효과적인 패턴분할 방법에 의한 하이브리드 다중 컴포넌트 신경망 설계 및 학습

Hybrid multiple component neural netwrok design and learning by efficient pattern partitioning method

  • 박찬호 (경희대학교 전자계산공학과) ;
  • 이현수 (경희대학교 전자계산공학과)
  • 발행 : 1997.07.01

초록

In this paper, we propose HMCNN(hybrid multiple component neural networks) that enhance performance of MCNN by adapting new pattern partitioning algorithm which can cluster many input patterns efficiently. Added neural network performs similar learning procedure that of kohonen network. But it dynamically determine it's number of output neurons using algorithms that decide self-organized number of clusters and patterns in a cluster. The proposed network can effectively be applied to problems of large data as well as huge networks size. As a sresutl, proposed pattern partitioning network can enhance performance results and solve weakness of MCNN like generalization capability. In addition, we can get more fast speed by performing parallel learning than that of other supervised learning networks.

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