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Application of neural networks incorporated with real-valued genetic algorithms in knowledge acquisition

✍ Scribed by Mu-Chun Su; Hsiao-Te Chang


Book ID
104292932
Publisher
Elsevier Science
Year
2000
Tongue
English
Weight
220 KB
Volume
112
Category
Article
ISSN
0165-0114

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✦ Synopsis


Often a major di culty in the design of rule-based systems is the process of acquiring the requisite knowledge in the form of If-Then rules. This paper presents a class of fuzzy degraded hyperellipsoidal composite neural networks (FDHECNNs) that are trained to provide appealing solutions to the problem of knowledge acquisition. The values of the network parameters, after su cient training, are then utilized to generate If-Then rules on the basis of preselected meaningful features. In order to avoid the risk of getting stuck in local minima during the training process, a real-valued genetic algorithm is proposed to train FDHECNNs. The e ectiveness of the method is demonstrated on two problems, namely, the "truck backer-upper" problem as well as real-world application of a hypothesis regarding the pathophysiology of diabetes.


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