The motivation for this thesis is to devise a simple model of transient dynamics in neural networks. Neural circuits are capable of performing many computations without reaching an equilibrium, but instead through transient changes in activity. Thus, having a good model for transient activity is important. In particular, this thesis focuses on a firing-rate description of neural activity. Firing rates offer a convenient simplification of neural activity, and have been shown experimentally to convey information about stimuli and behavior. This work begins by review the philosophy of modeling firing rates, as well as the problems that go with it. It examines traditional approaches to modeling firing rates, and in particular how common a...
The minimal integrate-and-fire-or-burst (IFB) neuron model reproduces the salient features of experi...
We present a time-dependent level-crossing theory for linear dynamical systems perturbed by colored ...
Large scale studies of spiking neural networks are a key part of modern approaches to understanding ...
Firing-rate models provide an attractive approach for studying large neural networks because they ca...
Networks of simple spiking neurons provide abstract models for studying the dynamics of biological ...
Author summary Population models describing the average activity of large neuronal ensembles are a p...
Fast oscillations of the population firing rate in the gamma range (50-200 Hz), where each individua...
Population rate models provide powerful tools for investigating the principles that underlie the coo...
In this thesis methods from nonlinear dynamical systems, pattern formation and bifurcation theory, c...
We investigate a model for neural activity that generates long range temporal correlations, 1/ f noi...
Fast oscillations of the population firing rate in the high gamma range (50-200 Hz), where individua...
The macroscopic dynamics of large populations of neurons can be mathematically analyzed using low-di...
Relationships between spiking-neuron and rate-based approaches to the dynamics of neural assemblies ...
Computational models at different space-time scales allow us to understand the fundamental mechanism...
Relationships between spiking-neuron and rate-based approaches to the dynamics of neural assemblies ...
The minimal integrate-and-fire-or-burst (IFB) neuron model reproduces the salient features of experi...
We present a time-dependent level-crossing theory for linear dynamical systems perturbed by colored ...
Large scale studies of spiking neural networks are a key part of modern approaches to understanding ...
Firing-rate models provide an attractive approach for studying large neural networks because they ca...
Networks of simple spiking neurons provide abstract models for studying the dynamics of biological ...
Author summary Population models describing the average activity of large neuronal ensembles are a p...
Fast oscillations of the population firing rate in the gamma range (50-200 Hz), where each individua...
Population rate models provide powerful tools for investigating the principles that underlie the coo...
In this thesis methods from nonlinear dynamical systems, pattern formation and bifurcation theory, c...
We investigate a model for neural activity that generates long range temporal correlations, 1/ f noi...
Fast oscillations of the population firing rate in the high gamma range (50-200 Hz), where individua...
The macroscopic dynamics of large populations of neurons can be mathematically analyzed using low-di...
Relationships between spiking-neuron and rate-based approaches to the dynamics of neural assemblies ...
Computational models at different space-time scales allow us to understand the fundamental mechanism...
Relationships between spiking-neuron and rate-based approaches to the dynamics of neural assemblies ...
The minimal integrate-and-fire-or-burst (IFB) neuron model reproduces the salient features of experi...
We present a time-dependent level-crossing theory for linear dynamical systems perturbed by colored ...
Large scale studies of spiking neural networks are a key part of modern approaches to understanding ...