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                                       Details for article 6 of 6 found articles
 
 
  Integrating rough set theory and fuzzy neural network to discover fuzzy rules
 
 
Title: Integrating rough set theory and fuzzy neural network to discover fuzzy rules
Author: Shi-tong Wang
Dong-jun Yu
Jing-yu Yang
Appeared in: Intelligent data analysis
Paging: Volume 7 (2003) nr. 1 pages 59-73
Year: 2003-03-27
Contents: Most of fuzzy systems use the complete combination rule set based on partitions to discover the fuzzy rules, thus often resulting in low capability of generalization and high computational complexity. To large extent, the reason originates from the fact that such fuzzy systems do not utilize the field knowledge contained in data. In this paper, based on rough set theory, a new generalized incremental rule extraction algorithm (GIREA) is presented to extract rough domain knowledge, namely, certain and possible rules. Then, fuzzy neural network FNN is used to refine the obtained rules and further produce the fuzzy rule set. Our approach and experimental results demonstrate the superiority in both rule's length and the number of fuzzy rules.
Publisher: IOS Press
Source file: Elektronische Wetenschappelijke Tijdschriften
 
 

                             Details for article 6 of 6 found articles
 
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