DocumentCode
1116649
Title
An Approximate Solution to Normal Mixture Identification with Application to Unsupervised Pattern Classification
Author
Postaire, Jack-Gerard ; Vasseur, Christian P.A.
Author_Institution
MEMBER, IEEE, Laboratoire d´´Electronique et d´´Etude des Systemes Automatiques, Faculté des Sciences, Rabat, Morocco.
Issue
2
fYear
1981
fDate
3/1/1981 12:00:00 AM
Firstpage
163
Lastpage
179
Abstract
In this paper, an approach to unsupervised pattern classifiation is discussed. The classification scheme is based on an approximation of the probability densities of each class under the assumption that the input patterns are of a normal mixture. The proposed technique for identifying the mixture does not require prior information. The description of the mixture in terms of convexity allows to determine, from a totally unlabeled set of samples, the number of components and, for each of them, approximate values of the mean vector, the covariance matrix, and the a priori probability. Discriminant functions can then be constructed. Computer simulations show that the procedure yields decision rules whose performances remain close to the optimum Bayes minimum error-rate, while involving only a small amount of computation.
Keywords
Computer errors; Computer simulation; Covariance matrix; Density functional theory; Gravity; Pattern analysis; Pattern classification; Probability; Statistics; Testing; Convexity; minimum error-rate classification; normal mixture identification; unsupervised classification;
fLanguage
English
Journal_Title
Pattern Analysis and Machine Intelligence, IEEE Transactions on
Publisher
ieee
ISSN
0162-8828
Type
jour
DOI
10.1109/TPAMI.1981.4767074
Filename
4767074
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