The accurate characterization of spike firing rates including the determination of when changes in activity occur is a fundamental issue in the analysis of neurophysiological data. Here we describe a state-space model for estimating the spike rate function that provides a maximum likelihood estimate of the spike rate, model goodness-of-fit assessments, as well as confidence intervals for the spike rate function and any other associated quantities of interest. Using simulated spike data, we first compare the performance of the state-space approach with that of Bayesian adaptive regression splines (BARS) and a simple cubic spline smoothing algorithm. We show that the state-space model is computationally efficient and comparable with other spl...
A state-space method for simultaneously estimating time-dependent rate and higher-order correlation ...
A fundamental issue in neuroscience is how to identify the multiple biophysical mechanisms through w...
Neural spike train analysis is an important task in computational neuroscience which aims to underst...
The accurate characterization of spike firing rates including the determination of when changes in a...
State space methods have proven indispensable in neural data analysis. However, common methods for p...
Neurons use sequences of action potentials (spikes) to convey information across neuronal networks. ...
Abstract Neuronal activity is measured by the number of stereotyped action po-tentials, called spike...
A fundamental issue in neuroscience is how to identify the multiple biophysical mechanisms through w...
Using point processes to model neural spike sequences allows the application of classical estimation...
Traditional methods in neural data analysis are not appropriate for analyzing the spike train of a s...
Neurons use sequences of action potentials (spikes) to convey information across neuronal networks. ...
The aim of this thesis is to develop a novel technique for the estimation of firing rate dynamics fr...
The peristimulus time histogram (PSTH) and the spike density function (SDF) are commonly used in the...
Conventional methods for spike train analysis are predominantly based on the rate function. Addition...
With the development of modern technology, tremendous amount of data can be collected in biomedical ...
A state-space method for simultaneously estimating time-dependent rate and higher-order correlation ...
A fundamental issue in neuroscience is how to identify the multiple biophysical mechanisms through w...
Neural spike train analysis is an important task in computational neuroscience which aims to underst...
The accurate characterization of spike firing rates including the determination of when changes in a...
State space methods have proven indispensable in neural data analysis. However, common methods for p...
Neurons use sequences of action potentials (spikes) to convey information across neuronal networks. ...
Abstract Neuronal activity is measured by the number of stereotyped action po-tentials, called spike...
A fundamental issue in neuroscience is how to identify the multiple biophysical mechanisms through w...
Using point processes to model neural spike sequences allows the application of classical estimation...
Traditional methods in neural data analysis are not appropriate for analyzing the spike train of a s...
Neurons use sequences of action potentials (spikes) to convey information across neuronal networks. ...
The aim of this thesis is to develop a novel technique for the estimation of firing rate dynamics fr...
The peristimulus time histogram (PSTH) and the spike density function (SDF) are commonly used in the...
Conventional methods for spike train analysis are predominantly based on the rate function. Addition...
With the development of modern technology, tremendous amount of data can be collected in biomedical ...
A state-space method for simultaneously estimating time-dependent rate and higher-order correlation ...
A fundamental issue in neuroscience is how to identify the multiple biophysical mechanisms through w...
Neural spike train analysis is an important task in computational neuroscience which aims to underst...