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Exploiting sparsity in linear and nonlinear matrix inequalities via positive semidefinite matrix completion

机译:通过正半定矩阵完成来利用线性和非线性矩阵不等式中的稀疏性

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A basic framework for exploiting sparsity via positive semidefinite matrix completion is presented for an optimization problem with linear and nonlinear matrix inequalities. The sparsity, characterized with a chordal graph structure, can be detected in the variable matrix or in a linear or nonlinear matrix-inequality constraint of the problem. We classify the sparsity in two types, the domain-space sparsity (d-space sparsity) for the symmetric matrix variable in the objective and/or constraint functions of the problem, which is required to be positive semidefinite, and the range-space sparsity (r-space sparsity) for a linear or nonlinear matrix-inequality constraint of the problem. Four conversion methods are proposed in this framework: two for exploiting the d-space sparsity and the other two for exploiting the r-space sparsity. When applied to a polynomial semidefinite program (SDP), these conversion methods enhance the structured sparsity of the problem called the correlative sparsity. As a result, the resulting polynomial SDP can be solved more effectively by applying the sparse SDP relaxation. Preliminary numerical results on the conversion methods indicate their potential for improving the efficiency of solving various problems.
机译:针对具有线性和非线性矩阵不等式的优化问题,提出了通过正半定矩阵完成来利用稀疏性的基本框架。稀疏性以弦图结构为特征,可以在问题的可变矩阵或线性或非线性矩阵不等式约束中检测到。我们将稀疏性分为两种类型,在问题的目标函数和/或约束函数中对称矩阵变量的域空间稀疏性(d空间稀疏性),它要求是正半定的,而范围空间稀疏性(r空间稀疏性)问题的线性或非线性矩阵不等式约束。在此框架中提出了四种转换方法:两种用于利用d空间稀疏性,另外两种用于利用r空间稀疏性。当应用于多项式半定程序(SDP)时,这些转换方法会增强称为相关稀疏性的问题的结构稀疏性。结果,可以通过应用稀疏SDP松弛来更有效地求解所得多项式SDP。转换方法的初步数值结果表明它们具有提高解决各种问题的效率的潜力。

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