Logical and algorithmic properties of stable conditional independence |
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Authors: | Mathias Niepert Dirk Van Gucht |
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Affiliation: | a KR & KM Research Group, Department of Computer Science, Universität Mannheim, B6 26, 68159 Mannheim, Germany b Computer Science Department, Indiana University, Lindley Hall 215, 150 S. Woodlawn Ave., Bloomington, IN 47405-7104, USA c Department WNI, Hasselt University & Transnational University of Limburg, Agoralaan, Bldg. D, B-3590 Diepenbeek, Belgium |
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Abstract: | The logical and algorithmic properties of stable conditional independence (CI) as an alternative structural representation of conditional independence information are investigated. We utilize recent results concerning a complete axiomatization of stable conditional independence relative to discrete probability measures to derive perfect model properties of stable conditional independence structures. We show that stable CI can be interpreted as a generalization of Markov networks and establish a connection between sets of stable CI statements and propositional formulas in conjunctive normal form. Consequently, we derive that the implication problem for stable CI is coNP-complete. Finally, we show that Boolean satisfiability (SAT) solvers can be employed to efficiently decide the implication problem and to compute concise, non-redundant representations of stable CI, even for instances involving hundreds of random variables. |
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Keywords: | Conditional independence Graphical models Stable conditional independence Computational complexity Concise representation |
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