We study the dynamics of networks with inhibitory and excitatory leak-integrate-and-fire neurons with short-term synaptic plasticity in the presence of depressive and facilitating mechanisms. The dynamics is analyzed by a heterogeneous mean-field approximation, which allows us to keep track of the effects of structural disorder in the network. We describe the complex behavior of different classes of excitatory and inhibitory components, which give rise to a rich dynamical phase diagram as a function of the fraction of inhibitory neurons. Using the same mean-field approach, we study and solve a global inverse problem: reconstructing the degree probability distributions of the inhibitory and excitatory components and the fraction of inh...
International audienceWe investigate the role of inhibition in structuring new neural assemblies fol...
The subject under consideration in this work is the interplay between activity in neuronal networks ...
AbstractWe study the role of inhibition in a nearest-neighbours-connected neural model. The state of...
This thesis regards the dynamics of neural ensembles, investigated through mathematical models. When...
We report about the main dynamical features of a model of leaky integrate-and-fire excitatory neuron...
The dynamics of neural networks is often characterized by collective behavior and quasi-synchronous ...
International audienceNeural network dynamics emerge from the interaction of spiking cells. One way ...
The network of noisy leaky integrate and fire (NNLIF) model is one of the simplest self-contained me...
Accurate population models are needed to build very large-scale neural models, but their derivation ...
We consider here an extension and generalization of the stochastic neuronal network model developed...
<p>Activity in a network of binary inhibitory neurons with synaptic amplitudes . Each neuron receiv...
Mean-field approximations are a powerful tool for studying large neural networks. However, they do n...
Understanding the working principles of the brain constitutes the major challenge in computational n...
As a first step toward understanding the macro-dynamics of brain-like systems, we study the large-sc...
International audienceWe present a mean-field formalism able to predict the collective dynamics of l...
International audienceWe investigate the role of inhibition in structuring new neural assemblies fol...
The subject under consideration in this work is the interplay between activity in neuronal networks ...
AbstractWe study the role of inhibition in a nearest-neighbours-connected neural model. The state of...
This thesis regards the dynamics of neural ensembles, investigated through mathematical models. When...
We report about the main dynamical features of a model of leaky integrate-and-fire excitatory neuron...
The dynamics of neural networks is often characterized by collective behavior and quasi-synchronous ...
International audienceNeural network dynamics emerge from the interaction of spiking cells. One way ...
The network of noisy leaky integrate and fire (NNLIF) model is one of the simplest self-contained me...
Accurate population models are needed to build very large-scale neural models, but their derivation ...
We consider here an extension and generalization of the stochastic neuronal network model developed...
<p>Activity in a network of binary inhibitory neurons with synaptic amplitudes . Each neuron receiv...
Mean-field approximations are a powerful tool for studying large neural networks. However, they do n...
Understanding the working principles of the brain constitutes the major challenge in computational n...
As a first step toward understanding the macro-dynamics of brain-like systems, we study the large-sc...
International audienceWe present a mean-field formalism able to predict the collective dynamics of l...
International audienceWe investigate the role of inhibition in structuring new neural assemblies fol...
The subject under consideration in this work is the interplay between activity in neuronal networks ...
AbstractWe study the role of inhibition in a nearest-neighbours-connected neural model. The state of...