Improved estimation of duality gap in binary quadratic programming using a weighted distance measure

Improved estimation of duality gap in binary quadratic programming using a weighted distance measure

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Article ID: iaor20121339
Volume: 218
Issue: 2
Start Page Number: 351
End Page Number: 357
Publication Date: Apr 2012
Journal: European Journal of Operational Research
Authors: , , ,
Keywords: duality, weights, Lagrangian methods, programming (binary)
Abstract:

We present in this paper an improved estimation of duality gap between binary quadratic program and its Lagrangian dual. More specifically, we obtain this improved estimation using a weighted distance measure between the binary set and certain affine subspace. We show that the optimal weights can be computed by solving a semidefinite programming problem. We further establish a necessary and sufficient condition under which the weighted distance measure gives a strictly tighter estimation of the duality gap than the existing estimations.

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