We consider a pair of stochastic integrate and fire neurons receiving correlated stochastic inputs. The evolution of this system can be described by the corresponding Fokker-Planck equation with non-trivial boundary conditions re-sulting from the refractory period and firing threshold. We propose a finite volume method that is orders of magnitude faster than the Monte Carlo methods traditionally used to model such systems. The resulting numerical approxima-tions are proved to be accurate, nonnegative and integrate to 1. We also approximate the transient evolution of the system using an Ornstein–Uhlenbeck process, and use the result to examine the properties of the joint output of cell pairs. The results suggests that the joint output of a c...
A modified LIF-type stochastic model is considered with a non-delta correlated stochastic process in...
A modified LIF-type stochastic model is considered with a non-delta correlated stochastic process in...
High variability in the neuronal response to stimulations and the adaptation phenomenon cannot be ex...
A Leaky Integrate-and-Fire (LIF) model with stochastic current-based linkages is considered to descr...
A Leaky Integrate-and-Fire (LIF) model with stochastic current-based linkages is considered to descr...
Minimal models for the explanation of decision-making in computational neuroscience are based on the...
A stochastic model for describing the firing activity of a couple of interacting neurons subject to...
We investigate a stochastic linear integrate-and-fire (IF) neuronal model and use the corresponding ...
Minimal models for the explanation of decision-making in computational neuroscience are based on the...
A stochastic model for describing the firing activity of a couple of interacting neurons subject to...
We present a method for solving population density equations (PDEs)–-a mean-field technique describi...
With the aim to describe the interaction between a couple of neurons a stochastic model is proposed ...
With the aim to describe the interaction between a couple of neurons a stochastic model is proposed ...
With the aim to describe the interaction between a couple of neurons a stochastic model is proposed ...
A modified LIF-type stochastic model is considered with a non-delta correlated stochastic process in...
A modified LIF-type stochastic model is considered with a non-delta correlated stochastic process in...
A modified LIF-type stochastic model is considered with a non-delta correlated stochastic process in...
High variability in the neuronal response to stimulations and the adaptation phenomenon cannot be ex...
A Leaky Integrate-and-Fire (LIF) model with stochastic current-based linkages is considered to descr...
A Leaky Integrate-and-Fire (LIF) model with stochastic current-based linkages is considered to descr...
Minimal models for the explanation of decision-making in computational neuroscience are based on the...
A stochastic model for describing the firing activity of a couple of interacting neurons subject to...
We investigate a stochastic linear integrate-and-fire (IF) neuronal model and use the corresponding ...
Minimal models for the explanation of decision-making in computational neuroscience are based on the...
A stochastic model for describing the firing activity of a couple of interacting neurons subject to...
We present a method for solving population density equations (PDEs)–-a mean-field technique describi...
With the aim to describe the interaction between a couple of neurons a stochastic model is proposed ...
With the aim to describe the interaction between a couple of neurons a stochastic model is proposed ...
With the aim to describe the interaction between a couple of neurons a stochastic model is proposed ...
A modified LIF-type stochastic model is considered with a non-delta correlated stochastic process in...
A modified LIF-type stochastic model is considered with a non-delta correlated stochastic process in...
A modified LIF-type stochastic model is considered with a non-delta correlated stochastic process in...
High variability in the neuronal response to stimulations and the adaptation phenomenon cannot be ex...