DocumentCode :
3167486
Title :
Neural network learning using the Robbins-Monro algorithm
Author :
Prados, Donald L.
Author_Institution :
Dept. of Electr. Eng., New Orleans Univ., LA, USA
fYear :
1990
fDate :
1-4 Apr 1990
Firstpage :
572
Abstract :
Various learning algorithms for autoassociative Hopfield neural networks are compared. Such neural networks store a set of patterns by making the patterns stable states of the network. All of the algorithms studied (except one) are basically gradient-descent algorithms. They were compared by measuring how well they stored sets of randomly generated patterns. Each bit of each pattern generated was given an equal probability of being +1 or -1. After training the network for a set of patterns, the performance of the algorithm was tested by determining the next stable state for each possible input pattern and checking if that state was the closest in Hamming distance to the input pattern. The performance measurement is the percentage of input patterns that lead to the closest stable state
Keywords :
learning systems; neural nets; Hamming distance; Robbins-Monro algorithm; autoassociative Hopfield neural networks; gradient-descent algorithms; learning algorithms; performance measurement; training; Equations; Hamming distance; Iterative algorithms; Measurement; Neural networks; Neurons; Testing;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Southeastcon '90. Proceedings., IEEE
Conference_Location :
New Orleans, LA
Type :
conf
DOI :
10.1109/SECON.1990.117880
Filename :
117880
Link To Document :
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