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Matrix completion by least-square, low-rank, and sparse self-representations

机译:矩阵完成至少为广场,低级别和稀疏自表示

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摘要

Conventional matrix completion methods are generally based on rank minimization. These methods assume that the given matrix is of low-rank and the data points are drawn from a single subspace of low-dimensionality. Therefore they are not effective in completing matrices where the data are drawn from multiple subspaces. In this paper, we establish a novel matrix completion framework that is based on self-representation. Specifically, least-square, low-rank, and sparse self-representations based matrix completion algorithms are provided. The underlying idea is that one data point can be efficiently reconstructed by other data points belonging to a common subspace, where the missing entries are recovered so as to fit the common subspace. The proposed algorithms actually maximize the weighted correlations among the columns of a given matrix. We prove that the proposed algorithms are approximations for rank-minimization of the incomplete matrix. In addition, they are able to complete high-rank or even full rank matrices when the data are drawn from multiple subspaces. Comparative studies are conducted on synthetic datasets, natural image inpainting tasks, temperature prediction task, and collaborative filtering tasks. The results show that the proposed algorithms often outperform other state-of-the-art algorithms in various tasks. (C) 2017 Elsevier Ltd. All rights reserved.
机译:传统的矩阵完成方法通常基于秩最小化。这些方法假设给定的矩阵是低秩的,并且从低维子空间中汲取数据点。因此,它们在完成从多个子空间汲取数据的矩阵时它们无效。在本文中,我们建立了一种基于自我代表性的新型矩阵完成框架。具体而言,提供了基于基于矩阵完成算法的最小二乘,低秩和稀疏的自表示。潜在的想法是可以通过属于公共子空间的其他数据点有效地重建一个数据点,其中恢复丢失的条目以适合公共子空间。所提出的算法实际上最大化给定矩阵的列之间的加权相关性。我们证明,所提出的算法是不完全矩阵的秩最小化的近似值。此外,当数据从多个子空间汲取时,它们能够完成高级别甚至全排名矩阵。对比较研究在合成数据集,自然图像修复任务,温度预测任务和协作滤波任务上进行。结果表明,所提出的算法通常始终以各种任务在其他最先进的算法差异。 (c)2017 Elsevier Ltd.保留所有权利。

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