因果推断与结果相关的缺失和自我审查

Jacob M Chen, Daniel Malinsky, Rohit Bhattacharya
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引用次数: 0

摘要

当感兴趣的结果可能缺失时,我们在因果推理的背景下考虑缺失。如果结果直接影响其自身缺失状态,即“自我审查”,则可能导致因果效应估计严重偏倚。Miao等[2015]提出了阴影变量法来校正自审查造成的偏差;然而,验证所需的模型假设可能很困难。在这里,我们提出了一个基于随机激励变量的测试,该变量旨在鼓励报告结果,可用于验证足以纠正自我审查和混淆偏差的识别假设。具体来说,检验确认一组给定的预处理协变量是否足以阻断治疗与结果之间的所有后门路径,以及对结果进行调理后治疗与缺失指标之间的所有路径。我们表明,在这些条件下,因果效应是通过使用处理作为阴影变量来识别的,并且它导致一个直观的逆概率加权估计器,它使用处理和响应权重的乘积。我们通过模拟来评估我们的测试和下游估计器的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Causal Inference With Outcome-Dependent Missingness And Self-Censoring.

We consider missingness in the context of causal inference when the outcome of interest may be missing. If the outcome directly affects its own missingness status, i.e., it is "self-censoring", this may lead to severely biased causal effect estimates. Miao et al. [2015] proposed the shadow variable method to correct for bias due to self-censoring; however, verifying the required model assumptions can be difficult. Here, we propose a test based on a randomized incentive variable offered to encourage reporting of the outcome that can be used to verify identification assumptions that are sufficient to correct for both self-censoring and confounding bias. Concretely, the test confirms whether a given set of pre-treatment covariates is sufficient to block all backdoor paths between the treatment and outcome as well as all paths between the treatment and missingness indicator after conditioning on the outcome. We show that under these conditions, the causal effect is identified by using the treatment as a shadow variable, and it leads to an intuitive inverse probability weighting estimator that uses a product of the treatment and response weights. We evaluate the efficacy of our test and downstream estimator via simulations.

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