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Graph Regularized L_p Smooth Non-negative Matrix Factorization for Data Representation 被引量:10

Graph Regularized L_p Smooth Non-negative Matrix Factorization for Data Representation
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摘要 This paper proposes a Graph regularized Lpsmooth non-negative matrix factorization(GSNMF) method by incorporating graph regularization and L_p smoothing constraint, which considers the intrinsic geometric information of a data set and produces smooth and stable solutions. The main contributions are as follows: first, graph regularization is added into NMF to discover the hidden semantics and simultaneously respect the intrinsic geometric structure information of a data set. Second,the Lpsmoothing constraint is incorporated into NMF to combine the merits of isotropic(L_2-norm) and anisotropic(L_1-norm)diffusion smoothing, and produces a smooth and more accurate solution to the optimization problem. Finally, the update rules and proof of convergence of GSNMF are given. Experiments on several data sets show that the proposed method outperforms related state-of-the-art methods. This paper proposes a Graph regularized Lpsmooth non-negative matrix factorization(GSNMF) method by incorporating graph regularization and L_p smoothing constraint, which considers the intrinsic geometric information of a data set and produces smooth and stable solutions. The main contributions are as follows: first, graph regularization is added into NMF to discover the hidden semantics and simultaneously respect the intrinsic geometric structure information of a data set. Second,the Lpsmoothing constraint is incorporated into NMF to combine the merits of isotropic(L_2-norm) and anisotropic(L_1-norm)diffusion smoothing, and produces a smooth and more accurate solution to the optimization problem. Finally, the update rules and proof of convergence of GSNMF are given. Experiments on several data sets show that the proposed method outperforms related state-of-the-art methods.
出处 《IEEE/CAA Journal of Automatica Sinica》 EI CSCD 2019年第2期584-595,共12页 自动化学报(英文版)
基金 supported by the National Natural Science Foundation of China(61702251,61363049,11571011) the State Scholarship Fund of China Scholarship Council(CSC)(201708360040) the Natural Science Foundation of Jiangxi Province(20161BAB212033) the Natural Science Basic Research Plan in Shaanxi Province of China(2018JM6030) the Doctor Scientific Research Starting Foundation of Northwest University(338050050) Youth Academic Talent Support Program of Northwest University
关键词 Data clustering dimensionality reduction GRAPH REGULARIZATION LP SMOOTH non-negative matrix factorization(SNMF) Data clustering dimensionality reduction graph regularization Lp smooth non-negative matrix factorization(SNMF)
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