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Support Vector Machine Based on Type-2 Fuzzy Training Samples

  • Ha, Ming-Hu (College of Mathematics and Computer Sciences, Hebei University, College of Economy and Management, Hebei University of Engineering) ;
  • Huang, Jia-Ying (College of Mathematics and Computer Sciences, Hebei University) ;
  • Yang, Yang (College of Mathematics and Computer Sciences, Hebei University) ;
  • Wang, Chao (College of Physics Science and Technology, Hebei University)
  • Received : 2011.11.17
  • Accepted : 2012.02.19
  • Published : 2012.03.01

Abstract

In order to deal with the classification problems of type-2 fuzzy training samples on generalized credibility space. Firstly the type-2 fuzzy training samples are reduced to ordinary fuzzy samples by the mean reduction method. Secondly the definition of strong fuzzy linear separable data for type-2 fuzzy samples on generalized credibility space is introduced. Further, by utilizing fuzzy chance-constrained programming and classic support vector machine, a support vector machine based on type-2 fuzzy training samples and established on generalized credibility space is given. An example shows the efficiency of the support vector machine.

Keywords

References

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Cited by

  1. A new support vector machine based on type-2 fuzzy samples vol.17, pp.11, 2013, https://doi.org/10.1007/s00500-013-1122-7