The Brain & Neural Networks
Online ISSN : 1883-0455
Print ISSN : 1340-766X
ISSN-L : 1340-766X
Learning Sequential Patterns by Nonmonotone Analog Neural Networks
Masahiko Morita
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1994 Volume 1 Issue 2 Pages 69-74

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Abstract
A learning method for nonmonotone analog neural networks is presented by which almost any sequential pattern can be memorized. This method does not require a complex learning rule or particular devices for synchronizing neurons or delay; one only has to change the input pattern gradually and modify the synaptic weights according to a kind of correlation learning rule. Then the state of the network follows a little after the input pattern, its trajectory growing into a dynamic attractor with a few times of repetition. Numerical simulations are performed to examine the learning process and the recollection ability of the model.
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© 1994 Japanese Neural Network Society
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