Quadratic 0-1 programming : tightening linear or quadratic convex reformulation by use of relaxations
2008
Publication type:
Paper in peer-reviewed journals
Journal:
RAIRO - Operations Research, vol. 42, pp. 103-121
Publisher:
EDP Sciences
HAL:
Keywords :
quadratic convex reformulation.; linear reformulation; quadratic 0?1 programming; Combinatorial optimization;
Abstract:
Many combinatorial optimization problems can be formulated as the minimization of a 0?1 quadratic function subject to linear constraints. In this paper, we are interested in the exact solution of this problem through a two-phase general scheme. The first phase consists in reformulating the initial problem either into a compact mixed integer linear program or into a 0?1 quadratic convex program. The second phase simply consists in submitting the reformulated problem to a standard solver. The efficiency of this scheme strongly depends on the quality of the reformulation obtained in phase 1. We show that a good compact linear reformulation can be obtained by solving a continuous linear relaxation of the initial problem. We also show that a good quadratic convex reformulation can be obtained by solving a semidefinite relaxation. In both cases, the obtained reformulation profits from the quality of the underlying relaxation. Hence, the proposed scheme gets around, in a sense, the difficulty to incorporate these costly relaxations in a branch-and-bound algorithm.
Keywords (translation) :
reformulation convexe quadratique.; quadratique 0 ? 1 la programmation ; reformulation linéaire ; Optimisation combinatoire ;
BibTeX:
@article{Bil-Ell-Pla-2008, author={Alain Billionnet and Sourour Elloumi and Marie-Christine Plateau }, title={Quadratic 0-1 programming : tightening linear or quadratic convex reformulation by use of relaxations }, journal={RAIRO - Operations Research }, year={2008 }, volume={42 }, pages={103--121}, }