Abstract. Controlling activity in recurrent neural network models of brain regions is essential both to enable effective learning and to reproduce the low activities that exist in some cortical regions such as hippocampal region CA3. Previous studies of sparse, random, recurrent networks constructed with McCulloch–Pitts neurons used probabilistic arguments to set the parameters that control activity. Here, we extend this work by adding an additional, biologically appropriate, parameter to control the magnitude and stability of activity oscillations. The new constant can be considered to be the rest conductance in a shunting model or the threshold when subtractive inhibition is used. This new parameter is critical for large networks run at l...
Cortical networks exhibit intrinsic dynamics that drive coordinated, large-scale fluctuations across...
Network activity and network connectivity mutually influence each other. Especially for fast process...
Inhibition is a key aspect of neural dynamics playing a fundamental role for the emergence of neural...
Persistent irregular activity is defined as elevated irregular neural discharges in the brain in suc...
The remarkable properties of information-processing by biological and artificial neuronal networks a...
How does reliable computation emerge from networks of noisy neurons? While individual neurons are in...
One of the main challenges in the simulation of even reduced areas of the brain is the presence of a...
The sustained activity in recurrent networks has been under wide computational examination in studie...
Recurrent neural networks are complex non-linear systems, capable of ongoing activity in the absence...
A complex interplay of single-neuron properties and the recurrent network structure shapes the activ...
The balanced random network model attracts considerable interest be-cause it explains the irregular ...
There is broad consent that understanding the brain's function relies on the investigation of the mu...
We here unify the field-theoretical approach to neuronal networks with large deviations theory. For ...
International audienceRecurrent networks of non-linear units display a variety of dynamical regimes ...
Cortical neuron spiking activity is broadly classified as temporally irregular and asynchronous. Mod...
Cortical networks exhibit intrinsic dynamics that drive coordinated, large-scale fluctuations across...
Network activity and network connectivity mutually influence each other. Especially for fast process...
Inhibition is a key aspect of neural dynamics playing a fundamental role for the emergence of neural...
Persistent irregular activity is defined as elevated irregular neural discharges in the brain in suc...
The remarkable properties of information-processing by biological and artificial neuronal networks a...
How does reliable computation emerge from networks of noisy neurons? While individual neurons are in...
One of the main challenges in the simulation of even reduced areas of the brain is the presence of a...
The sustained activity in recurrent networks has been under wide computational examination in studie...
Recurrent neural networks are complex non-linear systems, capable of ongoing activity in the absence...
A complex interplay of single-neuron properties and the recurrent network structure shapes the activ...
The balanced random network model attracts considerable interest be-cause it explains the irregular ...
There is broad consent that understanding the brain's function relies on the investigation of the mu...
We here unify the field-theoretical approach to neuronal networks with large deviations theory. For ...
International audienceRecurrent networks of non-linear units display a variety of dynamical regimes ...
Cortical neuron spiking activity is broadly classified as temporally irregular and asynchronous. Mod...
Cortical networks exhibit intrinsic dynamics that drive coordinated, large-scale fluctuations across...
Network activity and network connectivity mutually influence each other. Especially for fast process...
Inhibition is a key aspect of neural dynamics playing a fundamental role for the emergence of neural...