Case-factor diagrams for structured probabilistic modeling

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摘要

We introduce a probabilistic formalism handling both Markov random fields of bounded tree width and probabilistic context-free grammars. Our models are based on case-factor diagrams (CFDs) which are similar to binary decision diagrams (BDDs) but are more concise for circuits of bounded tree width. A probabilistic model consists of a CFD defining a feasible set of Boolean assignments and a weight (or cost) for each individual Boolean variable. We give versions of the inside–outside algorithm and the Viterbi algorithm for these models.

论文关键词:Boolean decision diagrams,Markov random fields,Probabilistic context free grammars,Hidden Markov models,Conditional random fields,Probabilistic relational models,Structured labeling,Graphical models,Bayesian networks,Zero supression,Recursive conditioning,And/or graphs

论文评审过程:Received 1 April 2005, Revised 1 August 2006, Available online 25 April 2007.

论文官网地址:https://doi.org/10.1016/j.jcss.2007.04.015