Publications & Technical Reports | |
R195 | ||
Anytime AND/OR Depth-first Search for
Combinatorial Optimization
Lars Otten and Rina Dechter
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Abstract
One popular and efficient scheme for solving combinatorial
optimization problems over graphical models exactly is depth-first
Branch and Bound. However, when the algorithm exploits problem
decomposition using AND/OR search spaces, its anytime behavior breaks
down. This article 1) analyzes and demonstrates this inherent conflict
between effective exploitation of problem decomposition (through
AND/OR search spaces) and the anytime behavior of depth- first search
(DFS), 2) presents a new search scheme to address this issue while
maintaining desirable DFS memory properties, and 3) analyzes and
demonstrates its effectiveness through comprehensive empirical
evaluation. Our work is applicable to any problem that can be cast as
search over an AND/OR search space.
[pdf] |