In neural spike counting experiments, it is known that there are two main features: (i) the counting number has a fractional power-law growth with time and (ii) the waiting time (i.e., the inter-spike-interval) distribution has a heavy tail. The method of superstatistical Poisson processes (SSPPs) is examined whether these main features are properly modeled. Although various mixed/compound Poisson processes are generated with selecting a suitable distribution of the birth-rate of spiking neurons, only the second feature (ii) can be modeled by the method of SSPPs. Namely, the first one (i) associated with the effect of long-memory cannot be modeled properly. Then, it is shown that the two main features can be modeled successfully by a class ...
We introduce a model where the rate of an inhomogeneous Poisson process is modified by a Chinese res...
<p>Examples of population raster plots of the spiking activity of 100 neurons (vertical axis) over t...
Understanding how ensembles of neurons represent and transmit information in the patterns of their j...
Abstract The Poisson process is an often employed model for the activity of neuronal populations. It...
The Poisson process is an often employed model for the activity of neuronal populations. It is known...
<p>(A) Mean Fano factor of the neural population in 15 ms windows is shown in black. Gray curves sho...
In order to model the memory and to describe the memory effects in the firing activity of a single n...
In order to model the memory and to describe the memory effects in the firing activity of a single n...
Poisson processes usually provide adequate descriptions of the irregular-ity in neuron spike times a...
We discuss the main features of a stochastic model for the firing activity of a neuronal unit, pr...
We discuss the main features of a stochastic model for the firing activity of a neuronal unit, pr...
We discuss the main features of a stochastic model for the firing activity of a neuronal unit, pr...
High variability in the neuronal response to stimulations and the adaptation phenomenon cannot be ex...
We discuss the main features of a stochastic model for the firing activity of a neuronal unit, pr...
High variability in the neuronal response to stimulations and the adaptation phenomenon cannot be ex...
We introduce a model where the rate of an inhomogeneous Poisson process is modified by a Chinese res...
<p>Examples of population raster plots of the spiking activity of 100 neurons (vertical axis) over t...
Understanding how ensembles of neurons represent and transmit information in the patterns of their j...
Abstract The Poisson process is an often employed model for the activity of neuronal populations. It...
The Poisson process is an often employed model for the activity of neuronal populations. It is known...
<p>(A) Mean Fano factor of the neural population in 15 ms windows is shown in black. Gray curves sho...
In order to model the memory and to describe the memory effects in the firing activity of a single n...
In order to model the memory and to describe the memory effects in the firing activity of a single n...
Poisson processes usually provide adequate descriptions of the irregular-ity in neuron spike times a...
We discuss the main features of a stochastic model for the firing activity of a neuronal unit, pr...
We discuss the main features of a stochastic model for the firing activity of a neuronal unit, pr...
We discuss the main features of a stochastic model for the firing activity of a neuronal unit, pr...
High variability in the neuronal response to stimulations and the adaptation phenomenon cannot be ex...
We discuss the main features of a stochastic model for the firing activity of a neuronal unit, pr...
High variability in the neuronal response to stimulations and the adaptation phenomenon cannot be ex...
We introduce a model where the rate of an inhomogeneous Poisson process is modified by a Chinese res...
<p>Examples of population raster plots of the spiking activity of 100 neurons (vertical axis) over t...
Understanding how ensembles of neurons represent and transmit information in the patterns of their j...