Fuzzy ARTMAP 신경회로망의 패턴 인식율 개선에 관한 연구

A study on the improvement of fuzzy ARTMAP for pattern recognition problems

  • 이재설 (서울대학교 전기공학과) ;
  • 전종로 (동양공업전문대학 전산사무자동화과) ;
  • 이충웅 (서울대학교 전기공학과)
  • 발행 : 1996.09.01

초록

In this paper, we present a new learning method for the fuzzy ARTMAP which is effective for the noisy input patterns. Conventional fuzzy ARTMAP employs only fuzzy AND operation between input vector and weight vector in learning both top-down and bottom-up weight vectors. This fuzzy AND operation causes excessive update of the weight vector in the noisy input environment. As a result, the number of spurious categories are increased and the recognition ratio is reduced. To solve these problems, we propose a new method in updating the weight vectors: the top-down weight vectors of the fuzzy ART system are updated using weighted average of the input vector and the weight vector itself, and the bottom-up weight vectors are updated using fuzzy AND operation between the updated top-down weitht vector and bottom-up weight vector itself. The weighted average prevents the excessive update of the weight vectors and the fuzzy AND operation renders the learning fast and stble. Simulation results show that the proposed method reduces the generation of spurious categories and increases the recognition ratio in the noisy input environment.

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