马尔可夫等效dag计数和抽样的多项式时间算法及其应用

Marcel Wienöbst, Max Bannach, M. Liskiewicz
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引用次数: 9

摘要

从马尔可夫等价类中对有向无环图进行计数和抽样是图因果分析的基本任务。在本文中,我们证明这些任务可以在多项式时间内执行,解决了该领域长期存在的开放问题。我们的算法是有效的和容易实现的。正如我们在实验中所展示的那样,这些突破使得在主动学习因果结构和因果效应识别方面被认为不可行的策略在马尔可夫等价类中具有实际应用价值。
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Polynomial-Time Algorithms for Counting and Sampling Markov Equivalent DAGs with Applications
Counting and sampling directed acyclic graphs from a Markov equivalence class are fundamental tasks in graphical causal analysis. In this paper we show that these tasks can be performed in polynomial time, solving a long-standing open problem in this area. Our algorithms are effective and easily implementable. As we show in experiments, these breakthroughs make thought-to-be-infeasible strategies in active learning of causal structures and causal effect identification with regard to a Markov equivalence class practically applicable.
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