DocumentCode :
1448601
Title :
Data mapping by probabilistic modular networks and information-theoretic criteria
Author :
Wang, Yue ; Lin, Shang-Hung ; Li, Huai ; Kung, Sun-Yuan
Author_Institution :
Dept. of Electr. Eng. & Comput. Sci., Catholic Univ. of America, Washington, DC, USA
Volume :
46
Issue :
12
fYear :
1998
fDate :
12/1/1998 12:00:00 AM
Firstpage :
3378
Lastpage :
3397
Abstract :
The quantitative mapping of a database that represents a finite set of classified and/or unclassified data points may be decomposed into three distinctive learning tasks: (1) detection of the structure of each class model with locally mixture clusters; (2) estimation of the data distributions for each induced cluster inside each class; and (3) classification of the data into classes that realizes the data memberships. The mapping function accomplished by the probabilistic modular networks may then be constructed as the optimal estimator with respect to information theory, and each of the three tasks can be interpreted as an independent objective in real-world applications. We adapt a model fitting scheme that determines both the number and kernel of local clusters using information-theoretic criteria. The class distribution functions are then obtained by learning generalized Gaussian mixtures, where a soft classification of the data is performed by an efficient incremental algorithm. Further classification of the data is treated as a hard Bayesian detection problem, in particular, the decision boundaries between the classes are fine tuned by a reinforce or antireinforce supervised learning scheme. Examples of the application of this framework to medical image quantification, automated face recognition, and featured database analysis, are presented as well
Keywords :
Bayes methods; database theory; face recognition; image classification; information theory; learning (artificial intelligence); medical image processing; visual databases; antireinforce supervised learning; automated face recognition; classified data points; data classification; data distribution estimation; data mapping; data memberships; decision boundaries; distribution functions; efficient incremental algorithm; feature database analysis; hard Bayesian detection problem; information theory; information-theoretic criteria; kernel; learning generalized Gaussian mixtures; locally mixture clusters; mapping function; medical image quantification; model fitting scheme; optimal estimator; probabilistic modular networks; reinforce supervised learning; soft classification; unclassified data points; Bayesian methods; Biomedical imaging; Clustering algorithms; Distribution functions; Face recognition; Image databases; Information theory; Kernel; Spatial databases; Supervised learning;
fLanguage :
English
Journal_Title :
Signal Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1053-587X
Type :
jour
DOI :
10.1109/78.735311
Filename :
735311
Link To Document :
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