AND/OR search spaces for graphical models

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摘要

The paper introduces an AND/OR search space perspective for graphical models that include probabilistic networks (directed or undirected) and constraint networks. In contrast to the traditional (OR) search space view, the AND/OR search tree displays some of the independencies present in the graphical model explicitly and may sometimes reduce the search space exponentially. Indeed, most algorithmic advances in search-based constraint processing and probabilistic inference can be viewed as searching an AND/OR search tree or graph. Familiar parameters such as the depth of a spanning tree, treewidth and pathwidth are shown to play a key role in characterizing the effect of AND/OR search graphs vs. the traditional OR search graphs. We compare memory intensive AND/OR graph search with inference methods, and place various existing algorithms within the AND/OR search space.

论文关键词:Search,AND/OR search,Decomposition,Graphical models,Bayesian networks,Constraint networks

论文评审过程:Received 10 October 2005, Revised 8 November 2006, Accepted 9 November 2006, Available online 5 January 2007.

论文官网地址:https://doi.org/10.1016/j.artint.2006.11.003