估计条件平均处理效应

Estimating Conditional Average Treatment Effects

Journal of Business & Economic Statistics · 2014
被引 142 · 同刊同年前 2%
人大 AABS 4

中文导读

提出条件平均处理效应(CATE)的估计方法,用于刻画处理效应在不同子群体间的异质性,并应用于研究孕期吸烟对新生儿出生体重的影响随母亲年龄的变化。

Abstract

We consider a functional parameter called the conditional average treatment effect (CATE), designed to capture the heterogeneity of a treatment effect across subpopulations when the unconfoundedness assumption applies. In contrast to quantile regressions, the subpopulations of interest are defined in terms of the possible values of a set of continuous covariates rather than the quantiles of the potential outcome distributions. We show that the CATE parameter is nonparametrically identified under unconfoundedness and propose inverse probability weighted estimators for it. Under regularity conditions, some of which are standard and some are new in the literature, we show (pointwise) consistency and asymptotic normality of a fully nonparametric and a semiparametric estimator. We apply our methods to estimate the average effect of a first-time mother's smoking during pregnancy on the baby's birth weight as a function of the mother's age. A robust qualitative finding is that the expected effect becomes stronger (more negative) for older mothers.

条件平均处理效应非参数识别逆概率加权估计处理效应异质性