Numéro |
J. Phys. France
Volume 51, Numéro 17, septembre 1990
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Page(s) | 1797 - 1801 | |
DOI | https://doi.org/10.1051/jphys:0199000510170179700 |
J. Phys. France 51, 1797-1801 (1990)
DOI: 10.1051/jphys:0199000510170179700
Fachbereich Informatik, Universität Hamburg, D-2000 Hamburg 50, F.R.G.
8718S - Neural networks.
0705M - Neural networks, fuzzy logic, artificial intelligence.
Key words
neural nets -- pattern recognition
DOI: 10.1051/jphys:0199000510170179700
Pattern recognition in Hopfield type networks with a finite range of connections
Eva Koscielny-BundeFachbereich Informatik, Universität Hamburg, D-2000 Hamburg 50, F.R.G.
Abstract
We study pattern recognition in linear Hopfield type networks of N neurons where each neuron is connected to the z subsequent neurons such that the state of the ith neuron at time t + 1 is determined by the states of neurons i + 1, ...,i + z at time t. We find that for small values of z/N the retrieval behavior differs considerably from the behavior of diluted Hopfield networks. The maximum number of random patterns that can be retrieved increases in a non linear way with z and the asymptotic mean overlap between input and output patterns decreases sharply as z is decreased and reaches zero at a finite value of z.
8718S - Neural networks.
0705M - Neural networks, fuzzy logic, artificial intelligence.
Key words
neural nets -- pattern recognition