DocumentCode
910453
Title
Optimal unsupervised learning multicategory dependent hypotheses pattern recognition
Author
Hilborn, Charles G., Jr. ; Lainiotis, Demetrios G.
Volume
14
Issue
3
fYear
1968
fDate
5/1/1968 12:00:00 AM
Firstpage
468
Lastpage
470
Abstract
A Bayesian decision theory approach is applied to the solution of the problem of unsupervised parametric pattern recognition. The parametric model for this investigation includes the cases where both constant and time-varying unknown parameters are present, and, most significantly, the unknown hypotheses do not constitute a statistically independent sequence. They are restricted only to be from a source with finite-order Markov dependence. The resulting optimal learning system is found and shown to grow initially in size and memory until the
th observation (where
is the highest Markov order), and subsequently to remain of fixed size and memory. It can, therefore, operate indefinitely and continue to improve its ability to recognize patterns utilizing only a fixed size memory. In summary, the main contributions of this paper are the following: begin{enumerate} item the extension of previous investigations of the unsupervised parametric pattern recognition problem to include cases where both constant and time-varying unknown parameter vectors are simultaneously present; item that the a priori probabilities of the hypotheses, the time-varying parameters, and their transition laws may, if constant, be expressed as functions of the constant unknown parameter and, thus, also be learned; and item the removal of the assumption of statistical independence between hypotheses for the sequence of observations. end{enumerate}
th observation (where
is the highest Markov order), and subsequently to remain of fixed size and memory. It can, therefore, operate indefinitely and continue to improve its ability to recognize patterns utilizing only a fixed size memory. In summary, the main contributions of this paper are the following: begin{enumerate} item the extension of previous investigations of the unsupervised parametric pattern recognition problem to include cases where both constant and time-varying unknown parameter vectors are simultaneously present; item that the a priori probabilities of the hypotheses, the time-varying parameters, and their transition laws may, if constant, be expressed as functions of the constant unknown parameter and, thus, also be learned; and item the removal of the assumption of statistical independence between hypotheses for the sequence of observations. end{enumerate}Keywords
Bayes procedures; Learning procedures; Markov processes; Pattern classification; Adaptive systems; Bayesian methods; Decision theory; Learning systems; Markov processes; Parameter estimation; Parametric statistics; Pattern recognition; Probability; Unsupervised learning;
fLanguage
English
Journal_Title
Information Theory, IEEE Transactions on
Publisher
ieee
ISSN
0018-9448
Type
jour
DOI
10.1109/TIT.1968.1054143
Filename
1054143
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