DocumentCode :
1079304
Title :
Classification algorithms in pattern recognition
Author :
Nagy, George
Author_Institution :
IBM Watson Research Center, Yorktown Heights, NY
Volume :
16
Issue :
2
fYear :
1968
fDate :
6/1/1968 12:00:00 AM
Firstpage :
203
Lastpage :
212
Abstract :
Linear and nonlinear methods of pattern classification which have been found useful in laboratory investigations of various recognition tasks are reviewed. The discussion includes correlation methods, maximum likelihood formulations with independence or normality assumptions, the minimax Anderson-Bahadur formula, trainable systems, discriminant analysis, optimal quadratic boundaries, tree and chain expansions of binary probability density functions, and sequential decision schemes. The area of applicability, basic assumptions, manner of derivation, and relative computational complexity of each algorithm are described. Each method is illustrated by means of the same two-class two-dimensional numerical example. The "training set" in this example comprises four samples from either class; the "test set" is the set of all points in the normal distributions characterized by the sample means and sample covariance matrices of the training set. Procedural difficulties stemming from an insufficient number of samples, various violations of the underlying statistical models, linear nonseparability, noninvertible covariance matrices, multimodal distributions, and other experimental facts of life are touched on.
Keywords :
Classification algorithms; Computational complexity; Correlation; Covariance matrix; Laboratories; Minimax techniques; Pattern classification; Pattern recognition; Probability density function; Testing;
fLanguage :
English
Journal_Title :
Audio and Electroacoustics, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9278
Type :
jour
DOI :
10.1109/TAU.1968.1161983
Filename :
1161983
Link To Document :
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