자기조직화 특성지도와 퍼지로직을 결합한 개선된 형태의 퍼지근사추론에 관한 연구

An Improved Method of Method of Fuzzy Approximate Reasoning by Combining Self-Organizing Feature Map and Fuzzy Logic

  • 발행 : 1998.03.01

초록

This paper proposes a new type of fuzzy approximate reasoning method that combines a self organizing feature map and a fuzzy logic. Previous methods considered only input part to determine the number of fuzzy rules, while this paper considers both input and output parts simultaneously. Our approach proved to improve the inference performance. We also developed a new index for avoiding overlearning which guarantees more accurate results. Experimental results showed that our approach surpasses the performance of Takagi & Hayashi (1991) approach.

키워드

참고문헌

  1. Rule-based export systems Buchanan, B.G.;Shortliffe, S.H.
  2. Proc. of Int'l Joint Conf. on Neural Networks v.1 Hierarchical Intelligent Control for Robotic Motion by Using Fuzzy, Artificial Intelligence, and Neural Network Fukuda, T.;Shibata, T.
  3. Expert Systems: Principles and Programming Giarratano, J.;Riley, G.
  4. Fuzzy Sets and Systems v.40 Fuzzy logic in commercial expert systems- results and prospects Graham, I.
  5. IEEE International Conference on Fuzzy Systems Fuzzy Controller Design without Domain Expert Jang,J.-S. R.
  6. Proceedings of the IEEE v.78 no.9 Self-Organizing Map Kohonen, T.
  7. Expert Systems v.6 Applications of a Novel fuzzy expert system shell Leung, K.S.;Wong, W.S.F.;Lam, W.
  8. Bull. Math. Biophys. v.5 A logical calculus of the ideas imminent in nervous activity McCulloch, W.S.;Pitts, W.
  9. Proc. of IJCNN'92 Knowledge Acquisition of Strategy and Tactics Using Fuzzy Neural Networks Nakayama, S.;Horikawa, S.;Furuhashi, T.;Uchikawa, Y.
  10. Expert systems and fuzzy systems Negoita, C.V.
  11. Expert Systems for Business: Concepts and Applications Pigford, D.V.;Baur, G.
  12. Pshychol. Rev. v.65 no.6 The perception: a probabilistic model for information storage and organization in the brain Rosenblatt, F.
  13. Parallel Distributed Processing v.1 Learning internal representation by error propagatio Rumelhart, D.;Hinton, S.S.;Williams, R.
  14. Expert Systems for Business Silverman, B.G.
  15. Int'l Journal of Approximate Reasoning v.5 NN-Driven FuzzyReasonig Takagi, H.;I. Hayashi k.
  16. A guide to expert systems Waterman, D.A.
  17. Fuzzy sets. Information and Control. v.8 no.3 Zadeh, L.A.
  18. IEEE Transactions on Systems, Man and Cybernetics v.3 Outline of a new approach to the analysis of complex systems and decision processes Zadeh, L.A.
  19. Fuzzy Sets and Systems v.11 The role of fuzzy logic in the management of uncertainty in expert systems Zadeh, L.A.
  20. Artificial Neural Networks Fusion-technology and the design of evolutionay machines for neural networks Zaus, M.;Megent, R.