4.7 Article

Multi-view learning based on nonparallel support vector machine

Journal

KNOWLEDGE-BASED SYSTEMS
Volume 158, Issue -, Pages 94-108

Publisher

ELSEVIER SCIENCE BV
DOI: 10.1016/j.knosys.2018.05.036

Keywords

Multi-view learning; Nonparallel support vector machine; Alternating direction method of multipliers

Funding

  1. National Natural Science Foundation of China [61472390, 71731009, 71331005, 91546201]
  2. Beijing Natural Science Foundation [1162005]
  3. Premium Funding Project for Academic Human Resources Development in Beijing Union University

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Multi-view learning (MVL) focuses on the problem of learning from the data represented by multiple distinct feature sets. Various successful SVM-based multi-view learning models have been proposed to improve existing learning tasks performance. Since nonparallel support vector machine (NPSVM) is proposed with several incomparable advantages over the state-of-the-art classifiers, it is potentially beneficial to perform the multi-view classification task using NPSVM. In this paper, we build a new multi-view learning model based on nonparallel support vector machine, termed as MVNPSVM. By combining the large margin mechanism and the consensus principle, MVNPSVM not only inherits the advantages of both NPSVM and multi-view learning, but also brings a new insight of extending NPSVM to the multi-view learning field. To solve MVNPSVM efficiently, we adopt the alternating direction method of multipliers (ADMM) as the solution. We theoretically analyze the performance of MVNPSVM from the viewpoints of the consensus analysis and the comparisons with the other two similar methods SVM-2K and multi-view twin support vector machines. Experimental results on 95 binary data sets confirm the effectiveness of the proposed method.

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