On a hypergraph probabilistic graphical model

November 20, 2018 Β· Declared Dead Β· πŸ› Annals of Mathematics and Artificial Intelligence

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Authors Mohammad Ali Javidian, Linyuan Lu, Marco Valtorta, Zhiyu Wang arXiv ID 1811.08372 Category cs.DS: Data Structures & Algorithms Cross-listed cs.AI, math.CO Citations 17 Venue Annals of Mathematics and Artificial Intelligence Last Checked 3 months ago
Abstract
We propose a directed acyclic hypergraph framework for a probabilistic graphical model that we call Bayesian hypergraphs. The space of directed acyclic hypergraphs is much larger than the space of chain graphs. Hence Bayesian hypergraphs can model much finer factorizations than Bayesian networks or LWF chain graphs and provide simpler and more computationally efficient procedures for factorizations and interventions. Bayesian hypergraphs also allow a modeler to represent causal patterns of interaction such as Noisy-OR graphically (without additional annotations). We introduce global, local and pairwise Markov properties of Bayesian hypergraphs and prove under which conditions they are equivalent. We define a projection operator, called shadow, that maps Bayesian hypergraphs to chain graphs, and show that the Markov properties of a Bayesian hypergraph are equivalent to those of its corresponding chain graph. We extend the causal interpretation of LWF chain graphs to Bayesian hypergraphs and provide corresponding formulas and a graphical criterion for intervention.
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