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Exact minimum rank approximation via Schatten p-norm minimization

机译:通过Schatten p-范数最小化来精确确定最小秩

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摘要

Minimizing the rank of a matrix with a given system of affine constraints is to recover the lowest-rank matrix with many important applications in engineering and science. A convex relaxation of the rank minimization problem by minimizing the nuclear norm instead of the rank of the matrix has recently been proposed. Recht and Fazel concluded that nuclear norm minimization subject to affine constraints is equivalent to rank minimization under a certain condition in terms of the rank-restricted isometry property. In this paper,weextend some recent results from nuclear norm minimization to Schatten p-norm minimization and present a theoretical guarantee for the Schatten p-norm minimization if a certain restricted isometry property holds for the linear affine transform. Our results improve on the previous works where recovery is used for nuclear norm minimization. An algorithm based on the Majorization Minimization algorithm has been proposed to solve Schatten p-norm minimization. By using an approximate singular value decomposition procedure, we obtain a fast and robust algorithm. The numerical results on the matrix completion problem with noisy measurements indicate that our algorithm gives a more accurate reconstruction and takes less time compared with some other existing algorithms.
机译:在给定的仿射约束系统中最小化矩阵的秩是在工程和科学中具有许多重要应用的情况下恢复最低秩的矩阵。最近已经提出了通过最小化核范数而不是矩阵的秩来最小化秩最小化问题的凸松弛。 Recht和Fazel得出结论,就仿射约束而言,受仿射约束的核规范最小化等于在一定条件下的秩最小化。本文将核规范最小化的一些最新结果扩展到Schatten p-范数最小化,并为线性仿射变换保持一定的等距性质而为Schatten p-范数最小化提供了理论保证。我们的结果对以前的工作进行了改进,在以前的工作中,将回收用于减少核规范。为了解决Schatten p范数最小化问题,提出了一种基于Majorization Minimization最小化算法。通过使用近似奇异值分解过程,我们获得了一种快速且鲁棒的算法。带有噪声测量值的矩阵完成问题的数值结果表明,与其他一些现有算法相比,我们的算法可提供更准确的重建且所需时间更少。

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