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Gender wage gap: A semi-parametric approach with sample selection correction
Authors:Matteo Picchio  Chiara Mussida
Affiliation:aTilburg University, Center, ReflecT, The Netherlands;bIZA, Germany;cDepartment of Economics and Social Sciences, Università Cattolica del Sacro Cuore, Piacenza, Italy
Abstract:Sizeable gender differences in employment rates are observed in many countries. Sample selection into the workforce might therefore be a relevant issue when estimating gender wage gaps. We propose a semi-parametric estimator of densities in the presence of covariates which incorporates sample selection. We describe a simulation algorithm to implement counterfactual comparisons of densities. The proposed methodology is used to investigate the gender wage gap in Italy. We find that, when sample selection is taken into account, the gender wage gap widens, especially at the bottom of the wage distribution.
Keywords:JEL classification: C21   C41   J16   J31   J71
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