DocumentCode
1213851
Title
Agglomerative Fuzzy K-Means Clustering Algorithm with Selection of Number of Clusters
Author
Li, Mark Junjie ; Ng, Michael K. ; Cheung, Yiu-Ming ; Huang, Joshua Zhexue
Author_Institution
Hong Kong Baptist Univ, Hong Kong
Volume
20
Issue
11
fYear
2008
Firstpage
1519
Lastpage
1534
Abstract
In this paper, we present an agglomerative fuzzy K-means clustering algorithm for numerical data, an extension to the standard fuzzy K-means algorithm by introducing a penalty term to the objective function to make the clustering process not sensitive to the initial cluster centers. The new algorithm can produce more consistent clustering results from different sets of initial clusters centers. Combined with cluster validation techniques, the new algorithm can determine the number of clusters in a data set, which is a well known problem in $k$-means clustering. Experimental results on synthetic data sets (2 to 5 dimensions, 500 to 5000 objects and 3 to 7 clusters), the BIRCH two-dimensional data set of 20000 objects and 100 clusters, and the WINE data set of 178 objects, 17 dimensions and 3 clusters from UCI, have demonstrated the effectiveness of the new algorithm in producing consistent clustering results and determining the correct number of clusters in different data sets, some with overlapping inherent clusters.
Keywords
fuzzy set theory; pattern clustering; agglomerative fuzzy K-means clustering; cluster validation; consistent clustering results; numerical data; objective function; penalty term; Clustering; Data mining; Mining methods and algorithms;
fLanguage
English
Journal_Title
Knowledge and Data Engineering, IEEE Transactions on
Publisher
ieee
ISSN
1041-4347
Type
jour
DOI
10.1109/TKDE.2008.88
Filename
4515866
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