Genetic Type-2 Fuzzy Classifier Functions
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Date
2008
Authors
Türkşen, İsmail Burhan
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Volume Title
Publisher
IEEE
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Abstract
A new type-2 fuzzy classifier function system is proposed for uncertainty modeling using genetic algorithms GT2FCF. Proposed method implements a three-phase learning strategy to capture the uncertainties in fuzzy classifier function systems induced by learning parameters, as well as fuzzy classifier functions. Hidden structures are captured with the implementation of improved fuzzy clustering. The optimum uncertainty interval of the type-2 fuzzy membership values are captured with a genetic learning algorithm. The results of the experiments show that the GT2FCF is comparable - if not superior- to well-known benchmark methods in terms of area under the receiver operating curve (AUC) performance measure.
Description
Keywords
type-2 fuzzy functions, classification, genetic algorithms
Turkish CoHE Thesis Center URL
Fields of Science
Citation
Annual Meeting of the North-American-Fuzzy-Information-Processing-Society -- MAY 19-22, 2008 -- New York, NY
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N/A
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Source
2008 Annual Meeting of The North American Fuzzy Information Processing Society, Vols 1 And 2
Volume
Issue
Start Page
109
End Page
114
SCOPUS™ Citations
4
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Page Views
514
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