Article ID Journal Published Year Pages File Type
1141576 Discrete Optimization 2009 11 Pages PDF
Abstract

Semidefinite relaxations of the quadratic assignment problem (QAPQAP) have recently turned out to provide good approximations to the optimal value of QAPQAP. We take a systematic look at various conic relaxations of QAPQAP. We first show that QAPQAP can equivalently be formulated as a linear program over the cone of completely positive matrices. Since it is hard to optimize over this cone, we also look at tractable approximations and compare with several relaxations from the literature. We show that several of the well-studied models are in fact equivalent. It is still a challenging task to solve the strongest of these models to reasonable accuracy on instances of moderate size.

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Physical Sciences and Engineering Mathematics Control and Optimization
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