The entropy rate quantifies the amount of uncertainty or disorder produced by any dynamical system. In a spiking neuron, this uncertainty translates into the amount of information potentially encoded and thus the subject of intense theoretical and experimental investigation. Estimating this quantity in observed, experimental data is difficult and requires a judicious selection of probabilistic models, balancing between two opposing biases. We use a model weighting principle originally developed for lossless data compression, following the minimum description length principle. This weighting yields a direct estimator of the entropy rate, which, compared to existing methods, exhibits significantly less bias and converges faster in simulation....
International audience—Probabilistic and neural approaches, through their incorporation of nonlinear...
The need to estimate smooth probability distributions (a.k.a. probability densities) from finite sam...
Autoregressive processes play a major role in speech processing (linear prediction), seismic signal ...
The major problem in information theoretic analysis of neural responses is the reliable estimation o...
Partly motivated by entropy-estimation problems in neuroscience, we present a detailed and extensive...
Quantification of information content and its temporal variation in intracellular calcium spike trai...
Calculations of entropy of a signal or mutual information between two variables are valuable analyti...
Entropy rate quantifies the amount of disorder in a stochastic process. For spiking neurons, the ent...
Maximum entropy models have become popular statistical models in neuroscience and other areas of bio...
Abstract—Entropy rate of sequential data-streams naturally quantifies the complexity of the generati...
Shannon’s entropy is a basic quantity in information theory, and a fundamental building block for th...
Maximum entropy models have become popular statistical models in neuroscience and other areas in bio...
Maximum entropy models have become popular statistical models in neuroscience and other areas in bio...
We use statistical estimates of the entropy rate of spike train data in order to make inferences abo...
In this paper, we present a review of Shannon and differential entropy rate estimation techniques. E...
International audience—Probabilistic and neural approaches, through their incorporation of nonlinear...
The need to estimate smooth probability distributions (a.k.a. probability densities) from finite sam...
Autoregressive processes play a major role in speech processing (linear prediction), seismic signal ...
The major problem in information theoretic analysis of neural responses is the reliable estimation o...
Partly motivated by entropy-estimation problems in neuroscience, we present a detailed and extensive...
Quantification of information content and its temporal variation in intracellular calcium spike trai...
Calculations of entropy of a signal or mutual information between two variables are valuable analyti...
Entropy rate quantifies the amount of disorder in a stochastic process. For spiking neurons, the ent...
Maximum entropy models have become popular statistical models in neuroscience and other areas of bio...
Abstract—Entropy rate of sequential data-streams naturally quantifies the complexity of the generati...
Shannon’s entropy is a basic quantity in information theory, and a fundamental building block for th...
Maximum entropy models have become popular statistical models in neuroscience and other areas in bio...
Maximum entropy models have become popular statistical models in neuroscience and other areas in bio...
We use statistical estimates of the entropy rate of spike train data in order to make inferences abo...
In this paper, we present a review of Shannon and differential entropy rate estimation techniques. E...
International audience—Probabilistic and neural approaches, through their incorporation of nonlinear...
The need to estimate smooth probability distributions (a.k.a. probability densities) from finite sam...
Autoregressive processes play a major role in speech processing (linear prediction), seismic signal ...