DocumentCode
1462773
Title
Self-organizing mixture networks for probability density estimation
Author
Yin, Hujun ; Allinson, Nigel M.
Author_Institution
Dept. of Electr. Eng. & Electron., Univ. of Manchester Inst. of Sci. & Technol., UK
Volume
12
Issue
2
fYear
2001
fDate
3/1/2001 12:00:00 AM
Firstpage
405
Lastpage
411
Abstract
A self-organizing mixture network (SOMN) is derived for learning arbitrary density functions. The network minimizes the Kullback-Leibler information metric by means of stochastic approximation methods. The density functions are modeled as mixtures of parametric distributions. A mixture needs not to be homogenous, i.e., it can have different density profiles. The first layer of the network is similar to Kohonen´s self-organizing map (SOM), but with the parameters of the component densities as the learning weights. The winning mechanism is based on maximum posterior probability, and updating of the weights is limited to a small neighborhood around the winner. The second layer accumulates the responses of these local nodes, weighted by the learned mixing parameters. The network possesses a simple structure and computational form, yet yields fast and robust convergence. The network has a generalization ability due to the relative entropy criterion used. Applications to density profile estimation and pattern classification are presented. The SOMN can also provide an insight to the role of neighborhood function used in the SOM
Keywords
approximation theory; convergence; entropy; generalisation (artificial intelligence); minimisation; pattern classification; probability; self-organising feature maps; stochastic processes; Kullback-Leibler information metric minimization; SOM; SOMN; arbitrary density functions; density profile estimation; fast robust convergence; generalization ability; maximum posterior probability; neighborhood function; parametric distributions; pattern classification; probability density estimation; relative entropy criterion; self-organizing map; self-organizing mixture networks; stochastic approximation methods; Approximation methods; Computer networks; Convergence; Density functional theory; Entropy; Histograms; Maximum likelihood estimation; Pattern classification; Robustness; Stochastic processes;
fLanguage
English
Journal_Title
Neural Networks, IEEE Transactions on
Publisher
ieee
ISSN
1045-9227
Type
jour
DOI
10.1109/72.914534
Filename
914534
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