Nonconvex multi-view subspace clustering via simultaneously learning the representation tensor and affinity matrix*

被引:8
作者
Li, Minghui [1 ]
Li, Wen [1 ]
Xiao, Mingqing [2 ]
机构
[1] South China Normal Univ, Sch Math Sci, Guangzhou 510631, Peoples R China
[2] Southern Illinois Univ, Dept Math, Carbondale, IL 62901 USA
基金
中国国家自然科学基金; 美国国家科学基金会;
关键词
multi-view subspace clustering; hyper-Laplacian; low-rank tensor; tensor nuclear norm; tensor singular value; CLASSIFICATION; MODEL;
D O I
10.1088/1361-6420/ac8ac5
中图分类号
O29 [应用数学];
学科分类号
070104 ;
摘要
Multi-view subspace clustering, which aims to partition a dataset into its relevant subspaces based on their multi-view features, has been widely applied to identify various characteristics of datasets. The typical model of multi-view subspace clustering in literature often makes use of the nuclear norm to seek the underlying low-rank representation. However, due to the sum property of the singular values defined by tensor nuclear norm, the existing multi-view subspace clustering does not well handle the noise and the illumination variations embedded in multi-view data. To address and improve the robustness and clustering performance, we propose a new nonconvex multi-view subspace clustering model via tensor minimax concave penalty (MCP) approximation associated with rank minimization (NMSC-MCP), which can simultaneously construct the low-rank representation tensor and affinity matrix in a unified framework. Specifically, the nonconvex MCP approximation rank function is adopted to as a tighter tensor rank approximation to discriminate the dimension of features so that better accuracy can be achieved. In addition, we also address the local structure by including both hyper-Laplacian regularization and auto-weighting scheme into the objective function to promote the clustering performance. A corresponding iterative algorithm is then developed to solve the proposed model and the constructed iterative sequence generated by the proposed algorithm is shown to converge to the desirable KKT critical point. Extensive experiments on benchmark datasets have demonstrate the highly desirable effectiveness of our proposed method.
引用
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页数:40
相关论文
共 47 条
[1]  
Beck A, 2017, MOS SIAM SER OPTIM, DOI DOI 10.1137/1.9781611974997
[2]  
Bosch A, 2007, IEEE I CONF COMP VIS, P1863
[3]   Graph Regularized Nonnegative Matrix Factorization for Data Representation [J].
Cai, Deng ;
He, Xiaofei ;
Han, Jiawei ;
Huang, Thomas S. .
IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE, 2011, 33 (08) :1548-1560
[4]   Diversity-induced Multi-view Subspace Clustering [J].
Cao, Xiaochun ;
Zhang, Changqing ;
Fu, Huazhu ;
Liu, Si ;
Zhang, Hua .
2015 IEEE CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR), 2015, :586-594
[5]   Spectral Curvature Clustering (SCC) [J].
Chen, Guangliang ;
Lerman, Gilad .
INTERNATIONAL JOURNAL OF COMPUTER VISION, 2009, 81 (03) :317-330
[6]   Multi-view subspace clustering via simultaneously learning the representation tensor and affinity matrix [J].
Chen, Yongyong ;
Xiao, Xiaolin ;
Zhou, Yicong .
PATTERN RECOGNITION, 2020, 106
[7]  
Deisenroth M., 2019, Mathematics for Machine Learning
[8]  
Donoho D.L., 2000, AMS Math Challenges Lecture, V1, P32
[9]   Sparse Subspace Clustering: Algorithm, Theory, and Applications [J].
Elhamifar, Ehsan ;
Vidal, Rene .
IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE, 2013, 35 (11) :2765-2781
[10]  
Fei-Fei L, 2005, PROC CVPR IEEE, P524