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Studies of the anticancer activities of ruthenium(II) polypyridyl complexes toward human hepatocellular carcinoma BEL-7402 cells
Small Bus Econ (2021) 56:1033–1045
https://doi.org/10.1007/s11187-019-00315-w
The labor market reintegration of returned refugees
in Afghanistan
Craig Loschmann & Katrin Marchand
Accepted: 1 November 2019 / Published online: 13 January 2020
# The Author(s) 2020
Abstract Even though Afghanistan remains one of the
top origin countries of refugees around the world, a
considerable number of refugees have also returned over
the last three decades. This paper investigates the labor
market outcomes of those returned refugees from Iran
and Pakistan, motivated by the fact that their reintegration greatly depends on the ability to access sustainable
income-generating activities as a basis of their livelihood. The analysis relies on cross-sectional data from an
original household survey collected in five provinces of
Afghanistan in 2011. The analytical approach is twofold: first, to compare returned refugees to non-migrants
in regard to what influences their respective labor market outcomes; and second, to investigate the influence of
the returnees’ migration and return experience on those
outcomes. We find evidence that returned refugees are
less likely to be wage employed in comparison to nonmigrants and that those factors related to socioeconomic
status including educational attainment, and the strength
of social networks plays an influential role in labor
market outcomes. When it comes to the migration and
return experience of returnees, a few key factors are
found to be of particular consequence for current employment status including employment prior to migration, time abroad, amount of savings brought back upon
return, return assistance, and intentions to re-migrate.
C. Loschmann : K. Marchand (*)
Maastricht Graduate School of Governance | UNU-MERIT,
Maastricht University, Boschstraat 24, 6211 AXMaastricht, the
Netherlands
e-mail: k.marchand@maastrichtuniversity.nl
These findings help to shed light on the reintegration
process of returned refugees in Afghanistan, an issue of
growing concern for policymakers taking into consideration the recent increase in return flows.
Keywords Refugees . Return migration . Repatriation .
Labor market . Reintegration . Afghanistan
JEL classification F22 . J15 . J24 . J61 . J62 . L26 . O53
1 Introduction
The topic of migration continues to receive considerable
attention as of late both within high level policy circles
and across popular media. This heightened interest is in
large part due to the impression that we are living in
times of unprecedented forced displacement, driven by
the fact that the absolute number of people in exile both
within and outside their countries of origin remains at a
modern-day high (UNHCR 2018a). It is important to
keep perspective, however, and consider that the relative
number of refugees compared to the world’s population
remains small and mostly stable (de Haas 2016). Still, at
the more local level, certain countries predominately in
the “Global South” are indeed facing significant pressure to cope with refugee populations. While it is difficult to estimate just how many of today’s refugees will
be integrated into their host societies, an important consideration over the medium- and long-term is their potential return back to their countries of origin. Just as the
influx of refugees from elsewhere may have important
1034
development-related consequences for a local community, so too can the sudden arrival of returnees who may
have spent years, if not lifetimes, abroad.
Only recently has return migration begun to gain
interest among academic scholars and policymakers as
evidence mounts that the knowledge, skills, and savings
acquired abroad and subsequently transferred upon return have the potential to contribute to positive development outcomes. For this potential to be realized,
however, the manner in which returnees reintegrate into
their communities, including into the labor market, is
fundamental. In this regard, certain case studies on
record have found that return migrants are more likely
than non-migrants to be self-employed rather than
employed as wage labor (Piracha and Vadean 2010;
Wahba and Zenou 2012). Yet such an observation is
ultimately ambiguous without a qualified understanding
of the greater context under study, including the underlying causes of migration in the first place. The majority
of studies looking at labor market outcomes of returnees
focus mainly on countries characterized by voluntary
labor migration. Very few offer insights into the livelihood activities of returned refugees in (post-)conflict
environments.
With this in mind, this paper investigates the labor
market outcomes of returned refugees in Afghanistan.
Even though Afghans today still make up one of the
largest refugee populations outside their country, Afghanistan has also experienced significant return migration at various intervals over the last three decades.
Figure 1 illustrates, for example, how the Taliban’s
ouster in 2001 resulted in the sudden return of 2 million
refugees and another 3.6 million in the immediate years
following. While return flows tapered off around 2006,
the yearly figure of officially returned refugees in 2016
was back up to levels not seen since then. In fact, the
estimated 385,000 individuals repatriated throughout
2016 are more than fivefold increase relative to the
year prior, and IOM (2017) believes there may have
been be an additional 690,000 undocumented returnees.
This study is motivated by the fact that the reintegration of returned refugees in a (post-)conflict setting like
Afghanistan greatly depends on the ability to access
sustainable income-generating activities as a basis of
their livelihood. The analysis relies on cross-sectional
data from an original household survey collected in five
provinces of Afghanistan in 2011. The analytical approach is twofold: first, to compare returned refugees to
non-migrants in regard to what influences their
C. Loschmann, K. Marchand
respective labor market outcomes; and second, to investigate the influence of the returnees’ migration and
return experience on those outcomes. Because we are
interested in the labor market reintegration of returned
refugees, we only take into consideration those returnees
who originally migrated because of political or security
concerns or because of an environmental disaster. And
while recent reports highlight the increasingly involuntary nature of return for many Afghan refugees and
asylum-seekers (see, e.g., Human Rights Watch 2017;
Bjelica and Ruttig 2017), our sample is made up of
returnees from Iran and Pakistan who chose to return
because of perceived improvements to the political and
security situation in the country or due to a variety of
personal reasons (e.g., missed country, culture, or family). None returned because of work-related opportunities, helping to isolate our estimates from selection bias.
The sample ultimately covers 1841 individuals, of
which 461 are returned refugees.
The results indicate that returned refugees in Afghanistan are less likely to be wage employed in comparison
to non-migrants. Differences in labor market outcomes
arise from dissimilarities in socioeconomic status including educational attainment and the strength of social
networks. As for the influence of the migration and
return experience on employment status, a few key
factors are found to be of consequence. First and somewhat expected, being employed prior to migrating helps
raise the likelihood of being wage employed upon return. Less expected, however, given the context of
forced migration, the more years spent abroad the greater the odds of being wage employed, indicating skill
acquisition while abroad. Moreover, the amount of savings brought back upon return is positively associated
with becoming self-employed in agriculture or herding
(i.e., subsistence farming), while the opposite is true if
the individual received assistance upon return or has
intentions to re-migrate.
From a scholarly perspective, this study contributes
to the academic discussion in a variety of ways. For one,
the empirical evidence on refugee return and reintegration into the labor market is relatively limited. Even
though descriptive accounts of certain contexts provide
insight (see, e.g., Mesic and Bagic 2011; ILO 2013),
none to the best of our knowledge take a quantitative
methodological approach. One clear reason for this is
the fact that large-scale data sets covering conflictaffected environments such as Afghanistan are generally
rare. That we are able to rely on relatively uncommon
The labor market reintegration of returned refugees in Afghanistan
Fig. 1 Refugees and returned
refugees in Afghanistan. Source:
UNHCR 2018b. The number of
“Refugees” indicates the stock of
the population from Afghanistan,
while the number of “Returned
refugees” indicates flows within
the calendar year (i.e., January–
December).
1035
7,000,000
*Data collection in 2011
6,000,000
5,000,000
4,000,000
3,000,000
2,000,000
1,000,000
0
1990 1992 1994 1996 1998 2000 2002 2004 2006 2008 2010 2012 2014 2016
Refugees
primary data in this context provides us with a unique
opportunity to investigate the labor market reintegration
of returned refugees. Furthermore, by investigating labor market outcomes, including self-employment in
business, of both returned refugees and non-migrants,
the study contributes more generally to the literature on
labor markets in (post-)conflict settings. Such analysis is
important considering the linkages that have been drawn
in the literature between employment creation, economic growth, and stabilization after conflict (see, e.g.,
Collier 2009; Cramer 2015).
The remainder of this paper is structured as follows.
The next section provides a review of the relevant
literature concerning return migration and the dynamics
related to labor market outcomes upon return. This is
followed by a more detailed account of the methodology
including the empirical approach and sample. We finally
present the results and conclude with a brief summary
and policy discussion concerning ways to support
returned refugees in Afghanistan in their labor market
reintegration.
2 Literature review
In a (post-)conflict setting still fraught with lingering
uncertainty about the future, the sustainability of return
and reintegration is often a challenging process (Bascom
2005). Reintegration takes time and for some returnees
is never achieved, often resulting in re-migration
(Kuschminder 2013). Many factors contribute to a successful return and reintegration, including a welcoming
community, security, access to basic infrastructure and
services, and the chance to make a decent living. A
Returned refugees
robust local labor market providing job opportunities
and livelihood possibilities therefore greatly influences
whether or not a returnee chooses to settle permanently
again at origin (Black and Gent 2006).
At the same time, conflicts have significant impacts
on labor markets and change the types of employment
opportunities available (Stewart 2015). A common
feature of conflict is an observed reallocation of employment, largely depending on the development of
said conflict. Where infrastructure such as power
plants or fuel facilities is destroyed, for example, major
providers of employment disappear. Equally, trade and
tourism tend to be affected by conflict and impact
employment opportunities in related sectors (Cramer
2015). More generally, labor markets in developing
countries often leave individuals to decide between
engagement in self-employment activities, agriculture,
household work, or migration due to a scarcity of
wage-employment opportunities, particularly in rural
regions (Nagler 2015).
The role of small businesses and self-employment,
especially in the informal sector, therefore has received
specific attention within these discussions highlighting
the importance of such activities in the context of developing countries in terms of employment and income
generation (Zenou 2008). While self-employment in
such contexts may intrinsically be subsistence-based, it
is helpful to consider such an activity in relation to
entrepreneurship, which more often than not is associated with positive changes such as job and wealth creation, innovation, and related welfare effects (Ács 2006;
Desai 2011; Naudé 2010b). Desai (2011), for example,
argues that entrepreneurship creates bottom-up activities
addressing immediate and short-term problems. Naudé
1036
(2010a), on the other hand, believes that entrepreneurs
drive the structural transformation of an economy away
from agriculture and toward manufacturing and services. Beyond these macro-level effects, small businesses may also simply be a viable survival strategy
when institutional support mechanisms are lacking
(Ciarli et al. 2010). In this respect, it is necessary to
make the distinction between opportunity and necessity
entrepreneurship. Whereas opportunity entrepreneurs
are thought to seize unique opportunities in the market,
necessity entrepreneurs engage in entrepreneurial activities because it is the best or only option available
(Reynolds et al. 2005). According to Margolis (2014),
roughly two thirds of self-employment in developing
countries is due to a lack of other alternatives for income-generation. Even though entrepreneurship based
on opportunity may be preferred, the activities of necessity entrepreneurs are still important to consider in a
context like that of Afghanistan, as such enterprises
provide at least one livelihood and have the potential
to contribute to local development (Ciarli et al. 2010).
When it comes to finding a suitable activity in the
labor market, three primary types of capital are essential:
human, financial, and social. Human capital describes
natural characteristics like intelligence and health but
also skills and abilities acquired mainly through education and work experience (Bosma et al. 2004). Financial
capital principally consists of personal savings as well as
private and public loans either from friends and family, a
financial institution, or the government. And social capital embodies an individual’s relationships to others and
the network on which one can rely (Westlund and
Bolton 2003). With all, return migrants are often believed to have a distinct advantage in comparison to
their non-migrant counterparts (Black et al. 2003). Beyond the potentially innate differences regarding risk
aversion and the like, returnees often had sent or come
back with substantial savings accumulated while abroad
to be consumed and/or invested once back (OECD
2008). Moreover, returnees might arrive with additionally acquired education or skills useful to local markets
(Cassarino 2004). Lastly, in many cases, spending time
abroad exposes one to a diverse set of social networks
potentially providing a returnee with a greater number of
links and therefore opportunities beyond the community
once back. On the other hand, migrating in the first place
may lead to a loss in contact with local networks which
may put returnees at a disadvantage with respect to local
opportunities (Klagge et al. 2007).
C. Loschmann, K. Marchand
With this conceptual framework at hand, a number of
empirical studies focusing on voluntary migration have
made an effort to identify the labor market activities of
returnees and more specifically the factors leading to
self-employment and small business establishment.
With regard to human capital, there is ample evidence
that points to its importance in finding employment and
for the small business creation by returnees. Looking at
Turkish returnees from Germany, Dustmann and
Kirchkamp (2002) find evidence of education as a driving factor in self-employment. In this case, those with a
higher level attained have a greater probability of opening a business compared to non-participation, likely due
to expected positive returns of education increasing the
likelihood of choosing such an activity. Borodak and
Piracha (2011) confirm such finding when it comes to
returning Moldovans yet explain that those at a lower
skill level are unable to afford being without a formal
source of income leading to the greater likelihood of
wage employment. Conversely, however, Ilahi (1999)
and McCormick and Wahba (2001) show that returnees
with higher levels of education are more likely to be
wage employed rather than self-employed in the case of
Pakistan and Egypt, respectively. Still, additional evidence in the latter case suggests that the length of
employment while abroad also positively influences
the odds of becoming self-employed upon return, an
outcome corroborated elsewhere (McCormick and
Wahba 2001; Black and Castaldo 2009; Wahba and
Zenou 2012). Therefore it appears as Tani and
Mahuteau (2008) show in their study of returnees to
North Africa that the practical experiences and skills
gained abroad play a crucial role in determining selfemployment, while formal education is more likely to
lead to wage employment even if it also decreases the
chance of unemployment.
The most common finding concerning selfemployment relates to financial capital and more
specifically the role of savings accumulated abroad in
the launch of a small business upon return. For instance,
both Arif and Irfan (1997) and Piracha and Vadean
(2010) find strong indication that return migrants are
more likely to be self-employed in business in comparison to non-migrants precisely because they had the
opportunity to gather start-up capital abroad. Focusing
exclusively on return migrants, Ilahi (1999), Dustmann
and Kirchkamp (2002), and Mesnard (2004) arrive at a
similar conclusion showing return migrants are prone to
invest savings from abroad in business ventures back
The labor market reintegration of returned refugees in Afghanistan
1037
home, suggesting temporary migration may at times be
employed as a strategy to overcome credit constraints
faced in the country of origin. While in the context of
forced migration, this strategy is less applicable, and it
may still be the case that migrants are able to accumulate
savings abroad that they can indeed utilize upon return
to the home country.
Finally, when it comes to social capital, personal
networks play a significant role in the reintegration of
return migrants in the home country (Omata 2012). The
role networks play in the labor market reintegration of
returnees is on the other hand empirically unclear. Black
and Castaldo (2009), for instance, find that the strength
of personal linkages, measured by membership in an
association in the host country and visits home, does
have a positive effect on business start-ups of return
migrants in both Ghana and Côte d’Ivoire. Conversely,
Piracha and Vadean (2010) show in the case of Albania
no evidence of social capital, proxied by the number of
friends one has, having any impact on the occupational
choice of return migrants despite there being a significant effect for non-migrants. Going one step further,
Wahba and Zenou (2012) model the potential trade-off
between the financial and human capital accumulated
while abroad against the social capital lost due to moving in the first place. In the context of Egypt, they
provide evidence that gains in both financial and human
capital which play a significant role in the choice of selfemployment upon return, whereas a loss in social capital
has no impact on returnees to become entrepreneurs
even if it does for non-migrants. In all, the role of social
capital largely depends on the specific local context as
well as the type of employment activity. Return migrants
may have comparative advantages in sectors where
foreign networks are specifically beneficial, while nonmigrants may benefit from having stronger local networks where those are most important.
Although at times differing, overall the existing studies indicate that the migration experience greatly influences labor market outcomes of return migrants once
back in the country of origin. Still, these experiences are
not uniform as some individuals are inherently presented with greater opportunities abroad and therefore greater job prospects upon return (Arif and Irfan 1997;
Gubert and Nordman 2011; Kilic et al. 2009). In a study
of returnees in seven capital cities in Western Africa, for
example, de Vreyer et al. (2010) show that there are
significant differences in the uptake of an entrepreneurial activity upon return depending on the country of
migration. In particular, they find those who returned
from OECD countries in comparison to non-OECD
countries are more likely to be entrepreneurs due to the
better chances to accumulate financial and human capital at those destinations. Additionally, differences in the
environment to which the migrant returns also play an
important role. As such, it is important to better understand the labor market activities of returned refugees in
particular (post-)conflict settings, in order to promote
conditions that facilitate sustainable return and reintegration processes in such contexts.
3 Methodology
3.1 Empirical approach
As indicated prior, our objective is twofold: first, to
compare returned refugees to non-migrants in regard
to what influences their respective labor market outcomes; and second, to investigate the influence of the
returnees’ migration and return experience on those
outcomes. In both cases, we employ a multinomial logit
model to estimate the propensity that an individual is
engaged in one of the three labor market activities
compared to the base alternative of not working1. The
three activities include self-employment in business,
agriculture which incorporates subsistence farming
and/or animal herding, and wage employment. The
model can be expressed as:
Prðyi ¼ jÞ ¼
eβ j xi
∑Kk¼1 eβk xi
where yi represents activity j of individual i. On the
right-hand side of the equation, the xi vector incorporates a range of individual, household, and community
characteristics, as well as migration- and return-related
characteristics when looking exclusively at returnees,
and β j represents the vector of activity-specific
coefficients.
Prior to estimating the model, it is important to consider the possibility of self-selection. As has been
established in the literature, there is reason to believe
that both migrants and returnees may be intrinsically
1
Not working refers to individuals unemployed and actively looking
for work, as well as individuals unemployed and wanting a job but not
actively looking.
1038
different from non-migrants based on unobservable
characteristics that are correlated with employment status. Most of the evidence in this regard pertains to labor
migration and the prospect that migrants are inherently
more intrepid and thus less risk averse than the nonmigrant population and that return migrants may have
picked up informal skills and expertise during their time
abroad (Dustmann and Kirchkamp 2002; OECD 2008,
2010; Borodak and Piracha 2011). Similarly, migrants
may return only when they believe that the prospects for
employment have improved to their advantage (Novak
2007; Hautaniemi et al. 2013). As discussed prior, our
sample is limited to only those returnees who originally
migrated because of political or security concerns or
because of an environmental disaster and who stated
their return was motivated by improvements to the
political and security situation of the country or a variety
of personal reasons (e.g., missed country, culture, or
family).2 We believe that by excluding voluntary migrants, and the few returnees motivated by employment
opportunities, our estimates are less afflicted by selection bias than would otherwise be the case. Nonetheless,
even in a context of systematic insecurity, there may be
inherent differences between those able to migrate, as
well as those deciding to return. The estimates, therefore, may still potentially suffer from positive selfselection and should be interpreted with caution. However, under such conditions, one can assume such bias
would lead to inflated estimates and as a result can be
considered upper bounds.
3.2 Sample
The data used for the analysis comes from an original
household survey implemented across Afghanistan in
2011, for the IS Academy “Migration & Development:
A World in Motion” project.3 Although not nationally
representative due to difficulties surveying in high risk
locations, the sampling incorporated households of differing fundamental characteristics in order to increase
overall representativeness. More specifically, the five
provinces of Kabul, Herat, Balkh, Nangarhar, and
2
The percentage of all returnees who indicated their original migration
episode was voluntary is around a quarter of the original sample, while
the percentage of all returned refugees who indicated they returned for
employment opportunities is less than 1 %.
3
For more information on the IS Academy project, as well as sampling
methodology in the case of Afghanistan, see: <https://www.merit.unu.
edu/themes/6-migration-and-development/is-academy/>.
C. Loschmann, K. Marchand
Kandahar were selected because of their highly populated urban centers, geographical dispersion, and varied
profiles of migration. Within each province, a stratification of districts was applied based on whether they were
considered urban, semirural, or rural.4 This stratification
allowed for greater representation of different socioeconomic groups, and districts were chosen based on their
representativeness of the province at large. The primary
sampling units were then selected at random taking into
consideration a detailed list of specific sites for enumeration provided by the Afghan Central Statistics Office.
In all, ten communities within an urban area and five
from each of the semirural and rural areas were selected
for enumeration. Within the communities, the absence
of any official household listing made it necessary for
the team leader to discuss the rough makeup of the
community with a local leader or elder prior to enumeration. This led to a general distributional profile of the
community based on current migrant, return migrant,
and non-migrant households which was then respected
throughout enumeration in order to be as representative
as possible. Finally, the selection of households followed a random starting point and fixed interval sampling
strategy in order to meet the pre-specified quota in each
community. Ultimately, the survey covered a total
14,777 individuals within 2005 households across 100
distinct communities.
Once excluding individuals outside the working age
of 15–65, inactive on the labor market, females and
returnees who migrated voluntarily, as well as returned
before 1992, we are left with a sample of 1841 respondents of which 461 are returned refugees.5 Table 1 provides the summary statistics of the sample, differentiated
by migration status. We report a mean difference test in
the final column, which only applies to those variables
applicable to both non-migrants and returnees. When
comparing non-migrants to returned refugees based on
the labor market outcome variable of interest, we find
little difference between the two groups. Returnees, on
4
Urban refers to those communities which are the district capital;
semirural refers to those communities which share a common border
with the district capital; and rural refers to those communities with no
common border with the district capital.
5
We look at male respondents that only given women’s labor force
participation in Afghanistan is systematically lower than that of men
(CSO 2014). We exclude inactive individuals, for example, retired or
permanently sick/disabled. We do not consider individuals who
returned prior to 1992 because of differences to the political climate
prior to the fall of the Najibullah regime in that year. These individuals
account for only 8% of all returnees in the original sample.
The labor market reintegration of returned refugees in Afghanistan
1039
average, are about six percentage points more likely to
be self-employed in business, whereas non-migrants are
around five percentage points more likely to be wage
employed, with the mean differences significant at the
10% level. There is no statistical mean difference between not working and being engaged in agricultural
activity.
As for fundamental demographic characteristics,
there are considerable differences in terms of household
position and age as nearly all returned refugees are the
household head in comparison to around half of nonmigrants, and the average difference in age between the
two groups is 8 years. Likewise, returnees are more
likely to be married in comparison to non-migrants, as
well as have more children. Regarding educational attainment, a proxy for human capital, there is only a
marginal statistical difference between the two groups
with around 15% of returnees having a secondary or
higher level of education compared to 11% of nonmigrants. In terms of socioeconomic status, there is no
discernable difference between groups based on land
ownership. Still, returned refugees are on average 12
percentage points more likely to have social capital in
the form of a local social network, indicated by involvement in a community organization other than a religious
group.
In looking at some of the migration-related characteristics for returned refugees only, a quarter of returnees
were employed prior to migrating and just over twothirds migrated to Pakistan, while the rest went to Iran.6
The average time abroad is around 12 years, and only
6% sent remittances during that period. In terms of the
return experience, around half repatriated between the
fall of the Najibullah regime in 1992 and the ouster of
the Taliban regime in 2001, corresponding to the average of 10 years since return. Nearly three-fourths of
returnees cited improvements in the political and/or
security situation as the main reason for return, while
the rest reported personal reasons (i.e., wanting to be
closer to my family and friends). Looking at the financial capital of returned refugees, the average amount of
savings brought back upon return is 246 USD, and 28%
received support upon return in the form of financial
assistance by either an international organization or the
government. Lastly, only 19% of returnees have concrete intentions to re-migrate in the future.
6
Just four returnees in the original sample indicated having migrated to
and returned from a country outside of Pakistan or Iran (i.e., England,
UAE, Saudi Arabia, and Tajikistan). However, none of those observations are included in the final sample used for analysis following the
aforementioned exclusion criteria.
4 Results
In presenting our empirical results, we begin with a
simple examination of whether being identified as a
returned refugee makes an individual more likely to be
involved in one of the three labor market activities in
comparison to not working. In all models hereafter, we
report the relative risk ratios along with robust standard
errors in parentheses. And aside from the sociodemographic covariates presented in the tables, all
models control for the ethnicity (i.e., Pashtun, Tajik,
other7) of the returnee as well as the district type (i.e.,
urban, semirural, or rural) and province of return.
Table 2 shows that when controlling for basic sociodemographic characteristics, a returned refugee is on
average less likely to be involved in agricultural activity
as well as wage employment holding all else constant.
More specifically, for returned refugees relative to nonmigrants, the relative risk of being wage employed is
less likely by a factor of 0.42. While the same relationship holds for self-employment in business, the result is
significant at the 10% level. Taking into consideration
the potential for positive self-selection as previously
discussed, these estimates can be considered upper
bounds, meaning the negative effect may be even greater than is found here.
Expecting differences between non-migrants and
returned refugees, we conduct a Chow test to rule out
the null hypothesis of similar coefficients across the two
groups. The results of the test show a statistically significant chi-square value for both self-employment in
business and wage employment. This indicates that the
estimated coefficients between groups are statistically
different and individual covariates in our model influence non-migrants and returnees differently for both
labor market categories. The estimated coefficients for
agriculture, on the other hand, are not statistically different between both groups, suggesting return migration
may not be influential for this activity.
Table 3 compares non-migrants and returned refugees in regard to what influences their respective labor
7
The original questionnaire included more ethnic groups (e.g., Uzbek,
Hazara, Turkmen and Baloch); however, the limited number of each in
the sample led us to group these into one “other” category.
1040
C. Loschmann, K. Marchand
Table 1 Summary statistics, comparing non-migrants to returned refugees
Non-migrant
Mean
Returned refugees
Sd
Mean
Sd
t-test
Labor market activity:
Not working
0.1638
0.3702
0.1475
Self-employment
0.4362
0.4961
0.4989
0.3550
0.5005
Agriculture
0.1362
0.3432
0.1410
0.3484
Wage employment
0.2638
0.4408
0.2126
0.4096
*
***
*
Socio-demographic covariates
Head of HH
0.5043
0.5002
0.9306
0.2544
Age
32.57
14.17
41.30
12.09
***
Married
0.5920
0.4916
0.9393
0.2391
***
Number of children
2.90
1.95
3.28
1.88
***
Education attainment:
Lower than secondary
0.8884
0.3150
0.8482
0.3593
*
Secondary or higher
0.1116
0.3150
0.1518
0.3593
*
HH owns land
0.2290
0.4203
0.2234
0.4170
Community involvement
0.6812
0.4662
0.7983
0.4017
0.2581
0.4381
0.7115
0.4536
***
Migration and return covariates
Employed pre-migration
Migration destination:
Pakistan
Iran
0.2885
0.4536
Migration duration (years)
12.32
7.58
Remittances sent
0.0564
0.2309
0.5141
0.5003
2002–2011
0.4859
0.5003
Time since returned (years)
10.26
5.03
Return reason: political/security
0.7223
0.4483
Return period:
1992–2001
Return savings (USD)
246.19
889.54
Return assistance
0.2842
0.4515
Re-migration intentions
0.1887
0.3917
Significance levels: * p < 0.10, ** p < 0.05, *** p < 0.01
market activity. First, we notice statistically significant
similarities in terms of basic demographic characteristics. For instance, being the head of the household and
married makes an individually more likely to be
employed in nearly all three categories compared to
not working for both non-migrants and returnees. Alternatively, the older an individual, the slightly less prone
they are to be self-employed in business or wage
employed, regardless of migration status. Only in the
case of returnees are these characteristics not relevant
for being involved in agriculture.
As for educational attainment, the results paint a
mixed picture. Non-migrants with a higher level of
educational attainment (i.e., at least secondary schooling) are less likely to be engaged in agricultural work
and more likely to be involved in wage labor. For
returned refugees, however, statistical significance
drops out for wage employment. This suggests that
non-migrants with low levels of education have few
options other than subsistence agricultural labor, whereas relatively higher levels of education open up opportunities for wage labor. Conversely, the prospect of
The labor market reintegration of returned refugees in Afghanistan
1041
Table 2 Labor market activity
Base: not working
Returned refugee
Self-employment
0.7093*
− 0.1417
Head of HH
Education: secondary or higher
N
− 0.9691
4.8012***
− 1.2508
0.9484***
− 0.0079
2.3338***
− 0.5853
0.9949
0.9839
− 0.051
− 0.0421
0.6412**
0.2429***
− 0.1071
1.053
5.0329***
− 1.1382
2.2726***
− 0.3962
Pseudo-R2
3.0185***
0.4169***
− 0.0913
0.9571
− 0.2051
Community involvement
− 0.0092
Wage employment
− 0.0385
− 0.1449
HH owns land
0.9634***
3.1273***
− 0.7458
Number of children
5.1664***
− 1.6244
0.9438***
− 0.0073
Married
0.5800**
− 0.1515
4.6679***
− 1.1397
Age
Agriculture
2.6145***
− 0.6345
2.4956***
− 0.5743
0.9316
− 0.1926
2.1635***
− 0.3945
0.2080
1841
Significance levels: * p < 0.10, ** p < 0.05, *** p < 0.01. Relative risk ratios are reported, with robust standard errors in parentheses. The
reference group for educational attainment is “lower than secondary.” Other controls not reported include “Ethnicity,” “District type,” and
“Province”
wage employment for returned refugees has less to do
with their level of education.
With respect to household socioeconomic characteristics, as to be expected, both non-migrants and returned
refugees within households owning land have a higher
likelihood of being engaged in an agricultural activity
relative to not working. More interestingly, the strength
of social networks, proxied for by involvement in a
community organization, appears to be similarly relevant for both non-migrants and returned refugees across
all labor market outcomes.
Table 4 reports the differences across labor market
activities based on the migration and return experience
of returned refugees only. Nearly all of those same
individual and household characteristics influential in
the previous model are once again statistically significant, so as a matter of parsimony, only the migrationand return-related characteristics of interest are presented here. First, and somewhat expectedly, we find that
those individuals who were employed prior to migrating
have a higher likelihood of being wage employed in
comparison to not working upon return. Less expected,
however, given the context of forced migration, the
more years spent abroad, the slightly greater the likelihood of being wage employed indicating a degree of
skill acquisition. Conversely, returnees who originally
migrated to Iran compared to Pakistan are more likely to
be involved in farming or herding upon return. The
same is true regarding the number of years since return
and the amount of savings brought back, although all are
only marginally statistically significant at the 10% level.
Lastly, individuals having received assistance upon return and with concrete intentions to re-migrate are less
likely to be occupied with agriculture. We believe this
indicates labor-intensive activities such as farming or
herding animals may necessitate high upfront investment in productive assets like land and livestock not
covered by the support received but which makes future
movement less desirable.
5 Conclusion
The reintegration into the local labor market is a key
element of the sustainable return of refugees in
(post-)conflict settings. Yet the income-generating
1042
C. Loschmann, K. Marchand
Table 3 Labor market activity, comparing non-migrants to returned refugees
Non-migrant
Base:not working
Head of HH
Selfemployment
4.4075***
− 1.0821
Age
0.9464***
− 0.0087
Married
3.3443***
− 0.8405
Number of children
0.9130**
− 0.0418
Education: secondary or higher
0.6148*
− 0.1721
HH owns land
0.9018
− 0.2044
Community involvement
2.3039***
− 0.4655
Pseudo-R2
N
Returned refugee
Agriculture
5.3701***
− 1.7967
0.9617***
− 0.0111
3.1959***
Wage
employment
4.7482***
− 1.2748
0.9478***
− 0.0094
4.8621**
− 3.0015
0.9381***
− 0.015
Agriculture
3.6079
− 2.8974
0.9634*
− 0.0188
Wage
employment
5.7055**
− 4.8777
0.9501***
− 0.0167
2.7105
2.7101
1.9905
− 1.1225
− 0.657
− 1.9118
− 2.535
− 1.7207
0.9906
0.9446
1.0858
1.0204
1.1387
− 0.0604
− 0.0471
− 0.0908
− 0.1072
− 0.1041
0.2753**
− 0.1707
3.9817***
− 1.03
2.6049***
− 0.7477
0.2177
1380
2.5051***
Selfemployment
2.8348***
− 0.8252
0.8992
− 0.3872
0.9534
1.7468
− 0.2276
− 0.7893
2.0563***
− 0.433
2.9124***
− 1.112
0.1652**
− 0.1254
11.3484***
− 5.8669
3.3171**
− 1.9121
2.2920
− 1.0599
0.855
− 0.4509
2.8980***
− 1.1689
0.2118
461
Significance levels: * p < 0.10, ** p < 0.05, *** p < 0.01. Relative risk ratios are reported, with robust standard errors in parentheses. The
reference group for educational attainment is “lower than secondary.” Other controls not reported include “Ethnicity,” “District type,” and
“Province”
activities of such populations upon return, and particularly the role of self-employment, are not well understood. Literature on the return of labor migrants has
shown that returnees have a higher likelihood of being
self-employed in contrast to wage employment than
their non-migrant counterparts. Similar studies looking
at the return of forced migrants, on the other hand, are
lacking. Utilizing a unique data set, this paper therefore
investigates the labor market outcomes of returned refugees in Afghanistan, a country that has been characterized by conflict and general insecurity for decades.
The results of the analysis show that returned refugees are less likely to be wage employed in comparison
to non-migrants, and differences in labor market outcomes seem to arise primarily from dissimilarities in
socioeconomic status. For example, non-migrants with
higher levels of schooling are more likely to be in waged
labor, whereas labor market activities have less to do
with educational attainment for returnees. As such, we
can deduce that those individuals of a higher socioeconomic status are generally able to take advantage of the
insufficient employment opportunities available, yet
having left the country and since returned limits any
such ability. On the other hand, having social capital
within the local community, proxied for by community
involvement, helps both non-migrants’ and returnees’
chances of being engaged in all labor market activities
similarly.
As for the influence of the migration and return
experience on labor market outcomes, a few key factors
are found to be of consequence. First, and somewhat
expectedly, being employed prior to migrating helps
raise the likelihood of being wage employed upon return. Less expected, however, given the context of
forced migration, the more years spent abroad the greater the odds of being wage employed pointing to skill
acquisition. Moreover, and likely corresponding to the
prior notion related to socioeconomic status, those who
received financial assistance to return from either an
international organization or government program are
less likely to be involved in agriculture as well as wage
employed. On the other hand, the amount of savings
brought back upon return is beneficial when it comes to
agriculture or herding, highlighting the importance of
financial capital for engaging in such activities. Finally,
individuals with concrete intentions to re-migrate are
The labor market reintegration of returned refugees in Afghanistan
1043
Table 4 Labor market activity for returnees, with migration and return experience
Base: not working
Employed pre-migration
Migration duration (years)
Self-employment
Agriculture
1.0656
0.3563
− 0.4277
− 0.2324
Wage employment
2.1744**
− 0.9228
1.0342
1.0031
1.0479*
− 0.0264
− 0.0389
− 0.0298
Migration destination
Iran
0.831
− 0.4893
Remittances sent
10.2048**
− 10.4416
1.7203
− 1.019
0.9843
1.3304
0.1693
− 0.851
− 1.4124
− 0.2071
Return period
2002–2011
Time since returned (years)
Return reason: political/security
Return savings (log of USD)
Return assistance
0.5023
1.0911
0.9115
− 0.275
− 0.7591
− 0.5451
1.0092
1.1223*
1.0449
− 0.056
− 0.0822
− 0.0646
0.6685
0.979
0.9114
− 0.2608
− 0.4874
− 0.3816
1.1102
1.1884*
0.9854
− 0.0789
− 0.1143
− 0.0778
0.6446
− 0.2323
Re-migration intentions
1.803
− 0.9119
Pseudo-R2
N
0.3509**
− 0.18
0.2808**
− 0.2015
0.5031*
− 0.2069
1.2658
− 0.6818
0.2680
461
Significance levels: * p < 0.10, ** p < 0.05, *** p < 0.01. Relative risk ratios are reported, with robust standard errors in parentheses. The
reference group for Migration destination is “Pakistan”; and for Return period is “1992–2001.” Results for the full model provided upon
request
less likely to be occupied with agriculture or herding,
indicating labor-intensive activities such as farming necessitate greater investment in land and assets including
livestock, making future movement less desirable.
Taking a step back from our findings, it is important
to consider the evolving context related to migration
from and return to Afghanistan since the data was collected in 2011. As Fig. 1 shows, return flows increased
once again in 2016 in great part due to a changing policy
environment toward Afghans in Pakistan, as well as a
rise in forced returns from Europe. Therefore, even
though the data used in the analysis may be relatively
dated, the fundamental issues addressed are arguably
just as relevant today as they were a few years ago.
In terms of policy, the findings imply a number of
opportunities to assist small business creation by returnees in Afghanistan with the goal of supporting
sustainable return and reintegration. When considering
potential interventions, however, it is necessary to emphasize proper targeting and a logical focus on areas of
high return. Programs already providing basic support to
returnees (e.g., shelter assistance) currently operate in
several provinces known for high rates of return including Nangarhar, Kabul, and Lagham in the east, Kandahar in the south, and Herat in the west (MGSoG and
Samuel Hall 2013). Beyond targeting though, it is also
important that assistance be meaningful to the localized
context of the recipient. Unsurprisingly, individuals in
rural areas are more likely to become self-employed in
agriculture than in business. As such, in-kind assistance
like tools, seeds, or livestock are likely to enable and
support these agricultural activities, whereas assistance
like business training may be more appropriate in an
urban context.
1044
Given the role of social networks highlighted in our
study, assistance focused on helping returnees build
strategic linkages in their communities may be particularly beneficial. The capacity of return migrants, for
instance, could be improved by bringing them in touch
with other actors like business associations or a network
of experts. Indeed a now-outdated program run by the
Dutch IntEnt Foundation providing support to Afghan
return migrants from the Netherlands had an extensive
network at origin willing to help newcomers by sharing
knowledge, contacts, and in some cases even investments (de Haas 2006). Moreover, a similar and currently
ongoing program by the German Development Cooperation has proven to be beneficial to return migrants
wanting to open a business in several developing countries and emerging market economies, for example,
Morocco, Cameroon, Ghana, Senegal and Nigeria in
Africa or Ecuador, and Colombia and Peru in Latin
America (CIM 2018). Additionally, our finding
concerning the importance of savings suggests a possible credit constraint at home which earnings from
abroad help to ease. With this in mind, small grants
and/or loans for the purpose of investing in a business
venture may be a viable strategy if provided to a suitable
recipient with practical ideas and the capacity to carry
them out. Careful selection is therefore important to
increase the likelihood of effective implementation, but
certain conditions could be put in place to help improve
the odds of success including mandatory attendance to
training session or membership in a business group.
Above all, reintegration into the labor market is an
important step in the process of sustainable return to a
(post-)conflict environment like that of Afghanistan. In
a context where wage employment is systematically
limited however, self-employment may simply be the
only if not best viable income-generating activity. Providing support then to returned refugees for this specific
purpose, whether for a business venture or agricultural
endeavor, has the potential to not only facilitate reintegration and improve individual welfare but also contribute to local development.
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