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Phase transition for infinite systems of spiking neurons

arXiv:1802.07829 · doi:10.1007/s10955-018-2118-6

Abstract

We prove the existence of a phase transition for a stochastic model of interacting neurons. The spiking activity of each neuron is represented by a point process having rate $1 $ whenever its membrane potential is larger than a threshold value. This membrane potential evolves in time and integrates the spikes of all {\it presynaptic neurons} since the last spiking time of the neuron. When a neuron spikes, its membrane potential is reset to $0$ and simultaneously, a constant value is added to the membrane potentials of its postsynaptic neurons. Moreover, each neuron is exposed to a leakage effect leading to an abrupt loss of potential occurring at random times driven by an independent Poisson point process of rate $γ> 0 .$ For this process we prove the existence of a value $γ_c$ such that the system has one or two extremal invariant measures according to whether $γ> γ_c $ or not.