Model-assisted complier average treatment effect estimates in randomized experiments with non-compliance

Jiyang Ren
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引用次数: 2

Abstract

In randomized experiments, the actual treatments received by some experimental units may differ from their treatment assignments. This non-compliance issue often occurs in clinical trials, social experiments, and the applications of randomized experiments in many other fields. Under certain assumptions, the average treatment effect for the compliers is identifiable and equal to the ratio of the intention-to-treat effects of the potential outcomes to that of the potential treatment received. To improve the estimation efficiency, we propose three model-assisted estimators for the complier average treatment effect in randomized experiments with a binary outcome. We study their asymptotic properties, compare their efficiencies with that of the Wald estimator, and propose the Neyman-type conservative variance estimators to facilitate valid inferences. Moreover, we extend our methods and theory to estimate the multiplicative complier average treatment effect. Our analysis is randomization-based, allowing the working models to be misspecified. Finally, we conduct simulation studies to illustrate the advantages of the model-assisted methods and apply these analysis methods in a randomized experiment to evaluate the effect of academic services or incentives on academic performance.
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非依从性随机实验中模型辅助编译器平均治疗效果估计
在随机实验中,一些实验单位实际接受的治疗可能与他们的治疗任务不同。这种不服从问题经常发生在临床试验、社会实验和许多其他领域的随机实验的应用中。在某些假设下,编纂者的平均治疗效果是可识别的,并且等于潜在结果的意向治疗效果与所接受的潜在治疗效果之比。为了提高估计效率,我们提出了三种模型辅助估计器,用于二元结果随机实验的编译平均处理效果。我们研究了它们的渐近性质,将它们的效率与Wald估计量的效率进行了比较,并提出了neyman型保守方差估计量,以方便有效的推断。此外,我们扩展了我们的方法和理论来估计乘法编译器平均处理效果。我们的分析是基于随机的,允许工作模型被错误指定。最后,我们进行了模拟研究,以说明模型辅助方法的优势,并将这些分析方法应用于随机实验,以评估学术服务或激励对学业成绩的影响。
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