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A Study on Support Vectors of Least Squares Support Vector Machine

  • Seok, Kyungha (Department of Data Science, Institute of Basic Sciences, Inje University) ;
  • Cho, Daehyun (Department of Data Science, Institute of Basic Sciences, Inje University)
  • Published : 2003.12.01

Abstract

LS-SVM(Least-Squares Support Vector Machine) has been used as a promising method for regression as well as classification. Suykens et al.(2000) used only the magnitude of residuals to obtain SVs(Support Vectors). Suykens' method behaves well for homogeneous model. But in a heteroscedastic model, the method shows a poor behavior. The present paper proposes a new method to get SVs. The proposed method uses the variance of noise as well as the magnitude of residuals to obtain support vectors. Through the simulation study we justified excellence of our proposed method.

Keywords

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