This paper models the dynamics of a large set of interacting neurons within the framework of statistical field theory. We use a method initially developed in the context of statistical field theory [44] and later adapted to complex systems in interaction [45][46]. Our model keeps track of individual interacting neurons dynamics but also preserves some of the features and goals of neural field dynamics, such as indexing a large number of neurons by a space variable. Thus, this paper bridges the scale of individual interacting neurons and the macro-scale modelling of neural field theory
How does reliable computation emerge from networks of noisy neurons? While individual neurons are in...
Cerebral cortex is composed of intricate networks of neurons. These neuronal networks are strongly i...
<div><p>The models in statistical physics such as an Ising model offer a convenient way to character...
This paper models the dynamics of a large set of interacting neurons within the framework of statist...
We present a mean-field formalism able to predict the collective dynamics of large networks of condu...
We show that a simple statistical mechanics model can capture the collective behavior of large netwo...
There is broad consent that understanding the brain's function relies on the investigation of the mu...
A major goal of neuroscience, statistical physics, and nonlinear dynamics is to understand how brain...
A major goal of neuroscience, statistical physics, and nonlinear dynamics is to understand how brain...
Understanding the working principles of the brain constitutes the major challenge in computational n...
20 pagesInternational audienceWe investigate the dynamics of large-scale interacting neural populati...
Neural population equations such as neural mass or field models are widely used to study brain activ...
International audienceDeriving tractable reduced equations of biological neural networks capturing t...
Mean-field descriptions of neuronal networks yield stabilityconstraints that guide efficient model d...
Deriving tractable reduced equations of biological neural networks capturing the macroscopic dynamic...
How does reliable computation emerge from networks of noisy neurons? While individual neurons are in...
Cerebral cortex is composed of intricate networks of neurons. These neuronal networks are strongly i...
<div><p>The models in statistical physics such as an Ising model offer a convenient way to character...
This paper models the dynamics of a large set of interacting neurons within the framework of statist...
We present a mean-field formalism able to predict the collective dynamics of large networks of condu...
We show that a simple statistical mechanics model can capture the collective behavior of large netwo...
There is broad consent that understanding the brain's function relies on the investigation of the mu...
A major goal of neuroscience, statistical physics, and nonlinear dynamics is to understand how brain...
A major goal of neuroscience, statistical physics, and nonlinear dynamics is to understand how brain...
Understanding the working principles of the brain constitutes the major challenge in computational n...
20 pagesInternational audienceWe investigate the dynamics of large-scale interacting neural populati...
Neural population equations such as neural mass or field models are widely used to study brain activ...
International audienceDeriving tractable reduced equations of biological neural networks capturing t...
Mean-field descriptions of neuronal networks yield stabilityconstraints that guide efficient model d...
Deriving tractable reduced equations of biological neural networks capturing the macroscopic dynamic...
How does reliable computation emerge from networks of noisy neurons? While individual neurons are in...
Cerebral cortex is composed of intricate networks of neurons. These neuronal networks are strongly i...
<div><p>The models in statistical physics such as an Ising model offer a convenient way to character...