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Quadratic convex reformulation for nonconvex binary quadratically constrained quadratic programming via surrogate constraint

机译:非凸二进制二次约束二次规划的替代凸约束二次凸重构

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摘要

We investigate in this paper nonconvex binary quadratically constrained quadratic programming (QCQP) which arises in various real-life fields. We propose a novel approach of getting quadratic convex reformulation (QCR) for this class of optimization problem. Our approach employs quadratic surrogate functions and convexifies all the quadratic inequality constraints to construct QCR. The price of this approach is the introduction of an extra quadratic inequality. The "best" QCR among the proposed family, in terms that the bound of the corresponding continuous relaxation is best, can be found via solving a semidefinite programming problem. Furthermore, we prove that the bound obtained by continuous relaxation of our best QCR is as tight as Lagrangian bound of binary QCQP. Computational experiment is also conducted to illustrate the solution efficiency improvement of our best QCR when applied in off-the-shell software.
机译:我们在本文中研究了在各种现实领域中出现的非凸二进制二次约束二次规划(QCQP)。对于此类优化问题,我们提出了一种获取二次凸重构的新方法。我们的方法采用二次代理函数,并凸显所有二次不等式约束,以构造QCR。这种方法的代价是引入了额外的二次不等式。通过解决半定规划问题,可以找到所建议系列中“最佳” QCR,即相应连续松弛的界限最佳。此外,我们证明了通过连续松弛最佳QCR所获得的边界与二进制QCQP的拉格朗日边界一样紧密。还进行了计算实验,以说明将我们最好的QCR应用到现有软件中时解决方案效率的提高。

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