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On Low Rank Matrix Approximations with Applications to Synthesis Problem in Compressed Sensing

机译:低秩矩阵逼近及其在压缩感知综合问题中的应用

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摘要

We consider the synthesis problem}of Compressed Sensing - given s and an MXn matrix A, extract from it an mXn submatrix A', certified to be s-good, with m as small as possible. Starting from the verifiable sufficient conditions of s-goodness, we express the synthesis problem as the problem of approximating a given matrix by a matrix of specified low rank in the uniform norm. We propose randomized algorithms for efficient construction of rank k approximation of matrices of size mXn achieving accuracy bounds O(1)sqrt({ln(mn)/k) which hold in expectation or with high probability. We also supply derandomized versions of the approximation algorithms which does not require random sampling of matrices and attains the same accuracy bounds. We further demonstrate that our algorithms are optimal up to the logarithmic in m and n factor. We provide preliminary numerical results on the performance of our algorithms for the synthesis problem.
机译:我们考虑压缩感测的综合问题-给定s和一个MXn矩阵A,从中提取一个mXn子矩阵A',证明其为s良好,且m尽可能小。从可证明的s优的充分条件开始,我们将综合问题表示为用统一范数中指定的低秩矩阵近似给定矩阵的问题。我们提出了一种随机算法,用于有效构造大小为mXn的矩阵的秩k逼近,以实现期望值或概率很高的精度范围O(1)sqrt({ln(mn)/ k)。我们还提供了近似算法的非随机版本,该版本不需要对矩阵进行随机采样,并且可以获得相同的精度范围。我们进一步证明了我们的算法对于m和n因子的对数而言是最优的。我们提供了关于综合问题的算法性能的初步数值结果。

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