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An eigenvalue decomposition based branch-and-bound algorithm for nonconvex quadratic programming problems with convex quadratic constraints

机译:凸二次约束的非凸二次规划问题的基于特征值分解的分支定界算法

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摘要

In this paper, we propose a branch-and-bound algorithm for finding a global optimal solution for a nonconvex quadratic program with convex quadratic constraints (NQPCQC). We first reformulate NQPCQC by adding some nonconvex quadratic constraints induced by eigenvectors of negative eigenvalues associated with the nonconvex quadratic objective function to Shor's semidefinite relaxation. Under the assumption of having a bounded feasible domain, these nonconvex quadratic constraints can be further relaxed into linear ones to form a special semidefinite programming relaxation. Then an efficient branch-and-bound algorithm branching along the eigendirections of negative eigenvalues is designed. The theoretic convergence property and the worst-case complexity of the proposed algorithm are proved. Numerical experiments are conducted on several types of quadratic programs to show the efficiency of the proposed method.
机译:在本文中,我们提出了一种分支定界算法,用于求解具有凸二次约束(NQPCQC)的非凸二次程序的全局最优解。我们首先通过将与非凸二次目标函数相关联的负特征值的特征向量所引起的一些非凸二次约束与Shor的半定松弛相加来重新构造NQPCQC。在具有有限可行域的假设下,可以将这些非凸二次约束进一步放宽为线性约束,以形成特殊的半定规划松弛。然后设计了一种有效的分支定界算法,沿着负特征值的特征方向分支。证明了该算法的理论收敛性和最坏情况的复杂度。在几种类型的二次程序上进行了数值实验,以证明该方法的有效性。

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