A multi-stage convex relaxation approach to noisy structured low-rank matrix recovery

被引:0
作者
Shujun Bi
Shaohua Pan
Defeng Sun
机构
[1] South China University of Technology,School of Mathematics
[2] The Hong Kong Polytechnic University,Department of Applied Mathematics
来源
Mathematical Programming Computation | 2020年 / 12卷
关键词
Structured rank minimization; MPGCC; Exact penalty; Convex relaxation; 90C27; 90C33; 49M20;
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中图分类号
学科分类号
摘要
This paper concerns with a noisy structured low-rank matrix recovery problem which can be modeled as a structured rank minimization problem. We reformulate this problem as a mathematical program with a generalized complementarity constraint (MPGCC), and show that its penalty version, yielded by moving the generalized complementarity constraint to the objective, has the same global optimal solution set as the MPGCC does whenever the penalty parameter is over a certain threshold. Then, by solving the exact penalty problem in an alternating way, we obtain a multi-stage convex relaxation approach. We provide theoretical guarantees for our approach under a mild restricted eigenvalue condition, by quantifying the reduction of the error and approximate rank bounds of the first stage convex relaxation in the subsequent stages and establishing the geometric convergence of the error sequence in a statistical sense. Numerical experiments are conducted for some structured low-rank matrix recovery examples to confirm our theoretical findings. Our code can be achieved from https://doi.org/10.5281/zenodo.3600639.
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页码:569 / 602
页数:33
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