The Gender Pay Gap Revisited with Big Data: Do Methodological Choices Matter?

43 Pages Posted: 2 Mar 2021

See all articles by Conny Wunsch

Conny Wunsch

University of Basel; IZA Institute of Labor Economics; CESifo (Center for Economic Studies and Ifo Institute); University of St. Gallen

Anthony Strittmatter

CREST-ENSAE

Multiple version iconThere are 3 versions of this paper

Date Written: February 2021

Abstract

The vast majority of existing studies that estimate the average unexplained gender pay gap use unnecessarily restrictive linear versions of the Blinder-Oaxaca decomposition. Using a notably rich and large data set of 1.7 million employees in Switzerland, we investigate how the methodological improvements made possible by such big data affect estimates of the unexplained gender pay gap. We study the sensitivity of the estimates with regard to i) the availability of observationally comparable men and women, ii) model flexibility when controlling for wage determinants, and iii) the choice of different parametric and semi-parametric estimators, including variants that make use of machine learning methods. We find that these three factors matter greatly. Blinder-Oaxaca estimates of the unexplained gender pay gap decline by up to 39% when we enforce comparability between men and women and use a more flexible specification of the wage equation. Semi-parametric matching yields estimates that when compared with the Blinder-Oaxaca estimates, are up to 50% smaller and also less sensitive to the way wage determinants are included.

JEL Classification: C21, J31

Suggested Citation

Wunsch, Conny and Strittmatter, Anthony, The Gender Pay Gap Revisited with Big Data: Do Methodological Choices Matter? (February 2021). CEPR Discussion Paper No. DP15840, Available at SSRN: https://ssrn.com/abstract=3795223

Conny Wunsch

University of Basel ( email )

Petersplatz 1
Basel, CH-4003
Switzerland

IZA Institute of Labor Economics ( email )

P.O. Box 7240
Bonn, D-53072
Germany

CESifo (Center for Economic Studies and Ifo Institute) ( email )

Poschinger Str. 5
Munich, DE-81679
Germany

University of St. Gallen ( email )

Dufourstrasse 50
St. Gallen, 9000
Switzerland

Do you have a job opening that you would like to promote on SSRN?

Paper statistics

Downloads
0
Abstract Views
357
PlumX Metrics