DocumentCode
871920
Title
Refinement of generated fuzzy production rules by using a fuzzy neural network
Author
Tsang, Eric C C ; Yeung, Daniel S. ; Lee, John W T ; Huang, D.M. ; Wang, X.Z.
Author_Institution
Dept. of Comput., Hong Kong Polytech. Univ., China
Volume
34
Issue
1
fYear
2004
Firstpage
409
Lastpage
418
Abstract
Fuzzy production rules (FPRs) have been used for years to capture and represent fuzzy, vague, imprecise and uncertain domain knowledge in many fuzzy systems. There have been a lot of researches on how to generate or obtain FPRs. There exist two methods to obtain FPRs. One is by painstakingly, repeatedly and time-consuming interviewing domain experts to extract the domain knowledge. The other is by using some machine learning techniques to generate and extract FPRs from some training samples. These extracted rules, however, are found to be nonoptimal and sometimes redundant. Furthermore, these generated rules suffer from the problem of low accuracy of classifying or recognizing unseen examples. The reasons for having these problems are: 1) the FPRs generated are not powerful enough to represent the domain knowledge, 2) the techniques used to generate FPRs are pre-matured, ad-hoc or may not be suitable for the problem, and 3) further refinement of the extracted rules has not been done. In this paper we look into the solutions of the above problems by 1) enhancing the representation power of FPRs by including local and global weights, 2) developing a fuzzy neural network (FNN) with enhanced learning algorithm, and 3) using this FNN to refine the local and global weights of FPRs. By experimenting our method with some existing benchmark examples, the proposed method is found to have high accuracy in classifying unseen samples without increasing the number of the FPRs extracted and the time required to consult with domain experts is greatly reduced.
Keywords
fuzzy neural nets; fuzzy systems; knowledge acquisition; knowledge based systems; knowledge representation; learning (artificial intelligence); fuzzy neural network; fuzzy production rules; fuzzy systems; machine learning techniques; uncertain domain knowledge; Automatic control; Fuzzy control; Fuzzy logic; Fuzzy neural networks; Fuzzy systems; Induction generators; Machine learning; Power generation; Production; Refining;
fLanguage
English
Journal_Title
Systems, Man, and Cybernetics, Part B: Cybernetics, IEEE Transactions on
Publisher
ieee
ISSN
1083-4419
Type
jour
DOI
10.1109/TSMCB.2003.817033
Filename
1262513
Link To Document