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Learning Causal Structures Based on Markov Equivalence Class

机译:基于马尔可夫等价类的因果结构学习

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Because causal learning from observational data cannot avoid the inherent indistinguishability for causal structures that have the same Markov properties, this paper discusses causal structure learning within a Markov equivalence class. We present that the additional causal information about a given variable and its adjacent variables, such as knowledge from experts or data from randomization experiments, can refine the Markov equivalence class into some smaller constrained equivalent subclasses, and each of which can be represented by a chain graph. Those sequential characterizations of subclasses provide an approach for learning causal structures. According to the approach, an iterative partition of the equivalent class can be made with data from randomization experiments until the exact causal structure is identified.
机译:由于从观测数据进行因果学习无法避免具有相同马尔可夫性质的因果结构固有的不可区分性,因此本文讨论了在马尔可夫等价类中的因果结构学习。我们提出,关于给定变量及其相邻变量的其他因果信息,例如来自专家的知识或来自随机实验的数据,可以将Markov等价类细化为一些较小的受约束的等效子类,并且每个子类都可以由链表示图形。子类的那些顺序表征为学习因果结构提供了一种方法。根据该方法,可以使用来自随机实验的数据进行等效类的迭代划分,直到确定确切的因果结构。

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