Incremental Adaptive Aearning Algorithm with Initial Generic Knowledge

초기 일반 지식을 갖고 있는 점증 적응 학습 알고리즘

  • 오규환 (서울대학교 반도체공동연구소 및 전자공학과) ;
  • 채수익 (서울대학교 반도체공동연구소 및 전자공학과)
  • Published : 1996.02.01

Abstract

This paper introduces the concept of fixed weights and proposes an algorithm for classification by adding this concept to vector space separation method in LVQ. The proposed algorithm is based on competitive learning. It uses fixed weightsfor generality and fast adaptation efficient radius for new weight creation, and L1 distance for fast calcualtion. It can be applied to many fields requiring adaptive learning with the support of generality, real-tiem processing and sufficient training effect using smaller data set. Recognition rate of over 98% for the train set and 94% for the test set was obtained by applying the suggested algorithm to on-line handwritten recognition.

Keywords