Researchers are often interested in the causal effect of treatments that are rolled out to different units at different points in time. This paper studies how to efficiently estimate a variety of causal parameters in such staggered rollout designs when treatment timing is (as-if) randomly assigned. We solve for the most efficient estimator in a class of estimators that nests two-way fixed effects models as well as several popular generalized difference-in-differences methods. The efficient estimator is not feasible in practice because it requires knowledge of the optimal weights to be placed on pre-treatment outcomes. However, the optimal weights can be estimated from the data, and in large datasets the plug-in estimator that uses the estimated weights has similar properties to the "oracle" efficient estimator. We illustrate the performance of the plug-in efficient estimator in simulations and in an application to Wood et al. (2020a)'s study of the staggered rollout of a procedural justice training program for police officers. We find that confidence intervals based on the plug-in efficient estimator have good coverage and can be as much as five times shorter than confidence intervals based on existing methods. As an empirical contribution of independent interest, our application provides the most precise estimates to date on the effectiveness of procedural justice training programs for police officers.
翻译:研究人员往往对在不同时间点向不同单位推广的治疗的因果关系感兴趣。本文研究在随机分配治疗时间时,如何有效估计这种交错推出设计中的各种因果参数。我们解决了在一组测算器中最有效的估测器,该测算器嵌入双向固定效应模型以及若干流行的普遍差异方法。高效的估测器在实践中不可行,因为它需要了解在预处理结果上的最佳权重。然而,最佳权重可以从数据中估算出来,在大型数据中,将使用估计权重的插头估计器与高效估测器具有相似的性能。我们展示了在模拟和Wood等人(2020年a)应用中高效的测算器的性能。高效的估测器在对警官程序司法培训方案的错开推出方面并不可行。我们发现,基于顶端测器估计值的最佳权重可以估算出最短的置信度间隔,而根据最高效的估测算器的测算方法,可以提供最短的测算方法,作为最短的估测算器,根据现有测算器的测算方法,可以提供最短的测算方法,作为最短的测算。