DocumentCode :
945764
Title :
An adaptive nonparametric linear classifier
Author :
Wassel, Gustav N. ; Sklansky, Jack
Author_Institution :
California State Polytechnic University, Pomona, CA
Volume :
64
Issue :
8
fYear :
1976
Firstpage :
1162
Lastpage :
1171
Abstract :
The equalized-error ("EE") training procedure, introduced in this paper, is a new nonparametric training procedure for linear classifiers in a multiple-feautre stochastic environment. This procedure is a form of stochastic approximation that minimizes the sum of the expected normalized first moments of the fasely classified pattern vectors about the decision hyperplane. This sum is the "EE loss function." The minimization is achived by a simply implemented recursive equation. We show that the sequence of decision hyperplanes generated by this recursive equation converges in mean square and with probability one to a hyperplane that minimizes the EE loss function. We provide premiliminary qualitative and quantitative evidence that the EE training procedure converges rapidly and achives low asymptotic error probabilities over a wide range of overlapping pairs of class densities and nonlinearly separable pairs of class densities.
Keywords :
Artificial satellites; Biomedical engineering; Communication systems; Equations; Helium; Medical diagnosis; Photography; Public healthcare; Reconnaissance; Satellite navigation systems;
fLanguage :
English
Journal_Title :
Proceedings of the IEEE
Publisher :
ieee
ISSN :
0018-9219
Type :
jour
DOI :
10.1109/PROC.1976.10287
Filename :
1454556
Link To Document :
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