Noise in spiking neurons is commonly modeled by a noisy input current or by generating output spikes stochastically with a voltage-dependent hazard rate (“escape noise”). While input noise lends itself to modeling biophysical noise processes, the phenomenological escape noise is mathematically more tractable. Using the level-crossing theory for differentiable Gaussian processes, we derive an approximate mapping between colored input noise and escape noise in leaky integrate-and-fire neurons. This mapping requires the first-passage-time (FPT) density of an overdamped Brownian particle driven by colored noise with respect to an arbitrarily moving boundary. Starting from the Wiener–Rice series for the FPT density, we apply the second-order dec...
Abstract. Dierent variants of stochastic leaky integrate-and-re model for the membrane depolarisatio...
Understanding the dynamics of noisy neurons remains an important challenge in neuroscience. Here, we...
AbstractUnderstanding the dynamics of noisy neurons remains an important challenge in neuroscience. ...
We present a time-dependent level-crossing theory for linear dynamical systems perturbed by colored ...
We consider a leaky integrate--and--fire neuron with deterministic subthreshold dynamics and a firin...
Providing an analytical treatment to the stochastic feature of neu-rons' dynamics is one of the curr...
An analytical model is proposed that can predict the shape of the poststimulus time histogram (PSTH)...
Computational neuroscience is concerned with answering two intertwined questions that are based on t...
Nonlinear Noisy Leaky Integrate and Fire (NNLIF) models for neurons networks can be written as Fokke...
The variability of neuronal firing has been an intense topic of study for many years. From a modell...
Channel noise is the dominant intrinsic noise source of neurons causing variability in the timing of...
A good approximation to the integrate-and-fire model with diffusive noise can be obtained using a no...
We consider the stochastic dynamics of escape in an excitable system, the FitzHugh-Nagumo (FHN) neur...
The calculation of the steady-state probability density for multidimensional stochastic systems that...
We consider a stochastic neuronal model in which the time evolution of the membrane potential is de...
Abstract. Dierent variants of stochastic leaky integrate-and-re model for the membrane depolarisatio...
Understanding the dynamics of noisy neurons remains an important challenge in neuroscience. Here, we...
AbstractUnderstanding the dynamics of noisy neurons remains an important challenge in neuroscience. ...
We present a time-dependent level-crossing theory for linear dynamical systems perturbed by colored ...
We consider a leaky integrate--and--fire neuron with deterministic subthreshold dynamics and a firin...
Providing an analytical treatment to the stochastic feature of neu-rons' dynamics is one of the curr...
An analytical model is proposed that can predict the shape of the poststimulus time histogram (PSTH)...
Computational neuroscience is concerned with answering two intertwined questions that are based on t...
Nonlinear Noisy Leaky Integrate and Fire (NNLIF) models for neurons networks can be written as Fokke...
The variability of neuronal firing has been an intense topic of study for many years. From a modell...
Channel noise is the dominant intrinsic noise source of neurons causing variability in the timing of...
A good approximation to the integrate-and-fire model with diffusive noise can be obtained using a no...
We consider the stochastic dynamics of escape in an excitable system, the FitzHugh-Nagumo (FHN) neur...
The calculation of the steady-state probability density for multidimensional stochastic systems that...
We consider a stochastic neuronal model in which the time evolution of the membrane potential is de...
Abstract. Dierent variants of stochastic leaky integrate-and-re model for the membrane depolarisatio...
Understanding the dynamics of noisy neurons remains an important challenge in neuroscience. Here, we...
AbstractUnderstanding the dynamics of noisy neurons remains an important challenge in neuroscience. ...