基于受试者间双随机化设计的因果机制识别

Conny Wunsch, R. Strobl
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引用次数: 4

摘要

了解治疗效果产生的机制对于设计有效的干预措施至关重要。确定这种因果机制具有挑战性,通常需要强有力的假设。本文讨论了在结合两个实验的所谓双随机化设计中自然直接和间接效应的识别和估计。第一个主要实验随机化治疗并测量其对中介和感兴趣的结果的影响。第二个辅助实验随机化感兴趣的中介并测量其对结果的影响。我们表明,这样的设计允许识别基于一个假设,弱于顺序可忽略性的假设,通常是在文献中作出的。它允许不引起异质性中介效应的未观察到的混杂因素。我们展示了基于不同识别策略的直接和间接影响的估计,我们使用我们在肯尼亚进行的实验室实验的数据将这些策略与我们的方法进行比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification of Causal Mechanisms Based on Between-Subject Double Randomization Designs
Understanding the mechanisms through which treatment effects come about is crucial for designing effective interventions. The identification of such causal mechanisms is challenging and typically requires strong assumptions. This paper discusses identification and estimation of natural direct and indirect effects in so-called double randomization designs that combine two experiments. The first and main experiment randomizes the treatment and measures its effect on the mediator and the outcome of interest. A second auxiliary experiment randomizes the mediator of interest and measures its effect on the outcome. We show that such designs allow for identification based on an assumption that is weaker than the assumption of sequential ignorability that is typically made in the literature. It allows for unobserved confounders that do not cause heterogeneous mediator effects. We demonstrate estimation of direct and indirect effects based on different identification strategies that we compare to our approach using data from a laboratory experiment we conducted in Kenya.
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