DocumentCode :
980503
Title :
Frequency-sensitive competitive learning for scalable balanced clustering on high-dimensional hyperspheres
Author :
Banerjee, Arindam ; Ghosh, Joydeep
Author_Institution :
Dept. of Electr. & Comput. Eng., Univ. of Texas, Austin, TX, USA
Volume :
15
Issue :
3
fYear :
2004
fDate :
5/1/2004 12:00:00 AM
Firstpage :
702
Lastpage :
719
Abstract :
Competitive learning mechanisms for clustering, in general, suffer from poor performance for very high-dimensional (>1000) data because of "curse of dimensionality" effects. In applications such as document clustering, it is customary to normalize the high-dimensional input vectors to unit length, and it is sometimes also desirable to obtain balanced clusters, i.e., clusters of comparable sizes. The spherical kmeans (spkmeans) algorithm, which normalizes the cluster centers as well as the inputs, has been successfully used to cluster normalized text documents in 2000+ dimensional space. Unfortunately, like regular kmeans and its soft expectation-maximization-based version, spkmeans tends to generate extremely imbalanced clusters in high-dimensional spaces when the desired number of clusters is large (tens or more). This paper first shows that the spkmeans algorithm can be derived from a certain maximum likelihood formulation using a mixture of von Mises-Fisher distributions as the generative model, and in fact, it can be considered as a batch-mode version of (normalized) competitive learning. The proposed generative model is then adapted in a principled way to yield three frequency-sensitive competitive learning variants that are applicable to static data and produced high-quality and well-balanced clusters for high-dimensional data. Like kmeans, each iteration is linear in the number of data points and in the number of clusters for all the three algorithms. A frequency-sensitive algorithm to cluster streaming data is also proposed. Experimental results on clustering of high-dimensional text data sets are provided to show the effectiveness and applicability of the proposed techniques.
Keywords :
maximum likelihood estimation; pattern clustering; unsupervised learning; balanced clustering; cluster streaming data; expectation maximization; frequency-sensitive competitive learning; high-dimensional hyperspheres; maximum likelihood formulation; scalable balanced clustering; spherical kmeans algorithm; text clustering; von Mises-Fisher distributions; Application software; Clustering algorithms; Clustering methods; Data visualization; Frequency; Hilbert space; Learning systems; Power capacitors; Scalability; Artificial Intelligence; Cluster Analysis;
fLanguage :
English
Journal_Title :
Neural Networks, IEEE Transactions on
Publisher :
ieee
ISSN :
1045-9227
Type :
jour
DOI :
10.1109/TNN.2004.824416
Filename :
1296696
Link To Document :
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