Multiple component neural network architecture design and learning by using PCA

PCA를 이용한 다중 컴포넌트 신경망 구조설계 및 학습

  • 박찬호 (경희대학교 전자계산공학과) ;
  • 이현수 (경희대학교 전자계산공학과)
  • Published : 1996.10.01

Abstract

In this paper, we propose multiple component neural network(MCNN) which learn partitioned patterns in each multiple component neural networks by reducing dimensions of input pattern vector using PCA (principal component analysis). Procesed neural network use Oja's rule that has a role of PCA, output patterns are used a slearning patterns on small component neural networks and we call it CBP. For simply not solved patterns in a network, we solves it by regenerating new CBP neural networks and by performing dynamic partitioned pattern learning. Simulation results shows that proposed MCNN neural networks are very small size networks and have very fast learning speed compared with multilayer neural network EBP.

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