Adaptive thresholds for layered neural networks with synaptic noise
classification
❄️ cond-mat.dis-nn
cond-mat.stat-mech
keywords
noiseadaptivelayerednetworkneuralretrievalsynapticthreshold
read the original abstract
The inclusion of a macroscopic adaptive threshold is studied for the retrieval dynamics of layered feedforward neural network models with synaptic noise. It is shown that if the threshold is chosen appropriately as a function of the cross-talk noise and of the activity of the stored patterns, adapting itself automatically in the course of the recall process, an autonomous functioning of the network is guaranteed.This self-control mechanism considerably improves the quality of retrieval, in particular the storage capacity, the basins of attraction and the mutual information content.
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