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arXiv:2006.04571 [math.OC]AbstractReferencesReviewsResources

A Computational Study of Exact Subgraph Based SDP Bounds for Max-Cut, Stable Set and Coloring

Elisabeth Gaar, Franz Rendl

Published 2020-06-05Version 1

The "exact subgraph" approach was recently introduced as a hierarchical scheme to get increasingly tight semidefinite programming relaxations of several NP-hard graph optimization problems. Solving these relaxations is a computational challenge because of the potentially large number of violated subgraph constraints. We introduce a computational framework for these relaxations designed to cope with these difficulties. We suggest a partial Lagrangian dual, and exploit the fact that its evaluation decomposes into several independent subproblems. This opens the way to use the bundle method from non-smooth optimization to minimize the dual function. Finally computational experiments on the Max-Cut, stable set and coloring problem show the excellent quality of the bounds obtained with this approach.

Comments: arXiv admin note: substantial text overlap with arXiv:1902.05345
Categories: math.OC
Subjects: 90C22, 90C27
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