In this paper, we derive a new class of doubly robust estimators for treatment effect estimands that is also robust against weak covariate overlap. Our proposed estimator relies on trimming observations with extreme propensity scores and uses a bias correction device for trimming bias. Our framework accommodates many research designs, such as unconfoundedness, local treatment effects, and difference-in-differences. Simulation exercises illustrate that our proposed tools indeed have attractive finite sample properties, which are aligned with our theoretical asymptotic results.
翻译:本文研究了一类新的双重稳健估计器来估计治疗效果,该估计器对弱重叠问题也具有稳健性。该估计器依赖于删去极端倾向得分的个体,并使用一个偏差校正方法来处理删剪偏差。我们的方法可以适用于多种研究设计,例如无混淆因素假设、局部治疗效应和差异性-in-differences 设计。通过模拟实验,证明了我们的方法具有优异的有限样本性质,这与我们的理论渐近结果相符。