A Numerical Study of the Time of Extinction in a Class of Systems of Spiking Neurons
Cecilia Romaro, Fernando Araujo Najman, Morgan Andr\'e

TL;DR
This paper numerically investigates the extinction times in a class of spiking neuron models on various lattice structures, confirming metastability and phase transition behaviors previously proven for simpler cases.
Contribution
It extends the analysis of neuron network models to higher-dimensional lattices and different activation functions through numerical simulations.
Findings
Metastability in sub-critical regimes observed across different lattice structures and activation functions.
Convergence in probability to 1 for the normalized extinction time in super-critical regimes.
Numerical evidence supports phase transition phenomena in more complex network configurations.
Abstract
In this paper we present a numerical study of a mathematical model of spiking neurons introduced by Ferrari et al. in an article entitled Phase transition forinfinite systems of spiking neurons. In this model we have a countable number of neurons linked together in a network, each of them having a membrane potential taking value in the integers, and each of them spiking over time at a rate which depends on the membrane potential through some rate function . Beside being affected by a spike each neuron can also be affected by leaking. At each of these leak times, which occurs for a given neuron at a fixed rate , the membrane potential of the neuron concerned is spontaneously reset to . A wide variety of versions of this model can be considered by choosing different graph structures for the network and different activation functions. It was rigorously shown that when the…
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Taxonomy
TopicsNeural dynamics and brain function · Gene Regulatory Network Analysis · Receptor Mechanisms and Signaling
