Finite-size and correlation-induced effects in Mean-field Dynamics
Jonathan Touboul, G. Bard Ermentrout

TL;DR
This paper investigates how finite-size effects and neural correlations influence mean-field models of large neuronal networks, revealing new behaviors and stability changes not captured by classical deterministic approaches.
Contribution
It introduces a new infinite model that incorporates correlations, providing a more accurate description of finite neural networks and their qualitative behaviors.
Findings
Correlations modify stability of limit cycles.
Additional periodic orbits emerge due to correlations.
Finite-size effects lead to mesoscopic phenomena.
Abstract
The brain's activity is characterized by the interaction of a very large number of neurons that are strongly affected by noise. However, signals often arise at macroscopic scales integrating the effect of many neurons into a reliable pattern of activity. In order to study such large neuronal assemblies, one is often led to derive mean-field limits summarizing the effect of the interaction of a large number of neurons into an effective signal. Classical mean-field approaches consider the evolution of a deterministic variable, the mean activity, thus neglecting the stochastic nature of neural behavior. In this article, we build upon two recent approaches that include correlations and higher order moments in mean-field equations, and study how these stochastic effects influence the solutions of the mean-field equations, both in the limit of an infinite number of neurons and for large yet…
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