We consider an experimental design setting in which units are assigned to treatment after being sampled sequentially from an infinite population. We derive asymptotic efficiency bounds that apply to data from any experiment that assigns treatment as a (possibly randomized) function of covariates and past outcome data, including stratification on covariates and adaptive designs. For estimating the average treatment effect of a binary treatment, our results show that no further first order asymptotic efficiency improvement is possible relative to an estimator that achieves the Hahn (1998) bound in an experimental design where the propensity score is chosen to minimize this bound. Our results also apply to settings with multiple treatments with possible constraints on treatment, as well as covariate based sampling of a single outcome.
翻译:我们考虑一个实验设计设置,根据这一设置,单位在从无限人口按顺序抽样后被分配到治疗。我们从任何实验中得出无症状效率界限,这些界限适用于将治疗指定为共变和过去结果数据的一种(可能随机)功能的数据,包括共变和适应性设计分层。为了估计二元治疗的平均治疗效果,我们的结果显示,相对于一个在实验设计中实现Hahn(1998年)的测算器而言,该测算器被捆绑在其中选择偏向性分数以尽量减少这一约束。我们的结果也适用于具有多种治疗的情景,其中可能存在对治疗的限制,以及基于共变的单一结果抽样。