In this overview, we seek to provide a comprehensive resource for scholars of female immigrant labor market integration in Europe, to act both as a reference and a roadmap for future studies in this domain. We begin by presenting a contextual history of immigration to and within Europe since the Second World War, before outlining the major theoretical assumptions about immigrant women’s labor market disadvantage. We then synthesize the empirical findings from quantitative studies published between 2000 and 2020 and analyze how they line up with the theoretical predictions. We supplement the review with descriptive analyses using data from 2019, which expose any discrepancies between the current situation in European countries and the situation during the time periods considered in the reviewed studies. Our review has three main take-aways. First, the theoretically relevant determinants of immigrant women’s labor market integration are generally supported by empirical evidence, but the unexplained heterogeneity that remains in many cases between immigrant women and other groups on the labor market calls for more systematic and comprehensive investigations. Second, quantitative studies which take a holistic approach to studying the labor market disadvantages of immigrant women—and all the considerations related to their gender and nativity that this entails—are rare in this body of literature, and future studies should address this. Third, fruitful avenues for future contributions to this field include expanding on certain overlooked outcomes, like immigrant women’s self-employment, as well as geographic regions that until now have received little attention, especially by employing the most recent data.
Objective: This article investigates the role of motivation in female immigrants' labour force participation. Focusing on recently-arrived immigrants (who have resided in the host country for 18 months or less), we compare the outcomes of two different ethnic groups in Germany: Poles and Turks. Background: The immigrant integration literature tends to focus on the role of resources in immigrant labour market integration. However, when examining particularly the labour force participation of female immigrants, their motivation for joining the labour force is also important. Previous studies of female immigrants in Germany have often neglected this consideration, which includes aspects like culturally-specific gender values and perceived ethnic discrimination. Method: We use data from the SCIP project (Diehl et al., 2015) to conduct logistic regressions on female immigrants’ labour force participation. Our sample includes 829 female immigrants from Poland and Turkey between the ages of 18-60, who were either active in the labour force or were 'at risk' of entering. Results: In line with previous studies, our analysis shows that female immigrants' labour market resources, mainly their prior work experience and German proficiency, greatly reduce the ethnic gap in labour force participation rates. Moreover, motivational factors have a large impact on this outcome for both groups, and greatly enhance the picture that our empirical models present. However, we find no evidence that perceived ethnic discrimination plays an important role. Conclusion: Our analysis indicates that when seeking to understand the labour market participation of female immigrants, their resources and motivation should be seen as key components of a gender-sensitive analysis.
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