使用右删节数据的程序评估

Pedro H. C. Sant’Anna
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引用次数: 14

摘要

在统一的框架中,当感兴趣的结果(通常是持续时间)受到正确审查时,我们为各种治疗效果提供了估计器和置信带。我们的方法在不同的识别假设下适应平均、分布和分位数处理效应,包括非混杂性、局部处理效应和非线性差异中的差异。所提出的估计器易于实现,具有紧密形式的表示,完全由数据驱动,基于对有害参数的估计,并且不依赖于参数分布假设,形状限制或限制不同亚群之间潜在的治疗效果异质性。这些处理效果的结果是作为独立兴趣的两步Kaplan-Meier估计的更一般结果的结果而获得的:我们提供了应用(i)大数一致定律的条件,(ii)泛函中心极限定理,以及(iii)我们证明了普通非参数自举在两步估计过程中的有效性,其中兴趣的结果可能被随机审查。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Program Evaluation with Right-Censored Data
In a unified framework, we provide estimators and confidence bands for a variety of treatment effects when the outcome of interest, typically a duration, is subjected to right censoring. Our methodology accommodates average, distributional, and quantile treatment effects under different identifying assumptions including unconfoundedness, local treatment effects, and nonlinear differences-in-differences. The proposed estimators are easy to implement, have close-form representation, are fully data-driven upon estimation of nuisance parameters, and do not rely on parametric distributional assumptions, shape restrictions, or on restricting the potential treatment effect heterogeneity across different subpopulations. These treatment effects results are obtained as a consequence of more general results on two-step Kaplan-Meier estimators that are of independent interest: we provide conditions for applying (i) uniform law of large numbers, (ii) functional central limit theorems, and (iii) we prove the validity of the ordinary nonparametric bootstrap in a two-step estimation procedure where the outcome of interest may be randomly censored.
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