Abstract

A Pseudo-Outer Product based Fuzzy Neural Network using the Yager Rule of Inference called the POP-Yager FNN is proposed in this paper. The proposed POP-Yager FNN training consists of two phases: the fuzzy membership derivation phase using the Modified Learning Vector Quantization (MLVQ) method; and the rule identification phase using the novel one-pass LazyPOP learning algorithm. The proposed two-phase learning process effectively constructs the membership functions and identifies the fuzzy rules. Extensive experimental results based on the classification performance of the POP-Yager FNN using the Anderson's Iris data are presented for discussion. Results show that the POP-Yager FNN possesses excellent recall and generalization abilities.

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