Stochastic Resonance in Recurrent Neural Network with Hopfield-Type Memory

作者:Naofumi Katada, Haruhiko Nishimura

摘要

Stochastic resonance (SR) is known as a phenomenon in which the presence of noise helps a nonlinear system in amplifying a weak (under barrier) signal. In this paper, we investigate how SR behavior can be observed in practical autoassociative neural networks with the Hopfield-type memory under the stochastic dynamics. We focus on SR responses in two systems which consist of three and 156 neurons. These cases are considered as effective double-well and multi-well models. It is demonstrated that the neural network can enhance weak subthreshold signals composed of the stored pattern trains and have higher coherence abilities between stimulus and response.

论文关键词:Stochastic, Noise, Neural network, Hopfield-type memory

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论文官网地址:https://doi.org/10.1007/s11063-009-9115-3