The temporal waveform of neural activity is commonly estimated by low-pass filtering spike train data through convolution with a gaussian kernel. However, the criteria for selecting the gaussian width σ are not well understood. Given an ensemble of Poisson spike trains generated by an instantaneous firing rate function λ(t), the problem was to recover an optimal estimate of λ(t) by gaussian filtering. We provide equations describing the optimal value of σ using an error minimization criterion and examine how the optimal σ varies within a parameter space defining the statistics of inhomogeneous Poisson spike trains. The process was studied both analytically and through simulations. The rate functions λ(t) were randomly generated, with the th...
Information transfer in neurons takes place through action potentials (spikes) which are metabolical...
A necessary ingredient for a quantitative theory of neural coding is appropriate “spike kinematics”:...
Neural spike train analysis is an important task in computational neuroscience which aims to underst...
The temporal waveform of neural activity is commonly estimated by low-pass filtering spike train dat...
The time histogram is a fundamental tool for representing the inhomo-geneous density of event occurr...
<p>(A) Mean Fano factor of the neural population in 15 ms windows is shown in black. Gray curves sho...
Neural spike trains present challenges to analytical efforts due to their noisy, spiking nature. Man...
Traditional methods in neural data analysis are not appropriate for analyzing the spike train of a s...
One of the central problems in systems neuroscience is to understand how neural spike trains convey ...
In the brain, spike trains are generated in time and presumably also interpreted as they unfold in t...
Reconstructing stimuli from the spike trains of neurons is an important approach for understanding t...
<p>(A) A model spiking neuron. Two linear filters act on the input, are rectified, and then summed. ...
Weconsidered a gammadistribution of interspike intervals as a statistical model for neuronal spike g...
Experimental neuroscience increasingly requires tractable models for analyzing and predicting the be...
Poisson processes usually provide adequate descriptions of the irregular-ity in neuron spike times a...
Information transfer in neurons takes place through action potentials (spikes) which are metabolical...
A necessary ingredient for a quantitative theory of neural coding is appropriate “spike kinematics”:...
Neural spike train analysis is an important task in computational neuroscience which aims to underst...
The temporal waveform of neural activity is commonly estimated by low-pass filtering spike train dat...
The time histogram is a fundamental tool for representing the inhomo-geneous density of event occurr...
<p>(A) Mean Fano factor of the neural population in 15 ms windows is shown in black. Gray curves sho...
Neural spike trains present challenges to analytical efforts due to their noisy, spiking nature. Man...
Traditional methods in neural data analysis are not appropriate for analyzing the spike train of a s...
One of the central problems in systems neuroscience is to understand how neural spike trains convey ...
In the brain, spike trains are generated in time and presumably also interpreted as they unfold in t...
Reconstructing stimuli from the spike trains of neurons is an important approach for understanding t...
<p>(A) A model spiking neuron. Two linear filters act on the input, are rectified, and then summed. ...
Weconsidered a gammadistribution of interspike intervals as a statistical model for neuronal spike g...
Experimental neuroscience increasingly requires tractable models for analyzing and predicting the be...
Poisson processes usually provide adequate descriptions of the irregular-ity in neuron spike times a...
Information transfer in neurons takes place through action potentials (spikes) which are metabolical...
A necessary ingredient for a quantitative theory of neural coding is appropriate “spike kinematics”:...
Neural spike train analysis is an important task in computational neuroscience which aims to underst...