Knoledge Base Incorporated with Neural Networks

  • G.Y. Lim (Taejon National Univirsity of Technology) ;
  • Lee, K.Y.. (Taejon National Univirsity of Technology) ;
  • E. H. Cho (Won Kwang University) ;
  • Baek, D. S (Won Kwang University) ;
  • Moon, S.R.. (Won Kwang University) ;
  • Kim, H. Y . (Won Kwang University)
  • Published : 1998.06.01

Abstract

Subsymbolic Knowledge processing is said to be changed states of networks constructed from small elements. subsymbolic systems also make it possible to use connectionist models for knowledge processing. Connectionist realization such modulus are modulus linked together for solving a given problem. We study using neural networks as distinct actions. The output vectors produced by the neural networks are consider as a new facts. These new facts are then processed to activate another networks or used in the current production rule, The production rule is applying knowledge stored in the knowledge base to make inference. After neural networks knowledge base is constructed and trained. We present a running sample of incorporating neural network knowledge base. We implement using rochester connectionist simulator. We suggest that incorporating neural network knowledge base. Therefore incorporated neural network knowledge base ensures a cleaner solution which results in better perfor s.

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