Estimating Conditional Average Treatment Effects

Jason Abrevaya, Yu Chin Hsu, Robert P. Lieli

Research output: Contribution to journalArticlepeer-review

Abstract (may include machine translation)

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.

Original languageEnglish
Pages (from-to)485-505
Number of pages21
JournalJournal of Business and Economic Statistics
Volume33
Issue number4
DOIs
StatePublished - 2 Oct 2015

Keywords

  • Birth weight
  • Inverse probability weighted estimation
  • Nonparametric method
  • Treatment effect heterogeneity

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