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Efficient algorithm for sparse symmetric nonnegative matrix factorization

机译:稀疏对称非负矩阵分解的高效算法

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Symmetric Nonnegative Matrix Factorization (symNMF) is a special case of the standard Nonnegative Matrix Factorization (NMF) method which is the most popular linear dimensionality reduction technique for analyzing nonnegative data. Examples of symmetric matrices that arise in real-life applications include covariance matrices in finance, adjacency matrices associated with undirected graphs, and distance matrices arising from video and other media summarization technologies. The advantages of having sparse factors in symNMF include saving a great deal of storage space and enhancing the extraction of localized basis features that better represent the latent features of the original data. In order to obtain sparser basis factors, we formulate a new sparse symNMF model by imposing an l(1)-norm based sparsity constraint on the symNMF problem. We use the concept of rank-one nonnegative matrix approximation to decouple this non-convex optimization problem into convex nonnegative least squares sub-problems which are easier to solve. We develop a new and efficient coordinate-descent based algorithm and test it on four well-known databases of facial images. The proposed algorithm is shown to have fast convergence, well-suited for solving the sparse symNMF problem, and extract localized basis features of image datasets that facilitate interpretation. (C) 2019 Elsevier B.V. All rights reserved.
机译:对称的非负矩阵分解(SymnMF)是标准非负矩阵分解(NMF)方法的特殊情况,其是用于分析非负数据的最流行的线性维度降低技术。实际应用中出现的对称矩阵的示例包括金融中的协方差矩阵,与无向图形相关的邻接矩阵,以及视频和其他媒体摘要技术产生的距离矩阵。 Symnmf中具有稀疏因素的优点包括节省大量存储空间并增强局部基础特征的提取,从而更好地代表原始数据的潜在特征。为了获得稀疏基础因素,我们通过对symnmf问题施加L(1)基于NORM的稀疏限制来制定新的稀疏Symnmf模型。我们使用等级的概念 - 一个非负矩阵近似,将该非凸的优化问题与凸不上限最小二乘子问题分离,这更易于解决。我们开发了一种新的和高效的坐标 - 下降算法,并在四个面部图像的众所周知的数据库上测试。所提出的算法显示出具有快速收敛性,非常适合于解决稀疏Symnmf问题,并提取有助于解释的图像数据集的本地化基本特征。 (c)2019 Elsevier B.v.保留所有权利。

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