Polynomial-Time Algorithms for Counting and Sampling Markov Equivalent DAGs with Applications

Journal of Machine Learning Research 24(213):1-45, 2023 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 i...

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Hauptverfasser: Wienöbst, Marcel, Bannach, Max, Liśkiewicz, Maciej
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Sprache:eng
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Zusammenfassung:Journal of Machine Learning Research 24(213):1-45, 2023 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.
DOI:10.48550/arxiv.2205.02654