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A Graphical Criterion for Effect Identification in Equivalence Classes of Causal Diagrams

机译:因果图等同类效应识别的图形标准

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Computing the effects of interventions from observational data is an important task encountered in many data-driven sciences. The problem is addressed by identifying the post-interventional distribution with an expression that involves only quantities estimable from the pre-interventional distribution over observed variables, given some knowledge about the causal structure. In this work, we relax the requirement of having a fully specified causal structure and study the identifiability of effects with a singleton intervention (X), supposing that the structure is known only up to an equivalence class of causal diagrams, which is the output of standard structural learning algorithms (e.g., FCI). We derive a necessary and sufficient graphical criterion for the identifiability of the effect of X on all observed variables. We further establish a sufficient graphical criterion to identify the effect of X on a subset of the observed variables, and prove that it is strictly more powerful than the current state-of-the-art result on this problem.
机译:计算来自观察数据的干预措施是许多数据驱动科学中遇到的重要任务。通过识别出表达式的介入性分布来解决问题,该表达式涉及从观察到的变量的预介入分布估计的数量,给出了关于因果结构的一些知识。在这项工作中,我们放宽了具有完全指定的因果结构的要求,并研究了与单例干预(x)的效果的可识别性,假设该结构仅仅是对因果图的等价类,这是输出标准结构学习算法(例如,FCI)。我们推导出一种必要和充分的图形标准,用于X对所有观察变量的效果的可识别性。我们进一步建立了足够的图形标准,以识别X对观察变量子集的效果,并证明它比当前最先进的结果对此问题进行了严格的强大。

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