样本选择的分布回归,并应用于英国的工资分解

V. Chernozhukov, Iv'an Fern'andez-Val, Siyi Luo
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引用次数: 10

摘要

建立了内生样本选择下的分布回归模型。该模型是Heckman选择模型的半参数推广,该模型在选择过程和协变量的影响中容纳了更丰富的异质性模式。该模型适用于连续、离散和混合结果。我们研究了模型的识别,并开发了一种计算上有吸引力的两步方法来估计模型参数,其中第一步是选择方程的概率回归,第二步包括对结果方程进行选择修正的多个分布回归。我们通过插件规则构建感兴趣的函数的估计器,例如潜在和观察结果的实际和反事实分布。我们给出了所有估计量的泛函中心极限定理,并证明了乘子自举法进行泛函推理的有效性。我们应用的方法工资分解在英国使用新的数据。这里我们将男女工资分布差异分解为构成效应、工资结构效应、选择结构效应和选择排序效应四种效应。在控制了内生就业选择之后,我们仍然发现了巨大的性别工资差距——在整个(潜在)提供的工资分布中,从21%到40%不等,这无法用可观察到的劳动力市场特征来解释。我们还发现,单身男性的积极排序和已婚女性的消极排序,在分布顶端的性别工资差距中占了相当大的一部分。这些发现可以被解释为婚姻市场的分类匹配和劳动力市场的玻璃天花板的证据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Distribution regression with sample selection, with an application to wage decompositions in the UK
We develop a distribution regression model under endogenous sample selection. This model is a semiparametric generalization of the Heckman selection model that accommodates much richer patterns of heterogeneity in the selection process and effect of the covariates. The model applies to continuous, discrete and mixed outcomes. We study the identification of the model, and develop a computationally attractive two-step method to estimate the model parameters, where the first step is a probit regression for the selection equation and the second step consists of multiple distribution regressions with selection corrections for the outcome equation. We construct estimators of functionals of interest such as actual and counterfactual distributions of latent and observed outcomes via plug-in rule. We derive functional central limit theorems for all the estimators and show the validity of multiplier bootstrap to carry out functional inference. We apply the methods to wage decompositions in the UK using new data. Here we decompose the difference between the male and female wage distributions into four effects: composition, wage structure, selection structure and selection sorting. After controlling for endogenous employment selection, we still find substantial gender wage gap -- ranging from 21% to 40% throughout the (latent) offered wage distribution that is not explained by observable labor market characteristics. We also uncover positive sorting for single men and negative sorting for married women that accounts for a substantive fraction of the gender wage gap at the top of the distribution. These findings can be interpreted as evidence of assortative matching in the marriage market and glass-ceiling in the labor market.
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