k-NN based Pattern Selection for Support Vector Classifiers

  • Shin Hyunjung (Department of Industrial Engineering, Seoul National University) ;
  • Cho Sungzoon (Department of Industrial Engineering, Seoul National University)
  • Published : 2002.05.01

Abstract

we propose a k-nearest neighbors(k-NN) based pattern selection method. The method tries to select the patterns that are near the decision boundary and that are correctly labeled. The simulations over synthetic data sets showed promising results: (1) By converting a non-separable problem to a separable one, the search for an optimal error tolerance parameter became unnecessary. (2) SVM training time decreased by two orders of magnitude without any loss of accuracy. (3) The redundant SVM were substantially reduced.

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