Intersecting the Markov Blankets of Endogenous and Exogenous Variables for Causal Discovery

IF 18.6
Yiran Dong;Chuanhou Gao
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Abstract

Exogenous variables are specially used in Structural Causal Models (SCM), which, however, have some characteristics that are still useful under the property of the Bayesian network. In this paper, we propose a novel causal discovery learning algorithm called Endogenous and Exogenous Markov Blankets Intersection (EEMBI), which combines the properties of Bayesian networks and SCM. Through intersecting the Markov blankets of exogenous variables and endogenous variables (the original variables), EEMBI can remove the irrelevant connections and find the true causal structure theoretically. Furthermore, we propose an extended version of EEMBI, named EEMBI-PC, which integrates the last step of the PC algorithm into EEMBI. This extension enhances the algorithm's performance by leveraging the strengths of both approaches. Plenty of experiments are provided to prove that EEMBI have state-of-the-art performance on continuous datasets, and EEMBI-PC outperforms other algorithms on discrete datasets.
内源性和外源性变量的马尔可夫毯子的交叉因果发现
外生变量专门用于结构因果模型(SCM),然而,在贝叶斯网络的性质下,它仍然具有一些有用的特征。在本文中,我们提出了一种新的因果发现学习算法,称为内源性和外源性马尔可夫毯子交集(EEMBI),它结合了贝叶斯网络和SCM的特性。通过将外生变量和内生变量(原始变量)的马尔可夫毯子相交,EEMBI可以从理论上去除不相关的联系,找到真正的因果结构。此外,我们提出了EEMBI的扩展版本EEMBI-PC,它将PC算法的最后一步集成到EEMBI中。这个扩展通过利用这两种方法的优势来增强算法的性能。大量的实验证明了EEMBI在连续数据集上具有最先进的性能,EEMBI- pc在离散数据集上优于其他算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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