This paper considers the problem of inference in observational studies with time-varying adoption of treatment. In addition to an unconfoundedness assumption that the potential outcomes are independent of the times at which units adopt treatment conditional on the units' observed characteristics, our analysis assumes that the time at which each unit adopts treatment follows a Cox proportional hazards model. This assumption permits the time at which each unit adopts treatment to depend on the observed characteristics of the unit, but imposes the restriction that the probability of multiple units adopting treatment at the same time is zero. In this context, we study Fisher-style randomization tests of a null hypothesis that specifies that there is no treatment effect for all units and all time periods in a distributional sense. We first show that an infeasible test that treats the parameters of the Cox model as known has rejection probability no greater than the nominal level in finite samples. We then establish that the feasible test that replaces these parameters with consistent estimators has limiting rejection probability no greater than the nominal level. In a simulation study, we examine the practical relevance of our theoretical results, including robustness to misspecification of the model for the time at which each unit adopts treatment. Finally, we provide an empirical application of our methodology using the synthetic control-based test statistic and tobacco legislation data found in Abadie et. al. (2010).
翻译:本文考虑了观察研究中采用有时间差异的治疗方法的推断问题。除了一种毫无根据的假设,即潜在结果与单位采用按单位观察到的特性进行治疗的时间无关,我们的分析假设每个单位采用治疗方法的时间遵循Cox比例危害模型。这一假设允许每个单位采用治疗的时间取决于单位观察到的特性,但限制多个单位同时采用治疗方法的概率为零。在这方面,我们研究渔业式随机测试一个空假设,该假设规定所有单位和所有时段在分配意义上不具有治疗效果。我们首先表明,处理Cox模型参数的不可行的测试,其拒绝概率不超过定数样本中名义水平。然后我们确定,用一致的估测器取代这些参数的可行测试,其拒绝概率不大于名义水平。我们研究了我们理论结果的实际相关性,包括对所有单位和所有时段在分配意义上不具有任何治疗效果。我们首先表明,处理Cox模型参数的不可行测试方法不可行,其拒绝概率不超过定值的概率。我们最后用一个实验性统计方法来使用一个基于模型的统计方法。