DocumentCode
1263881
Title
Self-splitting competitive learning: a new on-line clustering paradigm
Author
Zhang, Ya-Jun ; Liu, Zhi-Qiang
Author_Institution
Dept. of Comput. Sci. & Software Eng., Univ. of Melbourne, Vic., Australia
Volume
13
Issue
2
fYear
2002
fDate
3/1/2002 12:00:00 AM
Firstpage
369
Lastpage
380
Abstract
Clustering in the neural-network literature is generally based on the competitive learning paradigm. The paper addresses two major issues associated with conventional competitive learning, namely, sensitivity to initialization and difficulty in determining the number of prototypes. In general, selecting the appropriate number of prototypes is a difficult task, as we do not usually know the number of clusters in the input data a priori. It is therefore desirable to develop an algorithm that has no dependency on the initial prototype locations and is able to adaptively generate prototypes to fit the input data patterns. We present a new, more powerful competitive learning algorithm, self-splitting competitive learning (SSCL), that is able to find the natural number of clusters based on the one-prototype-take-one-cluster (OPTOC) paradigm and a self-splitting validity measure. It starts with a single prototype randomly initialized in the feature space and splits adaptively during the learning process until all clusters are found; each cluster is associated with a prototype at its center. We have conducted extensive experiments to demonstrate the effectiveness of the SSCL algorithm. The results show that SSCL has the desired ability for a variety of applications, including unsupervised classification, curve detection, and image segmentation
Keywords
image segmentation; pattern clustering; unsupervised learning; initialization; one-prototype-take-one-cluster paradigm; online clustering paradigm; prototypes; self-splitting competitive learning; self-splitting validity measure; sensitivity; unsupervised learning; winner-take-all; Clustering algorithms; Fuzzy logic; Image segmentation; Neurons; Parametric statistics; Probability; Prototypes; Resonance; Subspace constraints; Unsupervised learning;
fLanguage
English
Journal_Title
Neural Networks, IEEE Transactions on
Publisher
ieee
ISSN
1045-9227
Type
jour
DOI
10.1109/72.991422
Filename
991422
Link To Document