DocumentCode :
845798
Title :
Support vector learning for fuzzy rule-based classification systems
Author :
Chen, Yixin ; Wang, James Z.
Author_Institution :
Dept. of Comput. Sci. & Eng., Pennsylvania State Univ., University Park, PA, USA
Volume :
11
Issue :
6
fYear :
2003
Firstpage :
716
Lastpage :
728
Abstract :
To design a fuzzy rule-based classification system (fuzzy classifier) with good generalization ability in a high dimensional feature space has been an active research topic for a long time. As a powerful machine learning approach for pattern recognition problems, the support vector machine (SVM) is known to have good generalization ability. More importantly, an SVM can work very well on a high- (or even infinite) dimensional feature space. This paper investigates the connection between fuzzy classifiers and kernel machines, establishes a link between fuzzy rules and kernels, and proposes a learning algorithm for fuzzy classifiers. We first show that a fuzzy classifier implicitly defines a translation invariant kernel under the assumption that all membership functions associated with the same input variable are generated from location transformation of a reference function. Fuzzy inference on the IF-part of a fuzzy rule can be viewed as evaluating the kernel function. The kernel function is then proven to be a Mercer kernel if the reference functions meet a certain spectral requirement. The corresponding fuzzy classifier is named positive definite fuzzy classifier (PDFC). A PDFC can be built from the given training samples based on a support vector learning approach with the IF-part fuzzy rules given by the support vectors. Since the learning process minimizes an upper bound on the expected risk (expected prediction error) instead of the empirical risk (training error), the resulting PDFC usually has good generalization. Moreover, because of the sparsity properties of the SVMs, the number of fuzzy rules is irrelevant to the dimension of input space. In this sense, we avoid the "curse of dimensionality." Finally, PDFCs with different reference functions are constructed using the support vector learning approach. The performance of the PDFCs is illustrated by extensive experimental results. Comparisons with other methods are also provided.
Keywords :
fuzzy logic; fuzzy set theory; generalisation (artificial intelligence); parameter estimation; pattern classification; support vector machines; Mercer kernel; fuzzy classifiers; fuzzy inference; fuzzy rule; fuzzy rule-based classification systems; generalization ability; high-dimensional feature space; infinite dimensional feature space; kernel machines; machine learning; pattern recognition problems; positive definite fuzzy classifier; statistical learning theory; support vector learning; translation invariant kernel; Computer science; Fuzzy systems; Input variables; Kernel; Machine learning; Parameter estimation; Pattern classification; Pattern recognition; Support vector machine classification; Support vector machines;
fLanguage :
English
Journal_Title :
Fuzzy Systems, IEEE Transactions on
Publisher :
ieee
ISSN :
1063-6706
Type :
jour
DOI :
10.1109/TFUZZ.2003.819843
Filename :
1255410
Link To Document :
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