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A SOCP RELAXATION BASED BRANCH-AND-BOUND METHOD FOR GENERALIZED TRUST-REGION SUBPROBLEM

机译:基于SOCP放松的广义信任区域子问题的分支和束缚方法

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This paper proposes a second-order cone programming (SOCP) relaxation for the generalized trust-region problem by exploiting the property that any symmetric matrix and identity matrix can be simultaneously diagonalizable. We show that our proposed SOCP relaxation can provide a lower bound as tight as that of the standard semidefinite programming (SDP) relaxation. Moreover, we provide a sufficient condition under which the proposed SOCP relaxation is exact. Since the standard SDP relaxation suffers from a much heavier computing burden, the proposed SOCP relaxation has a much higher efficiency in solving process. Then we design a branch-and-bound algorithm based on this SOCP relaxation to obtain the global optimal solution for a general problem. Three types of numerical experiments are carried out to demonstrate the effectiveness and efficiency of our proposed SOCP relaxation.
机译:本文提出了通过利用任何对称矩阵和标识矩阵可以同时对角线化的特性来为广义信任区域问题提出二阶锥编程(SOCP)放松。我们表明,我们所提出的SOCP放松可以提供较低的界限,作为标准的半纤维编程(SDP)弛豫。此外,我们提供了一种充分的条件,建议的SOCP放松是精确的。由于标准的SDP放松遭受了更重的计算负担,因此所提出的SOCP放松在解决过程中具有更高的效率。然后我们根据该SOCP放松设计一个分支和绑定算法,以获得一般问题的全局最佳解决方案。进行了三种类型的数值实验,以证明我们提出的SoCP放松的有效性和效率。

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