Weighted heuristic anytime search: new schemes for optimization over graphical models

被引:0
作者
Natalia Flerova
Radu Marinescu
Rina Dechter
机构
[1] University of California Irvine,
[2] IBM Research,undefined
来源
Annals of Mathematics and Artificial Intelligence | 2017年 / 79卷
关键词
Graphical models; Heuristic search; Anytime weighted heuristic search; Combinatorial optimization; Weighted CSP; Most Probable Explanation; 68T37; 68R05;
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学科分类号
摘要
Weighted heuristic search (best-first or depth-first) refers to search with a heuristic function multiplied by a constant w [31]. The paper shows, for the first time, that for optimization queries in graphical models the weighted heuristic best-first and weighted heuristic depth-first branch and bound search schemes are competitive energy-minimization anytime optimization algorithms. Weighted heuristic best-first schemes were investigated for path-finding tasks. However, their potential for graphical models was ignored, possibly because of their memory costs and because the alternative depth-first branch and bound seemed very appropriate for bounded depth. The weighted heuristic depth-first search has not been studied for graphical models. We report on a significant empirical evaluation, demonstrating the potential of both weighted heuristic best-first search and weighted heuristic depth-first branch and bound algorithms as approximation anytime schemes (that have sub-optimality bounds) and compare against one of the best depth-first branch and bound solvers to date.
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页码:77 / 128
页数:51
相关论文
共 31 条
  • [1] Chakrabarti PP(1987)Admissibility of ao* when heuristics overestimate Artif. Intell. 34 97-113
  • [2] Ghose S(1999)Bucket elimination: a unifying framework for reasoning Artif. Intell. 113 41-85
  • [3] DeSarkar S(2007)AND/OR search spaces for graphical models Artif. Intell. 171 73-106
  • [4] Dechter R(2003)Mini-buckets: a general scheme for bounded inference J. ACM 50 107-153
  • [5] Dechter R(2013)Exploiting tree decomposition for guiding neighborhoods exploration for VNS RAIRO - Oper. Res. 47 91-123
  • [6] Mateescu R(2007)Anytime heuristic search J. Artif. Intell. Res. 28 267-297
  • [7] Dechter R(1968)A formal basis for the heuristic determination of minimum cost paths IEEE Trans Syst. Sci. Cybern. 4 100-107
  • [8] Rish I(2005)Unifying cluster-tree decompositions for automated reasoning Artif. Intell. 166 165-193
  • [9] Fontaine M(1966)Branch-and-bound methods: a survey Oper. Res. 14 699-719
  • [10] Loudni S(2009)AND/OR branch-and-bound search for combinatorial optimization in graphical models Artif. Intell. 173 1457-1491