A bivariate relative poverty line for leisure time and income poverty: Detecting intersectional differences using distributional copulas

Author:

Dorn Franziska12,Radice Rosalba3,Marra Giampiero4,Kneib Thomas1

Affiliation:

1. Chair of Statistic University of Goettingen Goettingen Germany

2. Institute for Socio‐Economics University of Duisburg‐Essen Duisburg Germany

3. Bayes Business School City University of London London UK

4. Department of Statistical Science University College London London UK

Abstract

Empirical research on poverty today often goes beyond a focus on income to consider other dimensions of well‐being. However, relatively few multidimensional poverty measures explicitly consider time‐use, despite its particular relevance to women's double burden of paid and unpaid work. We construct a bivariate relative poverty line between income and leisure, based on their joint distribution in the population. Because the strength of the dependence between income and leisure influences the vulnerability to poverty, we incorporate distributional regression into copula models. Utilizing the 2018 Mexican National Survey of Households, Income and Expenses, we investigate differences in bidimensional poverty with respect to gender and ethnicity. We find that the fraction defined as bidimensional poor is 18 percent points higher than the poverty rate computed from separate time and income measures. Those below the relative but above the absolute poverty line are primarily non‐indigenous women whose poverty is made visible by our approach.

Publisher

Wiley

Subject

Economics and Econometrics

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