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Low-Rank Matrix Recovery from Row-and-Column Affine Measurements

机译:从行和柱仿射测量中恢复低级矩阵恢复

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We propose and study a row-and-column affine measurement scheme for low-rank matrix recovery. Each measurement is a linear combination of elements in one row or one column of a matrix X. This setting arises naturally in applications from different domains. However, current algorithms developed for standard matrix recovery problems do not perform well in our case, hence the need for developing new algorithms and theory for our problem. We propose a simple algorithm for the problem based on Singular Value Decomposition (SV D) and least-squares (LS), which we term SVLS. We prove that (a simplified version of) our algorithm can recover X exactly with the minimum possible number of measurements in the noiseless case. In the general noisy case, we prove performance guarantees on the reconstruction accuracy under the Frobenius norm. In simulations, our row-and-column design and SVLS algorithm show improved speed, and comparable and in some cases better accuracy compared to standard measurements designs and algorithms. Our theoretical and experimental results suggest that the proposed row-and-column affine measurements scheme, together with our recovery algorithm, may provide a powerful framework for affine matrix reconstruction.
机译:我们提出并研究了用于低秩矩阵恢复的行和柱仿射测量方案。每个测量是一行或一列矩阵X中的元素的线性组合。该设置自然地在来自不同域的应用中。然而,对于标准矩阵恢复问题开发的当前算法在我们的情况下不会表现良好,因此需要开发新的算法和理论的问题。我们提出了一种基于奇异值分解(SV D)和最小二乘(LS)的问题的简单算法,我们术语SVLS。我们证明了(简化版本)我们的算法可以在无噪声外壳中完全恢复X.在一般嘈杂的情况下,我们证明了Frobenius规范下的重建准确性的性能保证。在仿真中,我们的行和列设计和SVLS算法显示出改善的速度,并且在某些情况下,与标准测量设计和算法相比,在某些情况下更好的准确性。我们的理论和实验结果表明,建议的行和柱仿射测量方案以及我们的恢复算法,可以为仿射矩阵重建提供强大的框架。

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