Integrated Information in the Spiking–Bursting Stochastic Model

Integrated information has been recently suggested as a possible measure to identify a necessary condition for a system to display conscious features. Recently, we have shown that astrocytes contribute to the generation of integrated information through the complex behavior of neuron–astrocyte netwo...

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Main Authors: Oleg Kanakov, Susanna Gordleeva, Alexey Zaikin
Format: Article
Language:English
Published: MDPI AG 2020-11-01
Series:Entropy
Subjects:
Online Access:https://www.mdpi.com/1099-4300/22/12/1334
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spelling doaj-c57430cf05564fffad4bee3147a410872020-11-27T07:56:26ZengMDPI AGEntropy1099-43002020-11-01221334133410.3390/e22121334Integrated Information in the Spiking–Bursting Stochastic ModelOleg Kanakov0Susanna Gordleeva1Alexey Zaikin2Faculty of Radiophysics, Lobachevsky State University of Nizhny Novgorod, 603950 Nizhny Novgorod, RussiaInstitute of Biology and Biomedicine, Lobachevsky State University of Nizhny Novgorod, 603950 Nizhny Novgorod, RussiaInstitute of Information Technology, Mathematics and Mechanics, Lobachevsky State University of Nizhny Novgorod, 603950 Nizhny Novgorod, RussiaIntegrated information has been recently suggested as a possible measure to identify a necessary condition for a system to display conscious features. Recently, we have shown that astrocytes contribute to the generation of integrated information through the complex behavior of neuron–astrocyte networks. Still, it remained unclear which underlying mechanisms governing the complex behavior of a neuron–astrocyte network are essential to generating positive integrated information. This study presents an analytic consideration of this question based on exact and asymptotic expressions for integrated information in terms of exactly known probability distributions for a reduced mathematical model (discrete-time, discrete-state stochastic model) reflecting the main features of the “spiking–bursting” dynamics of a neuron–astrocyte network. The analysis was performed in terms of the empirical “whole minus sum” version of integrated information in comparison to the “decoder based” version. The “whole minus sum” information may change sign, and an interpretation of this transition in terms of “net synergy” is available in the literature. This motivated our particular interest in the sign of the “whole minus sum” information in our analytical considerations. The behaviors of the “whole minus sum” and “decoder based” information measures are found to bear a lot of similarity—they have mutual asymptotic convergence as time-uncorrelated activity increases, and the sign transition of the “whole minus sum” information is associated with a rapid growth in the “decoder based” information. The study aims at creating a theoretical framework for using the spiking–bursting model as an analytically tractable reference point for applying integrated information concepts to systems exhibiting similar bursting behavior. The model can also be of interest as a new discrete-state test bench for different formulations of integrated information.https://www.mdpi.com/1099-4300/22/12/1334integrated informationdiscrete-state stochastic modelcomputational biologyneuron-astrocyte networks
collection DOAJ
language English
format Article
sources DOAJ
author Oleg Kanakov
Susanna Gordleeva
Alexey Zaikin
spellingShingle Oleg Kanakov
Susanna Gordleeva
Alexey Zaikin
Integrated Information in the Spiking–Bursting Stochastic Model
Entropy
integrated information
discrete-state stochastic model
computational biology
neuron-astrocyte networks
author_facet Oleg Kanakov
Susanna Gordleeva
Alexey Zaikin
author_sort Oleg Kanakov
title Integrated Information in the Spiking–Bursting Stochastic Model
title_short Integrated Information in the Spiking–Bursting Stochastic Model
title_full Integrated Information in the Spiking–Bursting Stochastic Model
title_fullStr Integrated Information in the Spiking–Bursting Stochastic Model
title_full_unstemmed Integrated Information in the Spiking–Bursting Stochastic Model
title_sort integrated information in the spiking–bursting stochastic model
publisher MDPI AG
series Entropy
issn 1099-4300
publishDate 2020-11-01
description Integrated information has been recently suggested as a possible measure to identify a necessary condition for a system to display conscious features. Recently, we have shown that astrocytes contribute to the generation of integrated information through the complex behavior of neuron–astrocyte networks. Still, it remained unclear which underlying mechanisms governing the complex behavior of a neuron–astrocyte network are essential to generating positive integrated information. This study presents an analytic consideration of this question based on exact and asymptotic expressions for integrated information in terms of exactly known probability distributions for a reduced mathematical model (discrete-time, discrete-state stochastic model) reflecting the main features of the “spiking–bursting” dynamics of a neuron–astrocyte network. The analysis was performed in terms of the empirical “whole minus sum” version of integrated information in comparison to the “decoder based” version. The “whole minus sum” information may change sign, and an interpretation of this transition in terms of “net synergy” is available in the literature. This motivated our particular interest in the sign of the “whole minus sum” information in our analytical considerations. The behaviors of the “whole minus sum” and “decoder based” information measures are found to bear a lot of similarity—they have mutual asymptotic convergence as time-uncorrelated activity increases, and the sign transition of the “whole minus sum” information is associated with a rapid growth in the “decoder based” information. The study aims at creating a theoretical framework for using the spiking–bursting model as an analytically tractable reference point for applying integrated information concepts to systems exhibiting similar bursting behavior. The model can also be of interest as a new discrete-state test bench for different formulations of integrated information.
topic integrated information
discrete-state stochastic model
computational biology
neuron-astrocyte networks
url https://www.mdpi.com/1099-4300/22/12/1334
work_keys_str_mv AT olegkanakov integratedinformationinthespikingburstingstochasticmodel
AT susannagordleeva integratedinformationinthespikingburstingstochasticmodel
AT alexeyzaikin integratedinformationinthespikingburstingstochasticmodel
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