Gender wage difference estimation at quantile levels using sample survey data
Author(s)
Mihaela-Cătălina Anastasiade-Guinand
Date issued
September 19, 2023
In
TEST
Vol
2023
Reviewed by peer
true
Subjects
Gender gap statistics · Quantile estimation · Counterfactual distribution · GB2 distribution · Survey weights Quantile estimation GB2 distribution · Counterfactual distribution Survey weights
Abstract
This paper is motivated by the growing interest in estimating gender wage differences in official statistics. The wage of an employee is hypothetically a reflection of her or his characteristics, such as education level or work experience. It is possible that men and women with the same characteristics earn different wages. Our goal is to estimate the differences between wages at different quantiles, using sample survey data within a superpopulation framework. To do this, we use a parametric approach based on conditional distributions of the wages in function of some auxiliary information, as well as a counterfactual distribution. We show in our simulation studies that the use of auxiliary information well correlated with the wages reduces the variance of the counterfactual quantile estimates compared to those of the competitors. Since, in general, wage distributions are heavy-tailed, the interest is to model wages by using heavy-tailed distributions like the GB2 distribution. We illustrate the approach using this distribution and the wages for men and women using simulated and real data from the Swiss Federal Statistical Office.
Later version
https://rdcu.be/dnftn
Publication type
journal article
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