Rate models are often used to study the behavior of large networks of spiking neurons. Here we propose a procedure to derive rate models which take into account the fluctuations of the input current and firing rate adaptation, two ubiquitous features in the central nervous system which have been previously overlooked in constructing rate models. The procedure is general and applies to any model of firing unit. As examples, we apply it to the leaky integrate-and-fire (IF) neuron, the leaky IF neuron with reversal potentials, and to the quadratic IF neuron. Two mechanisms of adaptation are considered, one due to an afterhyperpolarization current, the other to an adapting threshold for spike emission. The parameters of these simple models can ...
In the intact brain neurons are constantly exposed to intense synaptic activity. This heavy barrage ...
Capturing the response behavior of spiking neuron models with rate-based models facilitates the inve...
Population rate models provide powerful tools for investigating the principles that underlie the coo...
In computational neuroscience, it is of crucial importance to dispose of a model that is able to acc...
Spike-frequency adaptation is a prominent feature of neural dynamics. Among other mechanisms, variou...
Computational models offer a unique tool for understanding the network-dynamical mechanisms which me...
Spike-frequency adaptation is a prominent feature of neural dynamics. Among other mechanisms, variou...
Abstract. Spike frequency adaptation is an important cellular mechanism by which neocortical neurons...
The ability of simple mathematical models to predict the activity of single neurons is important for...
Abstract The ability of neurons to adapt their responses to greatly varying sensory signal statistic...
A model is proposed to describe the spike-frequency adaptation observed in many neuronal systems. We...
A model is proposed to describe the spike-frequency adaptation observed in many neuronal systems. We...
A model is proposed to describe the spike-frequency adaptation observed in many neuronal systems. We...
The calculation of the steady-state probability density for multidimensional stochastic systems that...
<div><p>The response of a neuron to a time-dependent stimulus, as measured in a Peri-Stimulus-Time-H...
In the intact brain neurons are constantly exposed to intense synaptic activity. This heavy barrage ...
Capturing the response behavior of spiking neuron models with rate-based models facilitates the inve...
Population rate models provide powerful tools for investigating the principles that underlie the coo...
In computational neuroscience, it is of crucial importance to dispose of a model that is able to acc...
Spike-frequency adaptation is a prominent feature of neural dynamics. Among other mechanisms, variou...
Computational models offer a unique tool for understanding the network-dynamical mechanisms which me...
Spike-frequency adaptation is a prominent feature of neural dynamics. Among other mechanisms, variou...
Abstract. Spike frequency adaptation is an important cellular mechanism by which neocortical neurons...
The ability of simple mathematical models to predict the activity of single neurons is important for...
Abstract The ability of neurons to adapt their responses to greatly varying sensory signal statistic...
A model is proposed to describe the spike-frequency adaptation observed in many neuronal systems. We...
A model is proposed to describe the spike-frequency adaptation observed in many neuronal systems. We...
A model is proposed to describe the spike-frequency adaptation observed in many neuronal systems. We...
The calculation of the steady-state probability density for multidimensional stochastic systems that...
<div><p>The response of a neuron to a time-dependent stimulus, as measured in a Peri-Stimulus-Time-H...
In the intact brain neurons are constantly exposed to intense synaptic activity. This heavy barrage ...
Capturing the response behavior of spiking neuron models with rate-based models facilitates the inve...
Population rate models provide powerful tools for investigating the principles that underlie the coo...