A finite branch-and-bound algorithm for nonconvex quadratic programming via semidefinite relaxations

被引:0
|
作者
Samuel Burer
Dieter Vandenbussche
机构
[1] University of Iowa,Department of Management Sciences
[2] Axioma,undefined
[3] Inc.,undefined
来源
Mathematical Programming | 2008年 / 113卷
关键词
Nonconcave quadratic maximization; Nonconvex quadratic programming; Branch-and-bound; Lift-and-project relaxations; Semidefinite programming;
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摘要
Existing global optimization techniques for nonconvex quadratic programming (QP) branch by recursively partitioning the convex feasible set and thus generate an infinite number of branch-and-bound nodes. An open question of theoretical interest is how to develop a finite branch-and-bound algorithm for nonconvex QP. One idea, which guarantees a finite number of branching decisions, is to enforce the first-order Karush-Kuhn-Tucker (KKT) conditions through branching. In addition, such an approach naturally yields linear programming (LP) relaxations at each node. However, the LP relaxations are unbounded, a fact that precludes their use. In this paper, we propose and study semidefinite programming relaxations, which are bounded and hence suitable for use with finite KKT-branching. Computational results demonstrate the practical effectiveness of the method, with a particular highlight being that only a small number of nodes are required.
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页码:259 / 282
页数:23
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