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高维混杂条件下条件平均处理效应的非参数估计

Nonparametric estimation of conditional average treatment effects under high-dimensional confounding

Econometrics Journal · 2025
被引 0
人大 BABS 3

中文导读

研究在可观测变量框架下,用机器学习第一步估计,再非参数估计随有限个协变量变化的异质性处理效应,并证明估计量的一致性、渐近正态性和双重稳健性。

Abstract

SUMMARY This study considers the practically important case of nonparametrically estimating heterogeneous average treatment effects that vary with a limited number of discrete and continuous covariates in a selection-on-observables framework where the number of possible confounders is very large. We propose a two-step estimator for which the first step is estimated by machine learning. We show that this estimator has desirable statistical properties such as consistency, asymptotic normality, and rate double robustness. In particular, we derive the coupled convergence conditions between the nonparametric and the machine-learning steps. We also show that estimating population average treatment effects by averaging the estimated heterogeneous effects is semiparametrically efficient. The resulting estimators are compared to other suggestions in the literature in Monte Carlo experiments that are inspired by real data. They are found to perform relatively better in most settings. The new estimators are applied to the empirical example of the effects of mothers’ smoking during pregnancy on the birthweight of their babies.

计量经济学非参数估计因果推断机器学习