The present paper provides exact mathematical expressions for the high-order moments of spiking activity in a recurrently connected network of linear Hawkes processes. It extends previous studies that have explored the case of a (linear) Hawkes network driven by deterministic intensity functions to the case of a stimulation by external inputs (rate functions or spike trains) with arbitrary correlation structure. Our approach describes the spatio-temporal filtering induced by the afferent and recurrent connectivities (with arbitrary synaptic response kernels) using operators acting on the input moments. This algebraic viewpoint provides intuition about how the network ingredients shape the input-output mapping for moments, as well as cumulan...
Mean-field theory for networks of spiking neurons based on the so-called diffusion approximation has...
A framework of moment neuronal networks with intra- and inter-interactions is presented. It is to sh...
The self-exciting systems as represented by neural networks are known to exhibit catastrophic chain ...
The present paper provides exact mathematical expressions for the high-order moments of spiking acti...
The present paper provides a mathematical description of high-order moments of spiking activity in a...
International audienceThe activity of a neuronal network, characterized by action potentials (spikes...
Abstract. We introduce a nonlinear modification of the classical Hawkes process, which allows inhibi...
Spike trains recorded in cortical neurons in vivo can be approximated by renewal processes, but are ...
A theoretical framework is developed for moment neuronal networks (MNNs). Within this framework, the...
Can we understand the dynamic behaviour of leaky integrate-and-fire (LIF) networks, which present th...
This paper gives a short survey of some aspects of the study of Hawkes processes in high dimensions,...
The diversity of neuron models used in contemporary theoretical neuroscience to investigate specific...
This paper gives a short survey of some aspects of the study of Hawkes processes in high dimensions,...
Neural computations emerge from recurrent neural circuits that comprise hundreds to a few thousand n...
Background: Statistical models that predict neuron spike occurrence from the earlier spiking activit...
Mean-field theory for networks of spiking neurons based on the so-called diffusion approximation has...
A framework of moment neuronal networks with intra- and inter-interactions is presented. It is to sh...
The self-exciting systems as represented by neural networks are known to exhibit catastrophic chain ...
The present paper provides exact mathematical expressions for the high-order moments of spiking acti...
The present paper provides a mathematical description of high-order moments of spiking activity in a...
International audienceThe activity of a neuronal network, characterized by action potentials (spikes...
Abstract. We introduce a nonlinear modification of the classical Hawkes process, which allows inhibi...
Spike trains recorded in cortical neurons in vivo can be approximated by renewal processes, but are ...
A theoretical framework is developed for moment neuronal networks (MNNs). Within this framework, the...
Can we understand the dynamic behaviour of leaky integrate-and-fire (LIF) networks, which present th...
This paper gives a short survey of some aspects of the study of Hawkes processes in high dimensions,...
The diversity of neuron models used in contemporary theoretical neuroscience to investigate specific...
This paper gives a short survey of some aspects of the study of Hawkes processes in high dimensions,...
Neural computations emerge from recurrent neural circuits that comprise hundreds to a few thousand n...
Background: Statistical models that predict neuron spike occurrence from the earlier spiking activit...
Mean-field theory for networks of spiking neurons based on the so-called diffusion approximation has...
A framework of moment neuronal networks with intra- and inter-interactions is presented. It is to sh...
The self-exciting systems as represented by neural networks are known to exhibit catastrophic chain ...