A kernel fuzzy c-means clustering based fuzzy support vector machine algorithm for classification problems with outliers or noises

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dc.contributor.author Yang Xiaowei en_US
dc.contributor.author Zhang Guangquan en_US
dc.contributor.author Lu Jie en_US
dc.contributor.author Ma Jun en_US
dc.contributor.editor en_US
dc.date.accessioned 2012-10-12T03:32:49Z
dc.date.available 2012-10-12T03:32:49Z
dc.date.issued 2011 en_US
dc.identifier 2011001009 en_US
dc.identifier.citation Yang Xiaowei et al. 2011, 'A kernel fuzzy c-means clustering based fuzzy support vector machine algorithm for classification problems with outliers or noises', IEEE, vol. 19, no. 1, pp. 105-115. en_US
dc.identifier.issn 1063-6706 en_US
dc.identifier.other C1 en_US
dc.identifier.uri http://hdl.handle.net/10453/17946
dc.description.abstract The support vector machine (SVM) has provided higher performance than traditional learning machines and has been widely applied in real-world classification problems and nonlinear function estimation problems. Unfortunately, the training process of the SVM is sensitive to the outliers or noises in the training set. In this paper, a common misunderstanding of Gaussianfunction- based kernel fuzzy clustering is corrected, and a kernel fuzzy c-means clustering-based fuzzy SVM algorithm (KFCMFSVM) is developed to deal with the classification problems with outliers or noises. In the KFCM-FSVM algorithm, we first use the FCM clustering to cluster each of two classes from the training set in the high-dimensional feature space. The farthest pair of clusters, where one cluster comes from the positive class and the other from the negative class, is then searched and forms one new training set with membership degrees. Finally, we adopt FSVM to induce the final classification results on this new training set. The computational complexity of the KFCM-FSVM algorithm is analyzed. A set of experiments is conducted on six benchmarking datasets and four artificial datasets for testing the generalization performance of the KFCM-FSVM algorithm. The results indicate that the KFCM-FSVM algorithm is robust for classification problems with outliers or noises. en_US
dc.language English en_US
dc.publisher IEEE en_US
dc.relation.isbasedon http://dx.doi.org/10.1109/TFUZZ.2010.2087382 en_US
dc.title A kernel fuzzy c-means clustering based fuzzy support vector machine algorithm for classification problems with outliers or noises en_US
dc.parent IEEE Transactions on Fuzzy Systems en_US
dc.journal.volume 19 en_US
dc.journal.number 1 en_US
dc.publocation USA en_US
dc.identifier.startpage 105 en_US
dc.identifier.endpage 115 en_US
dc.cauo.name FEIT.School of Software en_US
dc.conference Verified OK en_US
dc.for 010200 en_US
dc.personcode 0000035940;020014;001038;999403 en_US
dc.percentage 000034 en_US
dc.classification.name Applied Mathematics en_US
dc.classification.type FOR-08 en_US
dc.edition en_US
dc.custom en_US
dc.date.activity en_US
dc.location.activity en_US
dc.description.keywords image segmentation; accuracy statistics; validity index; feature space; svm; authentication; categorization; improvements; models en_US
dc.staffid en_US


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