An Experimental Investigation of a Nonsupervised Adaptive Algorithm | IEEE Journals & Magazine | IEEE Xplore

An Experimental Investigation of a Nonsupervised Adaptive Algorithm


Abstract:

An unsupervised or nonsupervised adaptive algorithm for linear decision boundaries is applied to two pattern recognition problems: the classification of spoken words, and...Show More

Abstract:

An unsupervised or nonsupervised adaptive algorithm for linear decision boundaries is applied to two pattern recognition problems: the classification of spoken words, and the classification of hand-printed characters. The term unsupervised indicates that the class identification of the input patterns is not continuously available to the adaptive system. The algorithm discussed offers two advantages for pattern recognition applications. First, the number of patterns which must be labeled with class identification is reduced. Second, the adaptive system can follow changes in the class distributions over time, due to data fluctuation or hardware degradation. These advantages are demonstrated for each of the two applications.
Published in: IEEE Transactions on Electronic Computers ( Volume: EC-16, Issue: 6, December 1967)
Page(s): 860 - 864
Date of Publication: 26 December 2006
Print ISSN: 0367-7508

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