Gender wage inequality: new evidence from penalized expectile regression

被引:0
作者
Marina Bonaccolto-Töpfer
Giovanni Bonaccolto
机构
[1] University of Genova,Department of Economics
[2] Kore University of Enna,School of Economics and Law
[3] Cittadella Universitaria,undefined
来源
The Journal of Economic Inequality | 2023年 / 21卷
关键词
Expectile regression; Gender pay gap; Quantile regression; Penalized estimation; J31; J16; J45; J51;
D O I
暂无
中图分类号
学科分类号
摘要
The Machado-Mata decomposition building on quantile regression has been extensively analyzed in the literature focusing on gender wage inequality. In this study, we generalize the Machado-Mata decomposition to the expectile regression framework, which, to the best of our knowledge, has never been applied in this strand of the literature. In contrast, in recent years, expectiles have gained increasing attention in other contexts as an alternative to traditional quantiles, providing useful statistical and computational properties. We flexibly deal with high-dimensional problems by employing the Least Absolute Shrinkage and Selection Operator. The empirical analysis focuses on the gender pay gap in Germany and Italy. We find that depending on the estimation approach (i.e. expectile or quantile regression) the results substantially differ along some regions of the wage distribution, whereas they are similar for others. From a policy perspective, this finding is important as it affects conclusions about glass ceiling and sticky floors.
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页码:511 / 535
页数:24
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共 119 条
  • [1] Albrecht J(2003)Is there a glass ceiling in sweden? J. Labor Econ. 21 145-177
  • [2] Björklund A(2017)Quantile selection models with an application to understanding changes in wage inequality Econometrica 85 1-28
  • [3] Vroman S(2007)Is there a glass ceiling over Europe? Exploring the gender pay gap across the wages distribution Industr. Labor Relations Rev. 60 163-186
  • [4] Arellano M(1982)An empirical quantile function for linear models with iid errors J. Amer. Stat. Assoc. 77 407-415
  • [5] Bonhomme S(1986)Strong consistency of regression quantiles and related empirical processes Economet. Theor. 2 191-201
  • [6] Arulampalam W(2021)Risk parity with expectiles European J. Oper. Res. 291 1149-1163
  • [7] Booth A(2017)Risk management with expectiles European J. Finance 23 487-506
  • [8] Bryan M(2012)Sparse models and methods for optimal instruments with an application to eminent domain Econometrica 80 2369-2429
  • [9] Bassett G(2011)L1-Penalized quantile regression in high-dimensional sparse models Annals Stat. 39 82-130
  • [10] Koenker R(2017)Program evaluation and causal inference with high-dimensional data Econometrica 85 233-298