DocumentCode :
1545645
Title :
Equivalence in knowledge representation: automata, recurrent neural networks, and dynamical fuzzy systems
Author :
Giles, C. Lee ; Omlin, Christian W. ; Thornber, Karvel K.
Author_Institution :
NEC Res. Inst., Princeton, NJ, USA
Volume :
87
Issue :
9
fYear :
1999
fDate :
9/1/1999 12:00:00 AM
Firstpage :
1623
Lastpage :
1640
Abstract :
Neurofuzzy systems-the combination of artificial neural networks with fuzzy logic-have become useful in many application domains. However, conventional neurofuzzy models usually need enhanced representation power for applications that require context and state (e.g., speech, time series prediction, control). Some of these applications can be readily modeled as finite state automata. Previously, it was proved that deterministic finite state automata (DFA) can be synthesized by or mapped into recurrent neural networks by directly programming the DFA structure into the weights of the neural network. Based on those results, a synthesis method is proposed for mapping fuzzy finite state automata (FFA) into recurrent neural networks. Furthermore, this mapping is suitable for direct implementation in very large scale integration (VLSI), i.e., the encoding of FFA as a generalization of the encoding of DFA in VLSI systems. The synthesis method requires FFA to undergo a transformation prior to being mapped into recurrent networks. The neurons are provided with an enriched functionality in order to accommodate a fuzzy representation of FFA states. This enriched neuron functionality also permits fuzzy parameters of FFA to be directly represented as parameters of the neural network. We also prove the stability of fuzzy finite state dynamics of the constructed neural networks for finite values of network weight and, through simulations, give empirical validation of the proofs. Hence, we prove various knowledge equivalence representations between neural and fuzzy systems and models of automata
Keywords :
deterministic automata; finite automata; fuzzy set theory; knowledge representation; recurrent neural nets; VLSI; deterministic finite state automata; dynamical fuzzy systems; fuzzy finite state automata; neurofuzzy systems; recurrent neural networks; synthesis method; Automata; Doped fiber amplifiers; Fuzzy neural networks; Fuzzy systems; Knowledge representation; Network synthesis; Neural networks; Power system modeling; Recurrent neural networks; Very large scale integration;
fLanguage :
English
Journal_Title :
Proceedings of the IEEE
Publisher :
ieee
ISSN :
0018-9219
Type :
jour
DOI :
10.1109/5.784244
Filename :
784244
Link To Document :
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