有限重叠下平均处理效应的稳健置信区间

Robust Confidence Intervals for Average Treatment Effects Under Limited Overlap

Econometrica · 2017
被引 27
人大 A+FT50ABS 4*

中文导读

针对处理组协变量分布重叠不足导致传统置信区间失准的问题,本文提出两种稳健置信区间,它们易于实现且在理论和实践中优于标准方法,适合实证研究者使用。

Abstract

Robust Confidence Intervals for Average Treatment Effects under Limited Overlap *Estimators of average treatment effects under unconfounded treatment assignment are known to become rather imprecise if there is limited overlap in the covariate distributions between the treatment groups.But such limited overlap can also have a detrimental effect on inference, and lead for example to highly distorted confidence intervals.This paper shows that this is because the coverage error of traditional confidence intervals is not so much driven by the total sample size, but by the number of observations in the areas of limited overlap.At least some of these "local sample sizes" are often very small in applications, up to the point where distributional approximation derived from the Central Limit Theorem become unreliable.Building on this observation, the paper proposes two new robust confidence intervals that are extensions of classical approaches to small sample inference.It shows that these approaches are easy to implement, and have superior theoretical and practical properties relative to standard methods in empirically relevant settings.They should thus be useful for practitioners.

平均处理效应有限重叠稳健置信区间小样本推断