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Dynamics of a class of discrete-time neural networks and their continuous-time counterparts

机译:Dynamics of a class of discrete-time neural networks and their continuous-time counterparts

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摘要

The dynamical characteristics of continuous-time additive Hopfield-type neural networks are studied. Sufficient conditions are obtained for exponentially stable encoding of temporally uniform external stimuli. Discrete-time analogues of the corresponding continuous-time models are formulated and it is shown analytically that the dynamics of the networks are preserved by both continuous-time and discrete-time systems. Two major conclusions are drawn from this study: firstly, it demonstrates the suitability of the formulated discrete-time analogues as mathematical models for stable encoding of associative memories associated with external stimuli in discrete time, and secondly, it illustrates the suitability of our discrete-time analogues as numerical algorithms in simulating the continuous-time networks. (C) 2000 IMACS. Published by Elsevier Science B.V. All rights reserved. References: 45

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