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

机译:通过半定松弛进行非凸二次规划的有限分支定界算法

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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.
机译:用于非凸二次规划(QP)分支的现有全局优化技术是通过递归地划分凸可行集来生成无限数量的分支边界节点。一个理论上的开放性问题是如何为非凸QP开发有限的分支定界算法。一个可以保证分支决策数量有限的想法是通过分支来强制执行一阶Karush-Kuhn-Tucker(KKT)条件。另外,这种方法自然会在每个节点上产生线性规划(LP)松弛。但是,LP松弛是无限的,因此无法使用它们。在本文中,我们提出并研究半定规划松弛,该松弛是有界的,因此适合与有限KKT分支一起使用。计算结果证明了该方法的实际有效性,特别突出的一点是仅需要少量节点。

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