Title
Differential evolution fuzzy clustering algorithm based on kernel methods
Abstract
A new fuzzy clustering algorithm is proposed. By using kernel methods, this paper maps the data in the original space into a high-dimensional feature space in which a fuzzy dissimilarity matrix is constructed. It not only accurately reflects the difference of attributes among classes, but also maps the difference among samples in the high-dimensional feature space into the two-dimensional plane. Using the particularity of strong global search ability and quickly converging speed of Differential Evolution (DE) algorithms, it optimizes the coordinates of the samples distributed randomly on a plane. The clustering for random distributing shapes of samples is realized. It not only overcomes the dependence of clustering validity on the space distribution of samples, but also improves the flexibility of the clustering and the visualization of high-dimensional samples. Numerical experiments show the effectiveness of the proposed algorithm
Year
DOI
Venue
2006
10.1007/11795131_62
RSKT
Keywords
Field
DocType
differential evolution,clustering validity,space distribution,new fuzzy clustering algorithm,fuzzy dissimilarity matrix,kernel method,high-dimensional sample,two-dimensional plane,original space,proposed algorithm,high-dimensional feature space,fuzzy clustering,kernel methods,feature space
Fuzzy clustering,CURE data clustering algorithm,Computer science,FLAME clustering,Artificial intelligence,Cluster analysis,Single-linkage clustering,Canopy clustering algorithm,Data stream clustering,Pattern recognition,Correlation clustering,Algorithm,Machine learning
Conference
Volume
ISSN
ISBN
4062
0302-9743
3-540-36297-5
Citations 
PageRank 
References 
2
0.37
8
Authors
6
Name
Order
Citations
PageRank
Libiao Zhang1347.03
Ming Ma2103.46
Xiaohua Liu3182.16
Caitang Sun491.74
Miao Liu561.25
Chunguang Zhou654352.37