DocumentCode :
3165427
Title :
A fuzzy-genetic system for rule extraction from support vector machines
Author :
Carraro, C.F.F. ; Vellasco, Marley ; Tanscheit, Ricardo
Author_Institution :
CEPEL - Electr. Power Res. Center, Rio de Janeiro, Brazil
fYear :
2013
fDate :
24-28 June 2013
Firstpage :
362
Lastpage :
367
Abstract :
Support vector machines (SVMs) are learning systems based on statistical learning theory that have been applied with excellent generalization performance to a variety of applications in classification and regression. However, as Artificial Neural Networks, SVM are black box models, that is, they do not explain the process by which a given result is attained. Some models that extract rules from trained SVM have already been proposed but the rules extracted from these methods use, in the antecedents, crisp intervals or functions, which greatly reduce the rule´s interpretability. Therefore, a fuzzy rule extraction method from trained SVM, called FREx_SVM, was previously developed, providing rules with good accuracy and coverage of the database. However, the classification performance of the extracted rules was usually much lower than the original SVMs. To improve this performance we have developed an extension of FREx-SVM, where the fuzzy sets are automatically tuned so to attain better classification performance without reducing the interpretability of the extracted fuzzy rules.
Keywords :
fuzzy set theory; neural nets; statistical analysis; support vector machines; SVM; artificial neural networks; black box models; fuzzy genetic system; fuzzy rule extraction method; learning systems; rule extraction; statistical learning theory; support vector machines; Accuracy; Fuzzy sets; Genetic algorithms; Input variables; Kernel; Optimization; Support vector machines;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
IFSA World Congress and NAFIPS Annual Meeting (IFSA/NAFIPS), 2013 Joint
Conference_Location :
Edmonton, AB
Type :
conf
DOI :
10.1109/IFSA-NAFIPS.2013.6608427
Filename :
6608427
Link To Document :
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