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SDP RELAXATIONS FOR QUADRATIC OPTIMIZATION PROBLEMS DERIVED FROM POLYNOMIAL OPTIMIZATION PROBLEMS

机译:从多项式优化问题推导的二次优化问题的SDP松弛

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摘要

Based on the convergent sequence of SDP relaxations for a multivariate polynomial optimization problem (POP) by Lasserre (2006), Waki et al. (2006) constructed a sequence of sparse SDP relaxations to solve sparse POPs efficiently. Nevertheless, the size of the sparse SDP relaxation is the major obstacle in order to solve POPs of higher degree. This paper proposes an approach to transform general POPs to quadratic optimization problems (QOPs), which allows to reduce the size of the SDP relaxation substantially. We introduce different heuristics resulting in equivalent QOPs and show how sparsity of a POP is maintained under the transformation procedure. As the most important issue, we discuss how to increase the quality of the SDP relaxation for a QOP. Moreover, we increase the accuracy of the solution of the SDP relaxation by applying additional local optimization techniques. Finally, we demonstrate the high potential of this approach through numerical results for large scale POPs of higher degree.
机译:Waki等人基于Lasserre(2006)针对多元多项式优化问题(POP)的SDP松弛收敛序列。 (2006年)构造了一系列稀疏SDP松弛来有效地解决稀疏POP。然而,稀疏SDP松弛的大小是解决更高程度POP的主要障碍。本文提出了一种将常规POP转换为二次优化问题(QOP)的方法,该方法可以大大减小SDP松弛的大小。我们介绍了导致等效QOP的不同启发式方法,并说明了如何在转换过程中保持POP的稀疏性。作为最重要的问题,我们讨论了如何提高QOP的SDP松弛质量。此外,我们通过应用其他局部优化技术来提高SDP松弛解决方案的准确性。最后,我们通过数值结果证明了该方法具有较高潜力的大规模POP。

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