Noise-induced behaviors in neural mean field dynamics
Jonathan Touboul, Geoffroy Hermann, Olivier Faugeras

TL;DR
This paper develops a mean field framework for large neural networks with noise, revealing how noise influences collective behaviors like synchronization and stability, with implications for understanding biological neural dynamics.
Contribution
The paper derives and analyzes Gaussian mean field equations for noisy neural networks, providing a tractable approach to study noise effects on collective neural dynamics.
Findings
Noise qualitatively alters network behavior, inducing synchronization or desynchronization.
Mean field equations accurately predict network dynamics for hundreds of neurons.
Noise can stabilize or destabilize stationary solutions in neural networks.
Abstract
The collective behavior of cortical neurons is strongly affected by the presence of noise at the level of individual cells. In order to study these phenomena in large-scale assemblies of neurons, we consider networks of firing-rate neurons with linear intrinsic dynamics and nonlinear coupling, belonging to a few types of cell populations and receiving noisy currents. Asymptotic equations as the number of neurons tends to infinity (mean field equations) are rigorously derived based on a probabilistic approach. These equations are implicit on the probability distribution of the solutions which generally makes their direct analysis difficult. However, in our case, the solutions are Gaussian, and their moments satisfy a closed system of nonlinear ordinary differential equations (ODEs), which are much easier to study than the original stochastic network equations, and the statistics of the…
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