arXiv:0704.1007 [cond-mat.dis-nn]AbstractReferencesReviewsResources
Transient Dynamics of Sparsely Connected Hopfield Neural Networks with Arbitrary Degree Distributions
Published 2007-04-08, updated 2007-12-07Version 2
Using probabilistic approach, the transient dynamics of sparsely connected Hopfield neural networks is studied for arbitrary degree distributions. A recursive scheme is developed to determine the time evolution of overlap parameters. As illustrative examples, the explicit calculations of dynamics for networks with binomial, power-law, and uniform degree distribution are performed. The results are good agreement with the extensive numerical simulations. It indicates that with the same average degree, there is a gradual improvement of network performance with increasing sharpness of its degree distribution, and the most efficient degree distribution for global storage of patterns is the delta function.