4.7 Article

Formulating Ensemble Learning of SVMs Into a Single SVM Formulation by Negative Agreement Learning

Journal

IEEE TRANSACTIONS ON SYSTEMS MAN CYBERNETICS-SYSTEMS
Volume 51, Issue 10, Pages 6015-6028

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TSMC.2019.2958647

Keywords

Support vector machines; Training; Bagging; Optimization; Boosting; Kernel; Task analysis; Diversity; ensemble learning; negative agreement learning (NAL); support vector machines (SVMs); training error

Funding

  1. National Natural Science Foundation of China [61572236, 61972181]
  2. Natural Science Foundation of Jiangsu Province [BK20191331]
  3. Fundamental Research Funds for the Central Universities [JUDCF13030]
  4. National First-Class Discipline Program of Light Industry and Engineering
  5. Hong Kong Polytechnic University [G-YBVT, G-YBQH]

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This article proposes a new SVM-based ensemble framework using a negative agreement learning (NAL) strategy to enhance the diversity of SVMs and suppress the training error in a joint training manner. Experimental studies show the effectiveness of the proposed ensemble framework.
When a fixed number of support vector machines (SVMs) are taken as the base learners, an attempt to diversify them should be encouraged to achieve a satisfactory ensemble. In this article, by means of a negative agreement learning (NAL) strategy, a new SVM-based ensemble framework is proposed to simultaneously enhance the diversity of SVMs in the ensemble and suppress the training error of the ensemble. The proposed ensemble framework is theoretically derived to have distinctive merits: 1) the ensemble and each of its individual SVM base learner are trained in a joint manner rather than in an independent manner and 2) the NAL strategy facilitates the formulation of the ensemble of SVMs as one single SVM; thus, abundant advances in the training of SVM can be conveniently applied to the proposed ensemble learning of SVMs and there is no need to design special optimization techniques for the involved ensemble learning. Extensive experimental studies demonstrate the effectiveness of the proposed ensemble framework of SVMs.

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