Quasi optimization of fuzzy neural networks

Rita Lovassy, L. Kóczy, László Gál

Research output: Chapter in Book/Report/Conference proceedingConference contribution

1 Citation (Scopus)

Abstract

The fuzzy flip-flop based multilayer perceptron, named Fuzzy Neural Network, FNN is proposed for function approximation. In recent years much effort has been made for the development of a special kind of bacterial memetic algorithm for optimization and training of the fuzzy neural network parameters. In this approach the FNN parameters have been encoded in a chromosome and participate in the bacterial mutation cycle. The quasi optimized FNN's performance based on various fuzzy flip-flop types has been examined with a series of multidimensional input functions.

Original languageEnglish
Title of host publication10th International Symposium of Hungarian Researchers on Computational Intelligence and Informatics, CINTI 2009
Pages303-314
Number of pages12
Publication statusPublished - 2009
Event10th International Symposium of Hungarian Researchers on Computational Intelligence and Informatics, CINTI 2009 - Budapest, Hungary
Duration: Nov 12 2009Nov 14 2009

Other

Other10th International Symposium of Hungarian Researchers on Computational Intelligence and Informatics, CINTI 2009
CountryHungary
CityBudapest
Period11/12/0911/14/09

Fingerprint

Flip flop circuits
Fuzzy neural networks
Multilayer neural networks
Chromosomes

Keywords

  • Bacterial memetic algorithm
  • Fuzzy flip-flops
  • Fuzzy neural network

ASJC Scopus subject areas

  • Artificial Intelligence
  • Information Systems

Cite this

Lovassy, R., Kóczy, L., & Gál, L. (2009). Quasi optimization of fuzzy neural networks. In 10th International Symposium of Hungarian Researchers on Computational Intelligence and Informatics, CINTI 2009 (pp. 303-314)

Quasi optimization of fuzzy neural networks. / Lovassy, Rita; Kóczy, L.; Gál, László.

10th International Symposium of Hungarian Researchers on Computational Intelligence and Informatics, CINTI 2009. 2009. p. 303-314.

Research output: Chapter in Book/Report/Conference proceedingConference contribution

Lovassy, R, Kóczy, L & Gál, L 2009, Quasi optimization of fuzzy neural networks. in 10th International Symposium of Hungarian Researchers on Computational Intelligence and Informatics, CINTI 2009. pp. 303-314, 10th International Symposium of Hungarian Researchers on Computational Intelligence and Informatics, CINTI 2009, Budapest, Hungary, 11/12/09.
Lovassy R, Kóczy L, Gál L. Quasi optimization of fuzzy neural networks. In 10th International Symposium of Hungarian Researchers on Computational Intelligence and Informatics, CINTI 2009. 2009. p. 303-314
Lovassy, Rita ; Kóczy, L. ; Gál, László. / Quasi optimization of fuzzy neural networks. 10th International Symposium of Hungarian Researchers on Computational Intelligence and Informatics, CINTI 2009. 2009. pp. 303-314
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