4.6 Article

Graph self-representation method for unsupervised feature selection

期刊

NEUROCOMPUTING
卷 220, 期 -, 页码 130-137

出版社

ELSEVIER
DOI: 10.1016/j.neucom.2016.05.081

关键词

Dimensionality reduction; Alternating direction method multipliers; Locality preserving projection; Self-representation

资金

  1. National Natural Science Foundation of China [61263035, 61573270, 61450001]
  2. China 973 Program [2013CB329404]
  3. Guangxi Natural Science Foundation [2012GXNSFGA060004, 2015GXNSFCB139011]
  4. Guangxi Higher Institutions' Program of Introducing 100 High-Level Overseas Talents
  5. Guangxi Collaborative Innovation Center of Multi-Source Information Integration and Intelligent Processing
  6. Innovation Project of Guangxi Graduate Education [YCSZ2016046]

向作者/读者索取更多资源

Both subspace learning methods and feature selection methods are often used for removing irrelative features from high-dimensional data. Studies have shown that feature selection methods have interpretation ability and subspace learning methods output stable performance. This paper proposes a new unsupervised feature selection by integrating a subspace learning method (i.e., Locality Preserving Projection (LPP)) into a new feature selection method (i.e., a sparse feature-level self-representation method), aim at simultaneously receiving stable performance and interpretation ability. Different from traditional sample-level self-representation where each sample is represented by all samples and has been popularly used in machine learning and computer vision. In this paper, we propose to represent each feature by its relevant features to conduct feature selection via devising a feature-level self-representation loss function plus an l(2,1)-norm regularization term. Then we add a graph regularization term (i.e., LPP) into the resulting feature selection model to simultaneously conduct feature selection and subspace learning. The rationale of the LPP regularization term is that LPP preserves the original distribution of data after removing irrelative features. Finally, we conducted experiments on UCI data sets and other real data sets and the experimental results showed that the proposed approach outperformed all comparison algorithms. (C) 2016 Elsevier B.V. All rights reserved.

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