We argue that randomized controlled trials (RCTs) are special even among settings where average treatment effects are identified by a nonparametric unconfoundedness assumption. This claim follows from two results of Robins and Ritov (1997): (1) with at least one continuous covariate control, no estimator of the average treatment effect exists which is uniformly consistent without further assumptions, (2) knowledge of the propensity score yields a uniformly consistent estimator and honest confidence intervals that shrink at parametric rates with increasing sample size, regardless of how complicated the propensity score function is. We emphasize the latter point, and note that successfully-conducted RCTs provide knowledge of the propensity score to the researcher. We discuss modern developments in covariate adjustment for RCTs, noting that statistical models and machine learning methods can be used to improve efficiency while preserving finite sample unbiasedness. We conclude that statistical inference has the potential to be fundamentally more difficult in observational settings than it is in RCTs, even when all confounders are measured.
翻译:我们争辩说,随机控制试验(RCTs)是特别的,即使是在非参数性非根据假设确定平均治疗效果的环境下也是如此。这一说法源于Robins和Ritov(1997年)的两项结果:(1) 至少有一个连续的共变控制,没有平均治疗效果的估测者存在统一一致,没有进一步假设;(2) 对倾向性评分的了解产生一个一致一致的估测和诚实的信任间隔,在抽样规模不断增大的情况下,以参数率缩减,而不论偏差性评分功能有多复杂。我们强调后一点,并注意到成功进行的RCTs向研究人员提供了关于偏差得分的知识。我们讨论了对RCTs的共变调整的现代发展情况,指出统计模型和机器学习方法可以用来提高效率,同时保持有限的抽样不偏重。我们的结论是,统计推论有可能在观察环境中比RCTs的观察环境从根本上更加困难,即使对所有凝聚者都进行了测量。