far away, to work. The data for the three age groups further confirm this, with a positive
coefficient for age for the youngest age group (so those in later 20s are more likely to migrate than those in
lower 20s or teens), while the odds-ratios for age are negative for 30-44 and especially for 45-59. Altogether,
Table 2. Results from Model of the Determinants of Emigration from Egypt, 2010-2013, from Egypt
MED-HIMS Household Survey, 2013 #
Independent Variable Hypothesized Effect Exp. Result
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sign sign
Gender (Males=reference) Females migrate less - -**
Age (15+) Older less likely to emigrate - -**
Urban-Rural residence
(reference=U)
Rural households in Egypt tend to have more
emigrants+ +**
Residence in childhood (ref=U)Urban residence in childhood leads to less emigration
later- -**
Education (years completed) More education usually leads to more emigration + -**
Knew another language before
emigrationLanguage knowledge contributes to out-migration + +**
Married at time of migration Married usually leads to less emigration - +**
Had own children < age 15 in
dwelling before migrationLess likely to migrate if living with own children - -**
Had ever worked before (last)
emigration
More likely to migrate since has work experience and
interest+ +**
Was looking for work just
before emigrationMore likely to migrate since most migration is for work + +**
Occupation not managerial or
professional
More likely to migrate since weaker occupational
ties/lower incomes in Egypt+ +**
Household size (number)
before person emigrated
Larger size means greater need to generate income to
support and more possible emigrants+ -
Persons per room More crowded house encourages someone to leave + +
Household head’s education
More educated head associated with higher
consumption aspirations and/or more access to
information that may encourage emigration
+ +**
Household owns houseHaving house indicates less need to send out member
as emigrant, or may provide security for emigration+/- +*
Household owns farmlandHaving farmland provides source of income and
demand for labor, reducing emigration- -**
Household has bank accountHaving bank account indicates having savings to
finance move or may result from emigration+ +
13
Household has previous
migrant living abroad
Previous emigrant provides networks and possible
assistance+ +**
Household has return migrant
from abroad
Previous migrant returned to household provides
network & example and/or encouragement+ +**
*significant at .01 level; ** significant at .001 level N = 10,133
these results show a curvilinear relationship, rising with age to around 30, then falling. Some previous empirical
studies have captured this with more than one age variable, such as age squared.
For gender, relating to cultural values and traditions, females are far less likely to migrate as individuals than
males, in fact more than seven times less likely (odds ratio of .013), and not much different across the three age
groups.
Urban residence in childhood of the emigrant, as reported by the household respondent, has a strong effect on
reducing emigration but only at the .01 level, so not as strong as most of the other individual characteristics
reported here. A likely interpretation is that this gives the person tastes for and/or satisfaction from urban living
reducing interest in going abroad to work, after controlling for all the other individual traits including economic
activity. The results were not much different across the three broad age groups.
The results for education were similar, with more education having a smaller but statistically more significant
(.001) effect reducing emigration, and effect which, however, becomes quite weak for older persons 45-59 (odds
ratio less below 1.0 than for the other age groups, and only marginally significant at the .08 level).
Knowledge of another language besides Arabic (foreign) at the time of emigration, usually English, was
associated with about a 40% increased likelihood of migration at a significance level of nearly .001, with the
effect non-existent for younger adults but increasingly powerful among older adults. Perhaps the lack of a
difference among the young may be because most of them know English due to big increases in enrollment and
graduation levels over time, as has occurred in most developing countries in recent decades, leaving language
knowledge not a significant differentiating factor compared to the situation among older migrants. Curiously,
language skills were most powerful in the older age group precisely in the age group for which education was
much less important.
The results for marital status were even more fascinating, overall being married strongly contributing to
emigration overall, being really strong for younger persons (eight times as likely to emigrate if married): this
could often be even before having children, the newly married man goes abroad to earn money to save and
bring back as a “nest egg”. There is then no effect at all for middle-aged males and even a strong negative effect
14
among older males (3 times as likely to not emigrate as single males at 45-59 at a modest significance level
better than .05.
It is also important to control for having dependent children at home, which strongly deters emigration overall,
super strongly for young males: 50 times less likely to emigrate if have dependents vs. 3 times less likely if aged
30-44 and no effect at all for those 45+.
Finally, for economic activity, those with work experience were nearly 5 times as likely to emigrate overall, ceteris
paribus, but this effect declines with age becoming non-existent for those 45+. A much stronger and universal
effect is found for whether looking for work at the time of emigration (almost 9 times as likely to emigrate),
which is to be expected from the descriptive data above on motives for migration, with 87% identifying
economic motives as primary, and the simple fact that 98% were males leaving, almost all for work.
For occupational code, the results are much more complex, likely due to smaller numbers especially when
dividing by both occupation and age group. Note the reference (omitted) occupational code was “managers and
professionals while ILO codes 3 and 4 are also high level technicians/skilled workers, with most emigrating
workers in the lower-status, lower numbered occupational codes 5+ (with lower incomes) who are more likely to
migrate (odds ratios above 1.0). This does contrast to that many other countries, but clearly reflects the
tendency of individual migrants to be relatively young males from rural areas and secondary education seeking
unskilled/semi-skilled work in other Arab countries.
b. Results for household-level factors
Among the significant household variables is region of residence before the move (in the results shown in the
Appendix, in five categories, capturing dimensions of both urban-rural and region--upper vs. lower Egypt, the
latter with the large urban agglomerations of Cairo, Alexandria, etc., constituting the reference region). The
results show effects especially of people migration more than those in the two big metro-agglomerations, from
rural area as well as smaller urban areas, and a bit more from northern (Upper) than southern Egypt, likely due
to more access to information and transportation access to nearby Arab countries. It is curious that the effects of
these geographic differences in origin disappear for older adults.
The second variable is household size just before emigration (defined correctly to include the emigrant, which
has not always been done in previous empirical work). The hypothesis is that a larger household makes it easier
to release a household member from household needs for helping with childcare, farm work, etc., to migrate
away, supported by its alleviating household consumption needs. This has been observed in some previous
research (CITES?). However, the effect in Egypt is negative, though very small and not statistically significant
except for the older age group. A negative effect might suggest that the household has such a low income that it
15
cannot afford to lose an able-bodied male from remaining to help around the house or farm and/or the cost of
financing the emigration.
Related to household size is whether there is any crowdedness on living conditions, which can be reflected in
persons per room. In fact, there is such a positive effect on emigration, albeit small (25%) and of marginal
significance overall (.05). Looking at the relationship for age groups shows again that the effect is only for
younger emigrants (76% effect, at .001 level!). This could reflect younger generations being more concerned
about having privacy and their “private space” than older persons.
A third household variable and one found positive and significant in much research is household head’s
education. Each year above the mean results in about 40% more likelihood of emigration, other things equal,
though once again the effect dissipates among those 45+. This overall effect seems logical, as a more educated
head with more access to information and perhaps higher consumption aspirations for the household would be
more likely to encourage younger than older adults in the household to take advantage of opportunities abroad.
This effect is highly significant at the .001 level.
Ownership of house is positively linked to the household having an emigrant (at the .01 level), but only for a
young emigrant (.001 level), there being no significant effect at all for the older ages above 30.
In contrast, owing farmland reduces emigration, as anticipated from theory and previous research: land provides
opportunities to produce food to support the household. Note this effect exists and is strongly significant as a
deterrent for both the older two age groups but is the opposite for young adults, a wealth effect facilitating
emigration (almost 50% more likely and at a significance level of .011). It should be noted that the variable does
not measure amount of farmland but just whether it owns any.
The last indicator of household socio-economic status is whether anyone in household had a bank account,
which is especially likely to be endogenous since it is often the result of someone migrating (rather than only a
measure of socio-economic status that could cause or facilitate emigration via financing it, etc.). Thus if the
household did not have such an account before, having an emigrant could very well stimulate it to get one to
facilitate receiving cash transfers from abroad. This is a good example of the problem of endogeneity that could
also be present with the variables on ownership of a house or farmland, as having an emigrant could lead to
remittances making it possible for the household to acquire a house or farm. To minimize but not totally
eliminate this, our whole empirical model is estimated here only for the very recent emigrants, some migrating
only days or months before the survey up to 3.5 years before. Most emigrants take some months to settle and
earn enough to save, before they can send remittances, and many take a few years, so our approach reduces but
16
does not eliminate this risk, which pertains to any variables relating to household wealth. The solution would
have been to have collected data on possession of major asset in the household prior to the emigration decision
being studied (see also discussion in lessons learned, in the conclusions to the paper below).
The last two household variables included in the model and discussed here are included to capture the migration
experience of the household (Bernard and Perales 2021), in lieu of asking about migration networks or
relatives/friends known by household members living abroad. Thus it is well-known that migrant networks
established from previous household members (or other relatives or friends) emigrating tend to are crucial
factors in subsequent migration. We capture this by determining whether at the time just prior to the migration
decision (to migrate or not, referring to the person who did and the randomly selected non-migrant person who
did not, together comprising the population at risk of migration), the household had a previous household
member living abroad (current emigrant) or a current household member who had lived abroad but returned to
the household, viz., a return migrant. Creating these variables for every household required, first, reconstituting
the household composition (having already done this for household size for each year since 2000) to identify for
each household each year since 2000 when it had a prior emigrant still living abroad and when a return migrant
in the household, and how many. We are not aware of any previous study of international migration based on
household-level data that has controlled for both of these potentially important influences on new migration.
And indeed, both were found to be independently significant and the most powerful household variables,
rivaling in explanatory power the strong effects of the individual variables discussed above. Thus a household
with a current migrant living abroad is over 9 times as likely to have a new migrant in the reference period, even
stronger for those 15-44 (both overall and for the two younger age groups at better than the .001 level), but
having no effect on older persons emigrating. Similarly, if the household has a return migrant, that multiplies the
likelihood of some member migrating by 2.5 overall as well as among those 15-29 and by far more for those
30-44, but again not at all for those 45-59 at the age of emigration. The stronger effect of emigrants than return
migrants seems expected, as they sometimes will be in the same country of destination chosen by the recent
emigrant and could provide substantial assistance in housing and finding work, and even help finance the move.
We also collected data on several other variables rarely available in empirical studies of international migration
except in cases of specialized migration surveys to explore their possible effects, including contacts with labor
recruiters, whether they had a work contract before leaving, possession of a visa, etc., none of which was
statistically significant once all the other variables above were controlled for. An explanation for this for one of
these variables is that Egyptians do not need visas to migrate to the two neighboring Arab countries, Jordan and
Libya (Farid et al., 2016). Another may be that work contracts are arranged not by labor recruiters per se but
often by government or private employment agencies. It is most interesting that some knowledge of another
17
language besides Arabic, usually English, was linked with emigration to destinations in general and not just to
non-Arab countries, as we anticipated, which may show the benefits of access to information and/or a link to
higher consumption aspirations.
8. Conclusions
There are a number of important methodological conclusions. To begin with, the rich empirical results described
above demonstrate the benefits of collecting and analyzing data on international migration from a specialized
survey on international migration in contrast to what can be learned from the many existing studies based on
census data or data from labor force or other household surveys developed for another primary purpose. Linked
directly to this, the results also demonstrate the value of a sample design specifically oriented to focus data
collection on migrants, via a. stratification of geographic or administrative areas in the country based on (if
available from any source) the proportion of migrants of interest in the population, and then oversampling areas
with higher proportions of migrants in the population, as well as at the last sampling stage of clusters or
enumeration areas oversampling households with migrants, as they otherwise tend to be relatively rare
elements, especially for recent migrant. This ensures that field data collection will yield a sufficient number of
migrants as well as non-migrants.
Second, the careful development of questionnaires comprising household modules including an initial screen
model to identify households with migrants of interest, and individual modules pertaining to emigrants (for
whom data will usually have to be collected from the most knowledgeable household member as a proxy
respondent), and one or more non-migrants in every household sampled. To study the determinants of
out-migration/emigration, data on migrants should refer to their situation at or just prior to the time of
migration. Ideally, such data should also be collected on the situation of the migrant’s household at that time, as
well as for non-migrant individuals and their households (see Bilsborrow et al., 1997, and also limitations
discussed below).
Third, technical assistance in the design of the sample, questionnaire modules, data processing/entry and
cleaning and data analysis will often be crucial in many countries to produce quality results. Fourth, the data
resulting should be made available for detailed analysis both in the country and globally. International funding
support for the various phases of the project as noted above can facilitate both the data collection, a large
sample size, and detailed analyses that take advantage of the data to improve understanding of migration
processes in the country, some with policy implications.
18
Building on the analysis here of the determinants of emigration, with such a large and nationally representative
sample, it is possible to disaggregate the data to run the regression model to estimate the determinants of
emigration for different sub-populations, such as for 5-year age groups (viz., 15-19, 20-24,…,55-59); by gender,
for men vs. women (in the case of Egypt with such a small percentage of women, the absolute number is still
sufficient to model); type of region of origin (urban vs. rural, northern vs. southern Egypt, and combinations
based on both dimensions); type of destination country (Arab vs. other, etc.).
The descriptive data in section 5 above also provide a taste of directions for extending the analysis, to estimate
the determinants of return migration and of migration intentions from the data in this survey in Egypt. For
example, for return migration, the population at risk is the stock of emigrants currently living abroad plus those
who have returned to the household (who can be interviewed directly, as done in this Egypt case). Since several
questions were also asked in the individual questionnaire of the selected non-migrant in every sampled
household on whether they intend to migrate or not, it is possible to estimate the determinants of intentions to
emigrate for a large sample here, with many covariates and possibilities for disaggregating as above by gender,
age, education, etc. Finally, it would then be possible to compare the results of the determinants of return
migration and the determinants of migration intentions with those here for the determinants of emigration, to
compare and contrast the determinants, to elucidate better than has been done before what the differences
area and what this implies for net past and possible future population loss, brain drain, and migration policy.
Some limitations and suggestions for the future
In the case of the Egyptian survey, there are some limitations, beginning with the big one inherent in any such
survey based only in a country of origin (as is true of any population census). Whole households that have left
leave no one behind to report on their composition or emigration and are hence omitted. It is suspected that this
may account for about a third of the emigration from Egypt. To collect data on them would require coordination
with and permission from the main countries of destination of Egyptians abroad (such as Jordan, Libya, Iraq,
Saudi Arabia, Kuwait, the United Kingdom, etc., which is complicated.
More specific limitations arise from the questionnaire design, in which data were collected only for the individual
attributes of the emigrant at the time of departure (of the migration decision), and not on the situation of the
migrant’s household, nor from the non-migrant individual questionnaire on the situation of the non-migrant at
the time of emigration of the person from the household, and least of all on the non-migrant randomly selected
for the individual interview in the non-migrant household. In the absence of a reference year for retrospective
data on the non-migrant household, the mean year of emigration in the study population (or a randomly
19
selected year with the approximate expected distribution of yeas for the emigrants should be used (which is
feasible to do, though never tried to date). Finally, there was insufficient data collected on potentially important
economic variables pertaining to the time of migration, including individual and household incomes and
measures of wealth (including even the limited ones collected in this case—ownership of house or a farm or a
bank account, but further data on these such as estimated value and the time of their acquisition as well as of
other significant assets could be asked.
Such things complicate data collection and tend to be difficult to sell to government statistical offices. Also useful
would have been to collect further information on migrant networks, on the residence abroad of close relatives
(e.g., only parents, spouses, children, siblings). A case could be and has often been made for the collection of
data at a level above the household, on the community or town, to gauge the effects of contextual factors on
migration (c.f., e.g., Bilsborrow et al.1984; Massey 1990).
Egypt/CAPMAS plans to conduct another large survey on international migration in 2022. Hopefully some of
these extensions will be considered for inclusion, to lead to another leap in the richness of the data and in the
resulting analyses and findings, both substantive and methodological.
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Annex Table 1. Determinants of Emigration, Egypt, 2010-13
All ages Age:15-29 Age:30-44 Age:45-59
VariableOddsRatio
StdErr P>|z|
OddsRatio
StdErr P>|z|
OddsRatio Std Err
P>|z|
OddsRatio Std Err
P>|z|
Age 0.9380.00
6 0.000 1.335 0.034 0.000 0.934 0.0160.00
0 0.840 0.0320.00
0
Female (0/1) 0.0130.00
3 0.000 0.004 0.002 0.000 0.007 0.0040.00
0 0.007 0.0090.00
0
Region (1_Urb-Gov) [ref]
(2_Low-Urb) 2.1100.40
4 0.000 3.332 1.029 0.000 2.165 0.7340.02
3 0.800 0.3590.61
9
(3_Low-Rur) 1.7790.40
6 0.012 3.342 1.217 0.001 2.542 0.9960.01
7 0.391 0.2290.10
8
(4_Upp-Urb) 2.1680.45
0 0.000 3.244 1.017 0.000 2.606 0.9920.01
2 0.878 0.4980.81
9
(5_Upp-Rur) 3.4650.80
2 0.000 7.170 2.774 0.000 3.557 1.3920.00
1 1.565 0.8900.43
1
Lived in urban area as child (0/1) 0.6080.11
4 0.008 0.541 0.170 0.051 0.638 0.1970.14
6 0.626 0.2920.31
5
Education (years) 0.7950.01
5 0.000 0.771 0.022 0.000 0.736 0.0290.00
0 0.863 0.0740.08
4
Knows other language (0/1) 1.4150.16
5 0.003 0.886 0.151 0.477 1.926 0.4250.00
3 4.055 1.7770.00
1
Married or signed contract (0/1) 3.2820.56
0 0.000 7.980 2.800 0.000 1.185 0.3730.58
9 0.321 0.1640.02
6Has children in home under 15(0/1) 0.221
0.028 0.000 0.019 0.006 0.000 0.353 0.082
0.000 1.551 0.495
0.169
Worked before move (0/1) 4.7620.79
9 0.000 3.461 0.980 0.000 2.951 1.4280.02
5 1.394 0.7610.54
2
Looking for work (0/1) 8.6161.60
6 0.000 3.497 0.870 0.000 12.074 4.9570.00
0 13.477 12.6120.00
5
(Occupation-3) [ref. = 1&2] 0.4900.11
4 0.002 0.271 0.134 0.008 0.485 0.1810.05
3 1.017 0.6270.97
8
(Occupation-4) 0.2210.11
5 0.004 0.281 0.351 0.310 0.247 0.2100.10
0 0.414 0.3460.29
1
(Occupation-5) 1.6130.30
3 0.011 0.792 0.273 0.499 1.534 0.4500.14
5 0.911 0.8590.92
1
(Occupation-6) 3.0340.49
3 0.000 2.030 0.613 0.019 4.170 1.0190.00
0 3.131 1.7300.03
9
(Occupation-7) 4.9380.79
6 0.000 1.857 0.558 0.039 6.675 1.6000.00
0 8.619 4.4970.00
0
(Occupation-8) 1.9320.36
4 0.000 0.856 0.298 0.655 2.143 0.5970.00
6 2.507 1.5680.14
2
(Occupation-9) 0.9350.26
5 0.812 0.380 0.225 0.101 1.012 0.3950.97
5 1.076 0.8770.92
9
HH size before left 0.9580.03
6 0.253 1.076 0.060 0.188 0.931 0.0520.19
9 0.792 0.0740.01
3
HH has prior emigrant (0/1) 9.4132.47
8 0.000 25.783 9.564 0.000 12.422 7.3920.00
0 1.113 0.9070.89
5
HH has return-migrant (0/1) 2.4820.51
6 0.000 2.905 0.823 0.000 15.577 9.5300.00
0 1.447 1.3780.69
8
HH head's education (years) 1.3940.02
5 0.000 1.490 0.041 0.000 1.384 0.0520.00
0 1.140 0.0910.09
8
HH owns house (0/1) 1.6170.27
5 0.005 2.303 0.627 0.002 1.159 0.3300.60
5 1.486 0.6930.39
6
Persons per room 1.2440.13
9 0.050 1.761 0.303 0.001 1.162 0.2510.48
8 0.474 0.1860.05
7
HH owns farmland 0.7670.07
6 0.008 1.454 0.214 0.011 0.681 0.1180.02
7 0.336 0.1220.00
3
HH has bank account 1.1910.18
1 0.250 0.885 0.230 0.638 3.269 1.0050.00
0 1.575 0.6320.25
8
[_Constant] 0.1850.07
7 0.000 0.000 0.000 0.000 2.285 2.1040.36
9 6651.41 15214.60.00
0
Model evaluation All ages Age:15-29 Age:30-44 Age:45-59
Chi2 1524.25 746.82 489.85 153.4
Prob>Chi2 0 0 0 0
R2 0.604 0.745 0.612 0.441
pseudolikelihood -2444.3 -957.43 -672.3 -258.15
Observations (N) 10133 5872 2955 1306
Recommended