DocumentCode :
1129793
Title :
Regularized Linear Fuzzy Clustering and Probabilistic PCA Mixture Models
Author :
Honda, Katsuhiro ; Ichihashi, Hidetomo
Author_Institution :
Dept. of Comput. Sci. & Intelligent Syst., Osaka Prefecture Univ., Japan
Volume :
13
Issue :
4
fYear :
2005
Firstpage :
508
Lastpage :
516
Abstract :
Fuzzy c -means (FCM)-type fuzzy clustering approaches are closely related to Gaussian mixture models (GMMs) and EM-like algorithms have been used in FCM clustering with regularized objective functions. Especially, FCM with regularization by Kullback–Leibler information (KLFCM) is a fuzzy counterpart of GMMs. In this paper, we propose to apply probabilistic principal component analysis (PCA) mixture models to linear clustering following a discussion on the relationship between local PCA and linear fuzzy clustering. Although the proposed method is a kind of the constrained model of KLFCM, the algorithm includes the fuzzy c -varieties (FCV) algorithm as a special case, and the algorithm can be regarded as a modified FCV algorithm with regularization by K–L information. Numerical experiments demonstrate that the proposed clustering algorithm is more flexible than the maximum likelihood approaches and is useful for capturing local substructures properly.
Keywords :
Gaussian processes; pattern clustering; principal component analysis; probability; Gaussian mixture model; fuzzy c-means clustering; fuzzy c-varieties algorithm; probabilistic principal component analysis; regularized linear fuzzy clustering; Clustering algorithms; Data analysis; Fuzzy sets; Instruction sets; Iterative algorithms; Large-scale systems; Maximum likelihood estimation; Principal component analysis; Prototypes; Spatial databases; Clustering; fuzzy; principal component analysis; probabilistic mixture models;
fLanguage :
English
Journal_Title :
Fuzzy Systems, IEEE Transactions on
Publisher :
ieee
ISSN :
1063-6706
Type :
jour
DOI :
10.1109/TFUZZ.2004.840104
Filename :
1492403
Link To Document :
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