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Exploiting Structured Sparsity in Large Scale Semidefinite Programming Problems

机译:在大型半定规划问题中利用结构稀疏性

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Semidefinite programming (SDP) covers a wide range of applications such as robust optimization, polynomial optimization, combinatorial optimization, system and control theory, financial engineering, machine learning, quantum information and quantum chemistry. In those applications, SDP problems can be large scale easily. Such large scale SDP problems often satisfy a certain sparsity characterized by a chordal graph structure. This sparsity is classified in two types. The one is the domain space sparsity (d-space sparsity) for positive semidefinite symmetric matrix variables involved in SDP problems, and the other the range space sparsity (r-space sparsity) for matrix-inequality constraints in SDP problems. In this short note, we survey how we exploit these two types of sparsities to solve large scale linear and nonlinear SDP problems. We refer to the paper [7] for more details.
机译:半定规划(SDP)涵盖了广泛的应用,例如鲁棒优化,多项式优化,组合优化,系统和控制理论,金融工程,机器学习,量子信息和量子化学。在那些应用中,SDP问题很容易大规模出现。这样的大规模SDP问题通常满足以弦图结构为特征的某种稀疏性。这种稀疏性分为两种类型。一个是SDP问题中涉及的正半定对称矩阵变量的域空间稀疏性(d空间稀疏性),另一个是SDP问题中矩阵不等式约束的范围空间稀疏性(r空间稀疏性)。在本简短说明中,我们调查了如何利用这两种稀疏性来解决大规模线性和非线性SDP问题。有关更多详细信息,请参见论文[7]。

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