Dynamics of stochastic neuronal networks and the connections to random graph theory

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Abstract

We analyze a stochastic neuronal network model which corresponds to an all-to-all network of discretized integrate-and-fire neurons where the synapses are failure-prone. This network exhibits different phases of behavior corresponding to synchrony and asynchrony, and we show that this is due to the limiting mean-field system possessing multiple attractors. We also show that this mean-field limit exhibits a first-order phase transition as a function of the connection strength - as the synapses are made more reliable, there is a sudden onset of synchronous behavior. A detailed understanding of the dynamics involves both a characterization of the size of the giant component in a certain random graph process, and control of the pathwise dynamics of the system by obtaining exponential bounds for the probabilities of events far from the mean. © EDP Sciences, 2010.

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Lee DeVille, R. E., Peskin, C. S., & Spencer, J. H. (2010, January). Dynamics of stochastic neuronal networks and the connections to random graph theory. Mathematical Modelling of Natural Phenomena. https://doi.org/10.1051/mmnp/20105202

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