Sparse Representation Learning of Kernel Space Using the Kernel Relaxation Procedure

커널 이완절차에 의한 커널 공간의 저밀도 표현 학습

  • 류재홍 (여수대학교 컴퓨터공학과) ;
  • 정종철 (여수대학교 컴퓨터공학과)
  • Published : 2001.12.01

Abstract

In this paper, a new learning methodology for Kernel Methods is suggested that results in a sparse representation of kernel space from the training patterns for classification problems. Among the traditional algorithms of linear discriminant function(perceptron, relaxation, LMS(least mean squared), pseudoinverse), this paper shows that the relaxation procedure can obtain the maximum margin separating hyperplane of linearly separable pattern classification problem as SVM(Support Vector Machine) classifier does. The original relaxation method gives only the necessary condition of SV patterns. We suggest the sufficient condition to identify the SV patterns in the learning epochs. Experiment results show the new methods have the higher or equivalent performance compared to the conventional approach.

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