Neurons perform computations, and convey the results of those computations through the statistical structure of their output spike trains. Here we present a practical method, grounded in the information-theoretic analysis of prediction, for inferring a minimal representation of that structure and for characterizing its complexity. Starting from spike trains, our approach finds their causal state models (CSMs), the minimal hidden Markov models or stochastic automata capable of generating statistically identical time series. We then use these CSMs to objectively quantify both the generalizable structure and the idiosyncratic randomness of the spike train. Specifically, we show that the expected algorithmic information content (the i...
In a growing class of neurophysiological experiments, the train of impulses (“spikes”) produced by a...
Information transfer in neurons takes place through action potentials (spikes) which are metabolical...
"The spiking activity of neuronal networks follows laws that are not time-reversal symmetric; the no...
Neurons perform computations, and convey the results of those computations through the statistical s...
We use statistical estimates of the entropy rate of spike train data in order to make inferences abo...
A fundamental issue in neuroscience is how to identify the multiple biophysical mechanisms through w...
A fundamental issue in neuroscience is how to identify the multiple biophysical mechanisms through w...
The mutual information between stimulus and spike-train response is commonly used to monitor neural ...
The mutual information between stimulus and spike-train response is commonly used to monitor neural ...
A fundamental issue in neuroscience is how to identify the multiple biophysical mechanisms through w...
The mutual information between stimulus and spike-train response is commonly used to monito...
ABSTRACT We briefly review and highlight the conse-quences of rigorous and exact results obtained in...
37 pages, 8 figuresWe consider the evolution of a network of neurons, focusing on the asymptotic beh...
In order to understand how neural systems perform computations and process sensory information, we n...
Traditional methods in neural data analysis are not appropriate for analyzing the spike train of a s...
In a growing class of neurophysiological experiments, the train of impulses (“spikes”) produced by a...
Information transfer in neurons takes place through action potentials (spikes) which are metabolical...
"The spiking activity of neuronal networks follows laws that are not time-reversal symmetric; the no...
Neurons perform computations, and convey the results of those computations through the statistical s...
We use statistical estimates of the entropy rate of spike train data in order to make inferences abo...
A fundamental issue in neuroscience is how to identify the multiple biophysical mechanisms through w...
A fundamental issue in neuroscience is how to identify the multiple biophysical mechanisms through w...
The mutual information between stimulus and spike-train response is commonly used to monitor neural ...
The mutual information between stimulus and spike-train response is commonly used to monitor neural ...
A fundamental issue in neuroscience is how to identify the multiple biophysical mechanisms through w...
The mutual information between stimulus and spike-train response is commonly used to monito...
ABSTRACT We briefly review and highlight the conse-quences of rigorous and exact results obtained in...
37 pages, 8 figuresWe consider the evolution of a network of neurons, focusing on the asymptotic beh...
In order to understand how neural systems perform computations and process sensory information, we n...
Traditional methods in neural data analysis are not appropriate for analyzing the spike train of a s...
In a growing class of neurophysiological experiments, the train of impulses (“spikes”) produced by a...
Information transfer in neurons takes place through action potentials (spikes) which are metabolical...
"The spiking activity of neuronal networks follows laws that are not time-reversal symmetric; the no...