Journal article
Retrieval properties of attractor neural networks that obey Dale's law using a self-consistent signal-to-noise analysis
AN Burkitt
Network Computation in Neural Systems | IOP PUBLISHING LTD | Published : 1996
Abstract
The recently proposed self-consistent signal-to-noise analysis is applied to a current-rate dynamics attractor network of excitatory neurons with a Hebbian synaptic matrix. The effect of inhibitory interneurons is included by a term modelling their effective inhibition that depends upon both the level of activity of the excitatory neurons and the stored patterns. The low rate attractor structure is identified, and at low loading the network retrieves single patterns with uniform low rates without errors, and is stable to the admixture of additional patterns. The self-consistent signal-to-noise method enables the analysis of the network properties with an extensive number of patterns, and the..
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