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首页> 外文期刊>JMLR: Workshop and Conference Proceedings >Collapsible IDA Collapsing Parental Sets for Locally Estimating Possible Causal Effects
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Collapsible IDA Collapsing Parental Sets for Locally Estimating Possible Causal Effects

机译:可折叠的IDA折叠父母集,用于局部估计可能的因果效果

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It is clear that some causal effects cannot be identified from observational data when the causal directed acyclic graph is absent. In such cases, IDA is a useful framework which estimates all possible causal effects by adjusting for all possible parental sets. In this paper, we combine the adjustment set selection procedure with the original IDA framework. Our goal is to find a common set that can be subtracted from all possible parental sets without influencing the back-door adjustment. To this end, we first introduce graphical conditions to decide whether a treatment’s neighbor or parent in a completed partially directed acyclic graph (CPDAG) can be subtracted and then provide a procedure to construct a subtractable set from those subtractable vertices. We next combine the procedure with the IDA framework and provide a fully local modification of IDA. Experimental results show that, with our modification, both the number of possible parental sets and the size of each possible parental set enumerated by the modified IDA decrease, making it possible to estimate all possible causal effects more efficiently.
机译:很明显,当不存在因果指示的无循环图时,不能从观察数据中识别一些因果效应。在这种情况下,IDA是一种有用的框架,其通过调整所有可能的父母集来估计所有可能的因果效应。在本文中,我们将调整集选择过程与原始IDA框架相结合。我们的目标是找到一个可以从所有可能的父母集中减去的共同组,而不会影响后门调整。为此,我们首先引入图形条件以确定可以减去完成的部分定向的非循环图(CPDAG)中的治疗的邻居或父级,然后提供从那些可下可视顶点构造可减去可减法集的过程。我们接下来将过程与IDA框架相结合,并提供了对IDA的完全本地修改。实验结果表明,随着我们的修改,改进的IDA所列的可能父母集的数量和每个可能的父母集的大小减少,使得可以更有效地估计所有可能的因果效果。

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