Entropy rate quantifies the amount of disorder in a stochastic process. For spiking neurons, the entropy rate places an upper bound on the rate at which the spike train can convey stimulus information, and a large literature has focused on the prob-lem of estimating entropy rate from spike train data. Here we present Bayes least squares and empirical Bayesian entropy rate estimators for binary spike trains us-ing hierarchical Dirichlet process (HDP) priors. Our estimator leverages the fact that the entropy rate of an ergodic Markov Chain with known transition prob-abilities can be calculated analytically, and many stochastic processes that are non-Markovian can still be well approximated by Markov processes of sufficient depth. Choosing an ...
Partly motivated by entropy-estimation problems in neuroscience, we present a detailed and extensive...
Neurons perform computations, and convey the results of those computations through the statistical s...
Information-theoretic methods have been widely used in neuroscience, in the broad effort to ana-lyze...
Shannon’s entropy is a basic quantity in information theory, and a fundamental building block for th...
Quantification of information content and its temporal variation in intracellular calcium spike trai...
We use statistical estimates of the entropy rate of spike train data in order to make inferences abo...
The major problem in information theoretic analysis of neural responses is the reliable estimation o...
Il Memming Park and Jonathan Pillow are with the Institute for Neuroscience and Department of Psycho...
37 pages, 8 figuresWe consider the evolution of a network of neurons, focusing on the asymptotic beh...
The entropy rate quantifies the amount of uncertainty or disorder produced by any dynamical system. ...
"The spiking activity of neuronal networks follows laws that are not time-reversal symmetric; the no...
We consider the maximum entropy Markov chain inference approach to characterize the collective stati...
"We consider the maximum entropy Markov chain inference approach to characterize the collective stat...
We consider the maximum entropy Markov chain inference approach to characterize the collective stati...
The spiking activity of neuronal networks follows laws that are not time-reversal symmetric; the not...
Partly motivated by entropy-estimation problems in neuroscience, we present a detailed and extensive...
Neurons perform computations, and convey the results of those computations through the statistical s...
Information-theoretic methods have been widely used in neuroscience, in the broad effort to ana-lyze...
Shannon’s entropy is a basic quantity in information theory, and a fundamental building block for th...
Quantification of information content and its temporal variation in intracellular calcium spike trai...
We use statistical estimates of the entropy rate of spike train data in order to make inferences abo...
The major problem in information theoretic analysis of neural responses is the reliable estimation o...
Il Memming Park and Jonathan Pillow are with the Institute for Neuroscience and Department of Psycho...
37 pages, 8 figuresWe consider the evolution of a network of neurons, focusing on the asymptotic beh...
The entropy rate quantifies the amount of uncertainty or disorder produced by any dynamical system. ...
"The spiking activity of neuronal networks follows laws that are not time-reversal symmetric; the no...
We consider the maximum entropy Markov chain inference approach to characterize the collective stati...
"We consider the maximum entropy Markov chain inference approach to characterize the collective stat...
We consider the maximum entropy Markov chain inference approach to characterize the collective stati...
The spiking activity of neuronal networks follows laws that are not time-reversal symmetric; the not...
Partly motivated by entropy-estimation problems in neuroscience, we present a detailed and extensive...
Neurons perform computations, and convey the results of those computations through the statistical s...
Information-theoretic methods have been widely used in neuroscience, in the broad effort to ana-lyze...