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Article
Neural fuzzy systems: A tutorial and an application.
USF St. Petersburg campus Faculty Publications
  • Mark I. Hwang
  • Jerry W. Lin, University of South Florida St. Petersburg
SelectedWorks Author Profiles:

Wenshan Lin

Document Type
Article
Publication Date
2000
Disciplines
Abstract

Fuzzy logic has gained tremendous popularity in recent years as its applications are found in areas ranging from consumer products to industrial process control and portfolio management. Along with neural networks and genetic algorithms, fuzzy logic constitutes three cornerstones of "soil computing." Unlike the traditional or hard computing, soil computing strives to model the pervasive imprecision of the real world Solutions derived from soft computing are generally more robust, flexible, and economical. In addition, constituent technologies of soil computing are generally complementary rather than competitive. As a result, many hybrid systems have been proposed to integrate these complementary technologies. This study reviews fuzzy logic and neural networks and illustrates how they can he integrated to provide a better solution. In an empirical test, the integrated neural fuzzy system significantly outperformed a traditional statistical model in predicting pension accounting adoption choices.

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Publisher
Taylor & Francis
Creative Commons License
Creative Commons Attribution-Noncommercial-No Derivative Works 4.0
Citation Information
Hwang, M.I. & Lin, J.W. (2000). Neural fuzzy systems: A tutorial and an application. Journal of Computer Information Systems, 40(4), 27-31. doi: 10.1080/08874417.2000.11647465