带噪声观测的低秩矩阵补全:定量比较

Raghunandan H. Keshavan, A. Montanari, Sewoong Oh
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引用次数: 40

摘要

我们考虑一个具有重要实际意义的问题,即从其条目的一个小子集重建一个低秩数据矩阵。这个问题出现在协同滤波、计算机视觉和无线传感器网络等许多领域。本文主要研究了观测样本被噪声破坏情况下的矩阵补全问题。我们比较了三种最先进的矩阵补全算法(OptSpace, ADMiRA和FPCA)在单个仿真平台上的性能,并给出了数值结果。我们表明,在实践中,这些有效的算法可以用来重建真实的数据矩阵,以及随机生成的矩阵,准确地。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Low-rank matrix completion with noisy observations: A quantitative comparison
We consider a problem of significant practical importance, namely, the reconstruction of a low-rank data matrix from a small subset of its entries. This problem appears in many areas such as collaborative filtering, computer vision and wireless sensor networks. In this paper, we focus on the matrix completion problem in the case when the observed samples are corrupted by noise. We compare the performance of three state-of-the-art matrix completion algorithms (OptSpace, ADMiRA and FPCA) on a single simulation platform and present numerical results. We show that in practice these efficient algorithms can be used to reconstruct real data matrices, as well as randomly generated matrices, accurately.
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