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Low-rank solutions of matrix inequalities with applications to polynomial optimization and matrix completion problems

机译:矩阵不等式的低秩解及其在多项式优化和矩阵完成问题中的应用

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This paper is concerned with the problem of finding a low-rank solution of an arbitrary sparse linear matrix inequality (LMI). To this end, we map the sparsity of the LMI problem into a graph. We develop a theory relating the rank of the minimum-rank solution of the LMI problem to the sparsity of its underlying graph. Furthermore, we propose two graph-theoretic convex programs to obtain a low-rank solution. The first convex optimization needs a tree decomposition of the sparsity graph. The second one does not rely on any computationally-expensive graph analysis and is always polynomial-time solvable. The results of this work can be readily applied to three separate problems of minimum-rank matrix completion, conic relaxation for polynomial optimization, and affine rank minimization. The results are finally illustrated on two applications of optimal distributed control and nonlinear optimization for electrical networks.
机译:本文关注的问题是寻找任意稀疏线性矩阵不等式(LMI)的低秩解。为此,我们将LMI问题的稀疏性映射到图形中。我们开发了一种将LMI问题的最小秩解的秩与其基础图的稀疏性联系起来的理论。此外,我们提出了两个图论凸程序来获得低秩解。第一个凸优化需要稀疏图的树分解。第二个不依赖任何计算量大的图形分析,并且始终是多项式时间可解的。这项工作的结果可以很容易地应用于最小秩矩阵完成,多项式优化的圆锥松弛和仿射秩最小化这三个独立的问题。最后在优化分配控制和电网非线性优化的两个应用中说明了结果。

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