DocumentCode :
3818341
Title :
Revisiting the Linear Programming Relaxation Approach to Gibbs Energy Minimization and Weighted Constraint Satisfaction
Author :
Tomas Werner
Author_Institution :
Czech Technical University, Praha
Volume :
32
Issue :
8
fYear :
2010
Firstpage :
1474
Lastpage :
1488
Abstract :
We present a number of contributions to the LP relaxation approach to weighted constraint satisfaction (= Gibbs energy minimization). We link this approach to many works from constraint programming, which relation has so far been ignored in machine vision and learning. While the approach has been mostly considered only for binary constraints, we generalize it to n-ary constraints in a simple and natural way. This includes a simple algorithm to minimize the LP-based upper bound, n-ary max-sum diffusion-however, we consider using other bound-optimizing algorithms as well. The diffusion iteration is tractable for a certain class of high-arity constraints represented as a black box, which is analogical to propagators for global constraints CSP. Diffusion exactly solves permuted n-ary supermodular problems. A hierarchy of gradually tighter LP relaxations is obtained simply by adding various zero constraints and coupling them in various ways to existing constraints. Zero constraints can be added incrementally, which leads to a cutting-plane algorithm. The separation problem is formulated as finding an unsatisfiable subproblem of a CSP.
Keywords :
"Linear programming","Machine vision","Machine learning","Upper bound","Graphical models","Markov random fields","Tree graphs","Constraint optimization","Artificial intelligence"
Journal_Title :
IEEE Transactions on Pattern Analysis and Machine Intelligence
Publisher :
ieee
ISSN :
0162-8828
Type :
jour
DOI :
10.1109/TPAMI.2009.134
Filename :
5128911
Link To Document :
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