Title
Large deviations properties of maximum entropy markov chains from spike trains
11627/469511627/4695
Author
Cofré, Rodrigo
Maldonado Ahumada, César Octavio
Rosas, Fernando
Abstract
"We consider the maximum entropy Markov chain inference approach to characterize the collective statistics of neuronal spike trains, focusing on the statistical properties of the inferred model. To find the maximum entropy Markov chain, we use the thermodynamic formalism, which provides insightful connections with statistical physics and thermodynamics from which large deviations properties arise naturally. We provide an accessible introduction to the maximum entropy Markov chain inference problem and large deviations theory to the community of computational neuroscience, avoiding some technicalities while preserving the core ideas and intuitions. We review large deviations techniques useful in spike train statistics to describe properties of accuracy and convergence in terms of sampling size. We use these results to study the statistical fluctuation of correlations, distinguishability, and irreversibility of maximum entropy Markov chains. We illustrate these applications using simple examples where the large deviation rate function is explicitly obtained for maximum entropy models of relevance in this field."
Publication date
2018Publication type
articleDOI
https://doi.org/10.3390/e20080573Knowledge area
MATEMÁTICASPublisher
MDPIKeywords
Computational neuroscienceSpike train statistics
Maximum entropy principle
Large deviation theory
Out-of-equilibrium statistical mechanics
Thermodynamic formalism
Entropy production