Knowledge restructuring in fuzzy TAM network

A TAM network (topographic attentive mapping network) is a biologically-motivated neural network. With the pruning algorithm, fuzzy rules are acquired from the TAM network structure. In the paper, the restructuring algorithm of fuzzy rules is discussed and the usefulness of the algorithm is illustrated.

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