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通过L1范数正则化进行具有自动秩估计的一阶矩阵补全

Rank-One Matrix Completion With Automatic Rank Estimation via L1-Norm Regularization.

作者信息

Shi Qiquan, Lu Haiping, Cheung Yiu-Ming

出版信息

IEEE Trans Neural Netw Learn Syst. 2018 Oct;29(10):4744-4757. doi: 10.1109/TNNLS.2017.2766160. Epub 2017 Dec 11.

Abstract

Completing a matrix from a small subset of its entries, i.e., matrix completion is a challenging problem arising from many real-world applications, such as machine learning and computer vision. One popular approach to solve the matrix completion problem is based on low-rank decomposition/factorization. Low-rank matrix decomposition-based methods often require a prespecified rank, which is difficult to determine in practice. In this paper, we propose a novel low-rank decomposition-based matrix completion method with automatic rank estimation. Our method is based on rank-one approximation, where a matrix is represented as a weighted summation of a set of rank-one matrices. To automatically determine the rank of an incomplete matrix, we impose L1-norm regularization on the weight vector and simultaneously minimize the reconstruction error. After obtaining the rank, we further remove the L1-norm regularizer and refine recovery results. With a correctly estimated rank, we can obtain the optimal solution under certain conditions. Experimental results on both synthetic and real-world data demonstrate that the proposed method not only has good performance in rank estimation, but also achieves better recovery accuracy than competing methods.

摘要

从矩阵的一个小子集元素来完成矩阵,即矩阵补全是一个源于许多实际应用(如机器学习和计算机视觉)的具有挑战性的问题。一种解决矩阵补全问题的流行方法是基于低秩分解。基于低秩矩阵分解的方法通常需要预先指定秩,而这在实际中很难确定。在本文中,我们提出了一种具有自动秩估计的基于低秩分解的新型矩阵补全方法。我们的方法基于秩一近似,其中一个矩阵被表示为一组秩一矩阵的加权和。为了自动确定不完全矩阵的秩,我们对权重向量施加L1范数正则化并同时最小化重构误差。获得秩之后,我们进一步去除L1范数正则化并细化恢复结果。有了正确估计的秩,我们可以在某些条件下获得最优解。在合成数据和真实数据上的实验结果表明,所提出的方法不仅在秩估计方面具有良好性能,而且比竞争方法具有更好的恢复精度。

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