Relaxed Approximate Coloring In Exact Maximum Clique Search

COMPUTERS & OPERATIONS RESEARCH(2014)

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摘要
This paper presents selective coloring as a new paradigm for branch-and-bound exact maximum clique search. Approximate coloring has, in recent, years been at the heart of leading solvers in the field. Selective coloring proposes to relax coloring up to a certain threshold. The result is a less informed but lighter decision heuristic.Different operators for the remaining uncolored vertices give rise to algorithmic variants integrated in a new BBMCL framework. BBMCL allows for an interesting comparison between approximate coloring and degree-based decision heuristics.The paper also reports extensive empirical tests. Selective coloring algorithms are fastest for a large subset of the graphs considered. (C) 2013 Elsevier Ltd. All rights reserved.
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关键词
Combinatorial optimization,Approximate coloring,Branch-and-bound,Global search
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