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
  • [31] Action Recognition Using Low-Rank Sparse Representation
    Cheng, Shilei
    Gu, Song
    Ye, Maoquan
    Xie, Mei
    IEICE TRANSACTIONS ON INFORMATION AND SYSTEMS, 2018, E101D (03) : 830 - 834
  • [32] SPIKE SORTING BASED ON LOW-RANK AND SPARSE REPRESENTATION
    Huang, Libo
    Ling, Bingo Wing-Kuen
    Zeng, Yan
    Gan, Lu
    2020 IEEE INTERNATIONAL CONFERENCE ON MULTIMEDIA AND EXPO (ICME), 2020,
  • [33] Low-Rank Representation for Incomplete Data
    Shi, Jiarong
    Yang, Wei
    Yong, Longquan
    Zheng, Xiuyun
    MATHEMATICAL PROBLEMS IN ENGINEERING, 2014, 2014
  • [34] SAR Target Recognition via Local Sparse Representation of Multi-Manifold Regularized Low-Rank Approximation
    Yu, Meiting
    Dong, Ganggang
    Fan, Haiyan
    Kuang, Gangyao
    REMOTE SENSING, 2018, 10 (02)
  • [35] Low-Rank Representation with Empirical Kernel Space Embedding of Manifolds
    Feng, Wenyi
    Wang, Zhe
    Xiao, Ting
    NEURAL NETWORKS, 2025, 185
  • [36] Incomplete-Data Oriented Multiview Dimension Reduction via Sparse Low-Rank Representation
    Yang, Wanqi
    Shi, Yinghuan
    Gao, Yang
    Wang, Lei
    Yang, Ming
    IEEE TRANSACTIONS ON NEURAL NETWORKS AND LEARNING SYSTEMS, 2018, 29 (12) : 6276 - 6291
  • [37] Superpixel Weighted Low-rank and Sparse Approximation for Hyperspectral Unmixing
    Ince, Taner
    Dundar, Tugcan
    Kacmaz, Seydi
    Karci, Hasari
    2023 10TH INTERNATIONAL CONFERENCE ON RECENT ADVANCES IN AIR AND SPACE TECHNOLOGIES, RAST, 2023,
  • [38] Robust Video Restoration by Joint Sparse and Low Rank Matrix Approximation
    Ji, Hui
    Huang, Sibin
    Shen, Zuowei
    Xu, Yuhong
    SIAM JOURNAL ON IMAGING SCIENCES, 2011, 4 (04): : 1122 - 1142
  • [39] Sparse photoacoustic microscopy based on low-rank matrix approximation
    刘婷
    孙明健
    冯乃章
    王明华
    陈德应
    沈毅
    ChineseOpticsLetters, 2016, 14 (09) : 66 - 70
  • [40] Sparse photoacoustic microscopy based on low-rank matrix approximation
    Liu, Ting
    Sun, Mingjian
    Feng, Naizhang
    Wang, Minghua
    Chen, Deying
    Shen, Yi
    CHINESE OPTICS LETTERS, 2016, 14 (09)