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Bayesian network inference using marginal trees
Institution:1. University of Regina, Department of Computer Science, Regina, S4S 0A2, Canada;2. Aalborg University, Department of Computer Science, Aalborg, DK-9000, Denmark;3. HUGIN EXPERT A/S, Aalborg, DK-9000, Denmark
Abstract:Variable elimination (VE) and join tree propagation (JTP) are two alternatives to inference in Bayesian networks (BNs). VE, which can be viewed as one-way propagation in a join tree, answers each query against the BN meaning that computation can be repeated. On the other hand, answering a single query with JTP involves two-way propagation, of which some computation may remain unused. In this paper, we propose marginal tree inference (MTI) as a new approach to exact inference in discrete BNs. MTI seeks to avoid recomputation, while at the same time ensuring that no constructed probability information remains unused. Thereby, MTI stakes out middle ground between VE and JTP. The usefulness of MTI is demonstrated in multiple probabilistic reasoning sessions.
Keywords:Bayesian networks  Exact inference  Variable elimination  Join tree propagation
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