Memory intensive AND/OR search for combinatorial optimization in graphical models

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In this paper we explore the impact of caching during search in the context of the recent framework of AND/OR search in graphical models. Specifically, we extend the depth-first AND/OR Branch-and-Bound tree search algorithm to explore an AND/OR search graph by equipping it with an adaptive caching scheme similar to good and no-good recording. Furthermore, we present best-first search algorithms for traversing the same underlying AND/OR search graph and compare both algorithms empirically. We focus on two common optimization problems in graphical models: finding the Most Probable Explanation (MPE) in belief networks and solving Weighted CSPs (WCSP). In an extensive empirical evaluation we demonstrate conclusively the superiority of the memory intensive AND/OR search algorithms on a variety of benchmarks.

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

论文评审过程:Received 29 April 2008, Revised 28 June 2009, Accepted 10 July 2009, Available online 18 July 2009.

论文官网地址:https://doi.org/10.1016/j.artint.2009.07.004