DocumentCode :
1797576
Title :
Shrank Support Vector Clustering
Author :
Ping Ling ; Xiangsheng Rong ; Guosheng Hao ; Yongquan Dong
Author_Institution :
Coll. of Comput. Sci. & Technol., Jiangsu Normal Univ., Xuzhou, China
fYear :
2014
fDate :
6-11 July 2014
Firstpage :
452
Lastpage :
459
Abstract :
Compared with Support Vector Machine (SVM) that has shown success in classification tasks, Support Vector Clustering (SVC) is not widely viewed as a competitor to popular clustering algorithms. The reason is easy to state that classical SVC is of high cost and moderate performance. In spite of ever-appearing variants of SVC, they fail in solving two problems well. Focusing on these two problems, this paper proposes a Shrunk Support Vector Clustering (SSVC) algorithm that makes an effort to address two difficulties simultaneously. In the optimization piece SSVC pursues a shrunk hypersphere in feature space that only dense-region data are included in. In the labeling piece of SSVC, a new labeling approach is designed to cluster support vectors firstly, and then label other data. The development of the shrunk hypersphere is implemented by optimizing a strongly convex objective, which can be converted to a linear equation system. A fast training method is given to reduce the heavy computation burden that is necessary in SVC to solve a quadratic optimization problem. The new labeling approach is based on geometric nature of the shrunk model and works in a simple but informed way. That removes the randomness encoded in SVC labeling piece and then improves clustering accuracy. Experiments indicate SSVC´s better performance and efficiency than its peers and much appealing facility compared with the state of the art.
Keywords :
convex programming; pattern classification; pattern clustering; quadratic programming; support vector machines; SSVC algorithm; SVC labeling piece; SVM; classification task; convex objective optimization; dense-region data; feature space; labeling approach; linear equation system; quadratic optimization problem; shrank support vector clustering; shrunk hypersphere; support vector machine; training method; Kernel; Labeling; Matrix decomposition; Optimization; Static VAr compensators; Support vector machines; Training; fast training method; geometric propertie; shrunk hyperplane; shrunk hypersphere;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Neural Networks (IJCNN), 2014 International Joint Conference on
Conference_Location :
Beijing
Print_ISBN :
978-1-4799-6627-1
Type :
conf
DOI :
10.1109/IJCNN.2014.6889518
Filename :
6889518
Link To Document :
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