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Nonnegative low rank matrix approximation for nonnegative matrices

机译:非负矩阵的非负低等级矩阵近似

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摘要

This paper describes a new algorithm for computing Nonnegative Low Rank Matrix (NLRM) approximation for nonnegative matrices. Our approach is completely different from classical nonnegative matrix factorization (NMF) which has been studied for more than twenty five years. For a given nonnegative matrix, the usual NMF approach is to determine two nonnegative low rank matrices such that the distance between their product and the given nonnegative matrix is as small as possible. However, the proposed NLRM approach is to determine a nonnegative low rank matrix such that the distance between such matrix and the given nonnegative matrix is as small as possible. There are two advantages. (i) The minimized distance by the proposed NLRM method can be smaller than that by the NMF method, and it implies that the proposed NLRM method can obtain a better low rank matrix approximation. (ii) Our low rank matrix admits a matrix singular value decomposition automatically which provides a significant index based on singular values that can be used to identify important singular basis vectors, while this information cannot be obtained in the classical NMF. The proposed NLRM approximation algorithm was derived using the alternating projection on the low rank matrix manifold and the non-negativity property. Experimental results are presented to demonstrate the above mentioned advantages of the proposed NLRM method compared the NMF method. (C) 2020 Elsevier Ltd. All rights reserved.
机译:本文介绍了一种用于计算非负矩阵的非负低秩矩阵(NLRM)近似的新算法。我们的方法与经典的非负矩阵分解(NMF)完全不同,已经研究了超过二十五年。对于给定的非负矩阵,通常的NMF方法是确定两个非负低等级矩阵,使得其产品与给定的非负矩阵之间的距离尽可能小。然而,所提出的NLRM方法是确定非负低秩矩阵,使得这种矩阵与给定的非负矩阵之间的距离尽可能小。有两个优点。 (i)所提出的NLRM方法的最小距离可以小于NMF方法的距离,并且意味着所提出的NLRM方法可以获得更好的低秩矩阵近似。 (ii)我们的低等级矩阵承认自动矩阵奇异值分解,其基于可用于识别重要奇异基向量的奇异值提供了一个重要索引,而该信息不能在经典的NMF中获得。使用低秩矩阵歧管和非消极性属性的交替投影来导出所提出的NLRM近似算法。提出了实验结果以证明所提出的NLRM方法的上述优点比较了NMF方法。 (c)2020 elestvier有限公司保留所有权利。

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