4.6 Article

Dynamic graph learning for spectral feature selection

期刊

MULTIMEDIA TOOLS AND APPLICATIONS
卷 77, 期 22, 页码 29739-29755

出版社

SPRINGER
DOI: 10.1007/s11042-017-5272-y

关键词

Graph learning; Optimization; Spectral feature selection

资金

  1. China Key Research Program [2016YFB1000905]
  2. China 1000-Plan National Distinguished Professorship
  3. Nation Natural Science Foundation of China [61573270, 61672177]
  4. Guangxi Natural Science Foundation [2015GXNSFCB139011]
  5. Guang-xi High Institutions Program of Introducing 100 High-Level Overseas Talents
  6. Guangxi Collaborative Innovation Center of Multi-Source Information Integration and Intelligent Processing
  7. Guangxi Bagui Teams for Innovation and Research
  8. Research Fund of Guangxi Key Lab of MIMS [16-A-01-01, 16-A-01-02]
  9. Innovation Project of Guangxi Graduate Education [XYCSZ2017064, XYCSZ2017067, YCSW2017065]

向作者/读者索取更多资源

Previous spectral feature selection methods generate the similarity graph via ignoring the negative effect of noise and redundancy of the original feature space, and ignoring the association between graph matrix learning and feature selection, so that easily producing suboptimal results. To address these issues, this paper joints graph learning and feature selection in a framework to obtain optimal selected performance. More specifically, we use the least square loss function and an l(2,1)-norm regularization to remove the effect of noisy and redundancy features, and use the resulting local correlations among the features to dynamically learn a graph matrix from a low-dimensional space of original data. Experimental results on real data sets show that our method outperforms the state-of-the-art feature selection methods for classification tasks.

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