DocumentCode :
2850310
Title :
Neural networks with maximal adaptive efficiency
Author :
Perlovsky, Leonid I.
Author_Institution :
Nicols Res. Corp., Wakefield, MA, USA
fYear :
1989
fDate :
14-17 Nov 1989
Firstpage :
208
Abstract :
A maximal-likelihood artificial neural system (MLANS) is described which performs the ML classification for problems requiring nonlinear classification boundaries. This neural network has ML neurons, which adaptively estimate the local metric in the classification space. This permits the design of flexible classifier shapes using a no-hidden-layer architecture and provides orders-of-magnitude improvement in learning efficiency. The learning efficiency of this network approaches the Cramer-Rao bounds with a relatively small number of samples. The learning process of MLANS can be unsupervised learning with partial or imperfect supervision. The ML approach allows for optimal fusion of all available information, such as a priori and real-time information, including supervisory (training) information
Keywords :
artificial intelligence; learning systems; neural nets; Cramer-Rao bounds; learning efficiency; maximal-likelihood artificial neural system; neural network; nonlinear classification; supervisory information; Adaptive systems; Artificial neural networks; Chromium; Maximum likelihood estimation; Neural networks; Neurons; Parameter estimation; Shape; Unsupervised learning; Yield estimation;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Systems, Man and Cybernetics, 1989. Conference Proceedings., IEEE International Conference on
Conference_Location :
Cambridge, MA
Type :
conf
DOI :
10.1109/ICSMC.1989.71280
Filename :
71280
Link To Document :
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