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Missing Data as a Causal and Probabilistic Problem

机译:缺少数据作为因果和概率问题

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Causal inference is often phrased as a missing data problem - for every unit, only the response to observed treatment assignment is known, the response to other treatment assignments is not. In this paper, we extend the converse approach of [7] of representing missing data problems to causal models where only interventions on miss-ingness indicators are allowed. We further use this representation to leverage techniques developed for the problem of identification of causal effects to give a general criterion for cases where a joint distribution containing missing variables can be recovered from data actually observed, given assumptions on missingness mechanisms. This criterion is significantly more general than the commonly used "missing at random" (MAR) criterion, and generalizes past work which also exploits a graphical representation of missing-ness. In fact, the relationship of our criterion to MAR is not unlike the relationship between the ID algorithm for identification of causal effects, and conditional ignorability.
机译:因果推断经常被删除为缺少的数据问题 - 对于每个单位,只知道对观察到的治疗分配的响应是已知的,对其他治疗分配的响应不是。在本文中,我们延长了[7]的悔改方法,以表示缺失数据问题,以因因果模型而允许干预措施。我们进一步利用该表示来利用为识别因果效应的问题而开发的技术,以给出含有缺失变量的关节分布的情况的一般标准,在实际观察到的数据,给出了缺失机制的假设。该标准比常用的“随机”(MAR)标准普遍使用的标准更大,并且概括了过去的工作,该工作也利用了缺失的缺失的图形表示。事实上,我们对MAR的标准的关系与ID算法之间的关系不同,用于识别因果效应和条件无知性。

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