DocumentCode :
3010250
Title :
Feature selection for nonlinear stochastic system classification
Author :
Hofstadter, R. ; Saridis, G.N.
Author_Institution :
TRW, Redondo Beach, California, USA
fYear :
1975
fDate :
10-12 Dec. 1975
Firstpage :
507
Lastpage :
512
Abstract :
A decision-theoretic formulation is given for the problem of classifying an unknown nonlinear stochastic system into one of M classes when only input-output measurements are available. This leads directly to a pattern recognition solution for the problem, and Bayes-risk theory yields the likelihood-ratio test for class determinations. Parameterizations which yield an implicit description for unknown nonlinear systems are considered, and the theoretical likelihood ratio is related to these parameterizations. The difficult problem of initial feature selection is considered in terms of a parameter vector, and in terms of a quasi-moment expansion, both of which require no a priori knowledge of the system. Experimental results are also cited which show that classification can be accomplished with a low probability of error, and analogies with other classification problems are noted.
Keywords :
Area measurement; Stochastic systems;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Decision and Control including the 14th Symposium on Adaptive Processes, 1975 IEEE Conference on
Conference_Location :
Houston, TX, USA
Type :
conf
DOI :
10.1109/CDC.1975.270743
Filename :
4045470
Link To Document :
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