Clarifying causal mediation analysis: Effect identification via three assumptions and five potential outcomes.

Q3 Social Sciences
Review of Politics Pub Date : 2022-09-22 eCollection Date: 2022-01-01 DOI:10.1515/jci-2021-0049
Trang Quynh Nguyen, Ian Schmid, Elizabeth L Ogburn, Elizabeth A Stuart
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引用次数: 0

Abstract

Causal mediation analysis is complicated with multiple effect definitions that require different sets of assumptions for identification. This article provides a systematic explanation of such assumptions. We define five potential outcome types whose means are involved in various effect definitions. We tackle their mean/distribution's identification, starting with the one that requires the weakest assumptions and gradually building up to the one that requires the strongest assumptions. This presentation shows clearly why an assumption is required for one estimand and not another, and provides a succinct table from which an applied researcher could pick out the assumptions required for identifying the causal effects they target. Using a running example, the article illustrates the assembling and consideration of identifying assumptions for a range of causal contrasts. For several that are commonly encountered in the literature, this exercise clarifies that identification requires weaker assumptions than those often stated in the literature. This attention to the details also draws attention to the differences in the positivity assumption for different estimands, with practical implications. Clarity on the identifying assumptions of these various estimands will help researchers conduct appropriate mediation analyses and interpret the results with appropriate caution given the plausibility of the assumptions.

澄清因果中介分析:通过三个假设和五个潜在结果识别效果。
因果中介分析因多种效应定义而变得复杂,需要不同的假设来识别。本文对这些假设进行了系统的解释。我们定义了五种潜在的结果类型,它们的均值涉及不同的效应定义。我们处理它们的均值/分布识别问题,从需要最弱假设的类型开始,逐步过渡到需要最强假设的类型。本文清楚地说明了为什么一个估计值需要一个假设,而另一个估计值不需要,并提供了一个简洁的表格,应用研究人员可以从中挑选出识别其目标因果效应所需的假设。文章通过一个生动的例子,说明了如何为一系列因果对比组合和考虑识别假设。对于文献中常见的几种因果对比,这一练习澄清了识别所需的假设条件比文献中常说的要弱。这种对细节的关注也使我们注意到不同估计值的积极性假设的差异,并产生了实际影响。明确这些不同估计值的识别假设将有助于研究人员进行适当的中介分析,并根据假设的合理性以适当的谨慎态度解释结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Review of Politics
Review of Politics Social Sciences-Political Science and International Relations
CiteScore
0.60
自引率
0.00%
发文量
94
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