Low rank approximation with sparse integration of multiple manifolds for data representation

被引:0
|
作者
Liang Tao
Horace H. S. Ip
Yinglin Wang
Xin Shu
机构
[1] City University of Hong Kong,Department of Computer Science
[2] Shanghai University of Finance and Economics,Department of Computer Science and Technology
[3] Shanghai Jiao Tong University,Department of Computer Science and Engineering
[4] Nanjing Agricultural University,College of Information Science and Technology
来源
Applied Intelligence | 2015年 / 42卷
关键词
Dimensionality reduction; Low rank matrix approximation; Manifold learning; Multiple graph integration; Sparsity; Clustering;
D O I
暂无
中图分类号
学科分类号
摘要
Manifold regularized techniques have been extensively exploited in unsupervised learning like matrix factorization whose performance is heavily affected by the underlying graph regularization. However, there exist no principled ways to select reasonable graphs under the matrix decomposition setting, particularly in multiple heterogeneous graph sources. In this paper, we deal with the issue of searching for the optimal linear combination space of multiple graphs under the low rank matrix approximation model. Specifically, efficient projection onto the probabilistic simplex is utilized to optimize the coefficient vector of graphs, resulting in the sparse pattern of coefficients. This attractive property of sparsity can be interpreted as a criterion for selecting graphs, i.e., identifying the most discriminative graphs and removing the noisy or irrelevant graphs, so as to boost the low rank decomposition performance. Experimental results over diverse popular image and web document corpora corroborate the effectiveness of our new model in terms of clusterings.
引用
收藏
页码:430 / 446
页数:16
相关论文
共 50 条
  • [41] GRAPH REFINEMENT VIA SIMULTANEOUSLY LOW-RANK AND SPARSE APPROXIMATION
    Zhang, Zhenyue
    Zhai, Zheng
    Li, Limin
    SIAM JOURNAL ON SCIENTIFIC COMPUTING, 2022, 44 (03): : A1525 - A1553
  • [42] LOW RANK GROUP SPARSE REPRESENTATION BASED CLASSIFIER FOR POSE VARIATION
    Yadav, Shivangi
    Singh, Maneet
    Vatsa, Mayank
    Singh, Richa
    Majumdar, Angshul
    2016 IEEE INTERNATIONAL CONFERENCE ON IMAGE PROCESSING (ICIP), 2016, : 2986 - 2990
  • [43] Unsupervised Video Matting via Sparse and Low-Rank Representation
    Zou, Dongqing
    Chen, Xiaowu
    Cao, Guangying
    Wang, Xiaogang
    IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE, 2020, 42 (06) : 1501 - 1514
  • [44] Robust Adaptive Low-Rank and Sparse Embedding for Feature Representation
    Wang, Lei
    Zhang, Zhao
    Liu, Guangcan
    Ye, Qiaolin
    Qin, Jie
    Wang, Meng
    2018 24TH INTERNATIONAL CONFERENCE ON PATTERN RECOGNITION (ICPR), 2018, : 800 - 805
  • [45] Low-Rank and Sparse Representation for Anomaly Detection in Hyperspectral Images
    Pagare, M. S.
    Risodkar, Y. R.
    2018 INTERNATIONAL CONFERENCE ON ADVANCES IN COMMUNICATION AND COMPUTING TECHNOLOGY (ICACCT), 2018, : 594 - 597
  • [46] Low-Rank and Sparse Representation for Hyperspectral Image Processing: A Review
    Peng, Jiangtao
    Sun, Weiwei
    Li, Heng-Chao
    Li, Wei
    Meng, Xiangchao
    Ge, Chiru
    Du, Qian
    IEEE GEOSCIENCE AND REMOTE SENSING MAGAZINE, 2022, 10 (01) : 10 - 43
  • [47] Low-Rank and Eigenface Based Sparse Representation for Face Recognition
    Hou, Yi-Fu
    Sun, Zhan-Li
    Chong, Yan-Wen
    Zheng, Chun-Hou
    PLOS ONE, 2014, 9 (10):
  • [48] Sparse and low-rank representation for multi-label classification
    Zhi-Fen He
    Ming Yang
    Applied Intelligence, 2019, 49 : 1708 - 1723
  • [49] Laplacian regularized low-rank sparse representation transfer learning
    Lin Guo
    Qun Dai
    International Journal of Machine Learning and Cybernetics, 2021, 12 : 807 - 821
  • [50] Local Low-Rank and Sparse Representation for Hyperspectral Image Denoising
    Ma, Guanqun
    Huang, Ting-Zhu
    Haung, Jie
    Zheng, Chao-Chao
    IEEE ACCESS, 2019, 7 : 79850 - 79865