Title
Information entropy production of maximum entropy markov chains from spike trains
11627/469611627/4696
Author
Cofré, Rodrigo
Maldonado Ahumada, César Octavio
Abstract
"The spiking activity of neuronal networks follows laws that are not time-reversal symmetric; the notion of pre-synaptic and post-synaptic neurons, stimulus correlations and noise correlations have a clear time order. Therefore, a biologically realistic statistical model for the spiking activity should be able to capture some degree of time irreversibility. We use the thermodynamic formalism to build a framework in the context maximum entropy models to quantify the degree of time irreversibility, providing an explicit formula for the information entropy production of the inferred maximum entropy Markov chain. We provide examples to illustrate our results and discuss the importance of time irreversibility for modeling the spike train statistics."
Publication date
2018Publication type
articleDOI
https://doi.org/10.3390/e20010034Knowledge area
MATEMÁTICASPublisher
MDPIKeywords
Information entropy productionDiscrete Markov chains
Spike train statistics
Gibbs measures
Maximum entropy principle