This paper shows how to use a randomized saturation experimental design to identify and estimate causal effects in the presence of spillovers--one person's treatment may affect another's outcome--and one-sided non-compliance--subjects can only be offered treatment, not compelled to take it up. Two distinct causal effects are of interest in this setting: direct effects quantify how a person's own treatment changes her outcome, while indirect effects quantify how her peers' treatments change her outcome. We consider the case in which spillovers occur within known groups, and take-up decisions are invariant to peers' realized offers. In this setting we point identify the effects of treatment-on-the-treated, both direct and indirect, in a flexible random coefficients model that allows for heterogeneous treatment effects and endogenous selection into treatment. We go on to propose a feasible estimator that is consistent and asymptotically normal as the number and size of groups increases. We apply our estimator to data from a large-scale job placement services experiment, and find negative indirect treatment effects on the likelihood of employment for those willing to take up the program. These negative spillovers are offset by positive direct treatment effects from own take-up.
翻译:本文展示了如何使用随机饱和实验设计来查明和估计在出现外溢-一个人的治疗时,外溢-一个人的治疗可能影响到另一个人的结果-和片面的不遵约问题,只能提供治疗,而不是强迫接受治疗。在这一背景下,有两个不同的因果关系是有意义的:直接效果可以量化一个人自己的治疗如何改变其结果,间接效果可以量化她的同龄人的治疗如何改变其结果。我们考虑了在已知群体内发生外溢的情况,而采取的决定对同龄人已经实现的报价是不利的。在这种背景下,我们指出在一种灵活的随机系数模型中,可以确定治疗结果和局部选择到治疗。我们接着提出一个可行的估算器,随着群体数量和规模的增加,这种估算器是一致和无序的。我们用我们的估计器来估计大规模就业安置服务试验中的数据,并且发现对愿意接受方案的人的就业可能性的间接间接影响。这些负面外溢效应通过直接的治疗来抵消。