International audienceDespite the incredible complexity of our brains’ neural networks, theoretical descriptions of neural dynamics have led to profound insights into possible network states and dynamics. It remains challenging to develop theories that apply to spiking networks and thus allow one to characterize the dynamic properties of biologically more realistic networks. Here, we build on recent work by van Meegen and Lindner who have shown that “rotator networks,” while considerably simpler than real spiking networks and, therefore, more amenable to mathematical analysis, still allow one to capture dynamical properties of networks of spiking neurons. This framework can be easily extended to the case where individual units receive uncor...
Neural circuits exhibit complex activity patterns, both spontaneously and evoked by external stimuli...
The neural dynamics generating sensory, motor, and cognitive functions are commonly understood throu...
Mean-field descriptions of neuronal networks yield stabilityconstraints that guide efficient model d...
International audienceDespite the incredible complexity of our brains’ neural networks, theoretical ...
Despite the incredible complexity of our brains' neural networks, theoretical descriptions of neural...
Recurrently coupled oscillators that are sufficiently heterogeneous and/or randomly coupled can show...
A complex interplay of single-neuron properties and the recurrent network structure shapes the activ...
In the first part of this tutorial, we introduce the mathematical tools to determine firing statisti...
In this note, we develop semi-analytical techniques to obtain the full correlational structure of a ...
A complex interplay of single-neuron properties and the recurrent network structure shapes the activ...
We present a study of a network of unidirectionally coupled rotators with i.i.d. frequencies and i.i...
We investigate intrinsic timescales, characterized by single unit autocorrelation times, in spiking ...
We study collective dynamics of complex networks of stochastic excitable elements, active rotators. ...
We use stochastic neural field theory to analyze the stimulus-dependent tuning of neural variability...
Understanding the working principles of the brain constitutes the major challenge in computational n...
Neural circuits exhibit complex activity patterns, both spontaneously and evoked by external stimuli...
The neural dynamics generating sensory, motor, and cognitive functions are commonly understood throu...
Mean-field descriptions of neuronal networks yield stabilityconstraints that guide efficient model d...
International audienceDespite the incredible complexity of our brains’ neural networks, theoretical ...
Despite the incredible complexity of our brains' neural networks, theoretical descriptions of neural...
Recurrently coupled oscillators that are sufficiently heterogeneous and/or randomly coupled can show...
A complex interplay of single-neuron properties and the recurrent network structure shapes the activ...
In the first part of this tutorial, we introduce the mathematical tools to determine firing statisti...
In this note, we develop semi-analytical techniques to obtain the full correlational structure of a ...
A complex interplay of single-neuron properties and the recurrent network structure shapes the activ...
We present a study of a network of unidirectionally coupled rotators with i.i.d. frequencies and i.i...
We investigate intrinsic timescales, characterized by single unit autocorrelation times, in spiking ...
We study collective dynamics of complex networks of stochastic excitable elements, active rotators. ...
We use stochastic neural field theory to analyze the stimulus-dependent tuning of neural variability...
Understanding the working principles of the brain constitutes the major challenge in computational n...
Neural circuits exhibit complex activity patterns, both spontaneously and evoked by external stimuli...
The neural dynamics generating sensory, motor, and cognitive functions are commonly understood throu...
Mean-field descriptions of neuronal networks yield stabilityconstraints that guide efficient model d...