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Identifiability from a Combination of Observations and Experiments

机译:从观察和实验组合的可识别性

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We study the problem of causal identification from an arbitrary collection of observational and experimental distributions, and substantive knowledge about the phenomenon under investigation, which usually comes in the form of a causal graph. We call this problem g-identifiability, or gID for short. In this paper, we introduce a general strategy to prove non-gID based on thickets and hedgelets, which leads to a necessary and sufficient graphical condition for the corresponding decision problem. We further develop a procedure for systematically computing the target effect, and prove that it is sound and complete for gID instances. In other words, the failure of the algorithm in returning an expression implies that the target effect is not computable from the available distributions. Finally, as a corollary of these results, we show that do-calculus is complete for the task of g-identifiability.
机译:我们研究了来自观察和实验分布的任意收集的因果识别问题,以及关于调查现象的实质性知识,通常以因果图的形式。 我们将此问题称为G-Integifiage或GID以简短。 在本文中,我们介绍了一种基于灌流和Hedgelets证明非GID的一般策略,这导致了相应决策问题的必要和足够的图形条件。 我们进一步开发了一个系统地计算目标效果的过程,并证明它是对GID实例完成的。 换句话说,返回表达式在返回表达式中的故障意味着目标效果不可从可用分布中计算。 最后,作为这些结果的必然结果,我们表明DO-COMBULA完全用于G标识的任务。

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