Information Transfer in Linear Multivariate Processes Assessed through Penalized Regression Techniques: Validation and Application to Physiological Networks

The framework of information dynamics allows the dissection of the information processed in a network of multiple interacting dynamical systems into meaningful elements of computation that quantify the information generated in a target system, stored in it, transferred to it from one or more source...

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Main Authors: Yuri Antonacci, Laura Astolfi, Giandomenico Nollo, Luca Faes
Format: Article
Language:English
Published: MDPI AG 2020-07-01
Series:Entropy
Subjects:
Online Access:https://www.mdpi.com/1099-4300/22/7/732
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spelling doaj-2ab1d26b9661479e91ac96416caf18db2020-11-25T02:41:22ZengMDPI AGEntropy1099-43002020-07-012273273210.3390/e22070732Information Transfer in Linear Multivariate Processes Assessed through Penalized Regression Techniques: Validation and Application to Physiological NetworksYuri Antonacci0Laura Astolfi1Giandomenico Nollo2Luca Faes3Department of Computer, Control and Management Engineering, Sapienza University of Rome, 00185 Rome, ItalyDepartment of Computer, Control and Management Engineering, Sapienza University of Rome, 00185 Rome, ItalyDepartment of Industrial Engineering, University of Trento, 38123 Trento, ItalyDepartment of Engineering, University of Palermo, 90128 Palermo, ItalyThe framework of information dynamics allows the dissection of the information processed in a network of multiple interacting dynamical systems into meaningful elements of computation that quantify the information generated in a target system, stored in it, transferred to it from one or more source systems, and modified in a synergistic or redundant way. The concepts of information transfer and modification have been recently formulated in the context of linear parametric modeling of vector stochastic processes, linking them to the notion of Granger causality and providing efficient tools for their computation based on the state–space (SS) representation of vector autoregressive (VAR) models. Despite their high computational reliability these tools still suffer from estimation problems which emerge, in the case of low ratio between data points available and the number of time series, when VAR identification is performed via the standard ordinary least squares (OLS). In this work we propose to replace the OLS with penalized regression performed through the Least Absolute Shrinkage and Selection Operator (LASSO), prior to computation of the measures of information transfer and information modification. First, simulating networks of several coupled Gaussian systems with complex interactions, we show that the LASSO regression allows, also in conditions of data paucity, to accurately reconstruct both the underlying network topology and the expected patterns of information transfer. Then we apply the proposed VAR-SS-LASSO approach to a challenging application context, i.e., the study of the physiological network of brain and peripheral interactions probed in humans under different conditions of rest and mental stress. Our results, which document the possibility to extract physiologically plausible patterns of interaction between the cardiovascular, respiratory and brain wave amplitudes, open the way to the use of our new analysis tools to explore the emerging field of Network Physiology in several practical applications.https://www.mdpi.com/1099-4300/22/7/732information dynamicspartial information decompositionentropyconditional transfer entropynetwork physiologymultivariate time series analysis
collection DOAJ
language English
format Article
sources DOAJ
author Yuri Antonacci
Laura Astolfi
Giandomenico Nollo
Luca Faes
spellingShingle Yuri Antonacci
Laura Astolfi
Giandomenico Nollo
Luca Faes
Information Transfer in Linear Multivariate Processes Assessed through Penalized Regression Techniques: Validation and Application to Physiological Networks
Entropy
information dynamics
partial information decomposition
entropy
conditional transfer entropy
network physiology
multivariate time series analysis
author_facet Yuri Antonacci
Laura Astolfi
Giandomenico Nollo
Luca Faes
author_sort Yuri Antonacci
title Information Transfer in Linear Multivariate Processes Assessed through Penalized Regression Techniques: Validation and Application to Physiological Networks
title_short Information Transfer in Linear Multivariate Processes Assessed through Penalized Regression Techniques: Validation and Application to Physiological Networks
title_full Information Transfer in Linear Multivariate Processes Assessed through Penalized Regression Techniques: Validation and Application to Physiological Networks
title_fullStr Information Transfer in Linear Multivariate Processes Assessed through Penalized Regression Techniques: Validation and Application to Physiological Networks
title_full_unstemmed Information Transfer in Linear Multivariate Processes Assessed through Penalized Regression Techniques: Validation and Application to Physiological Networks
title_sort information transfer in linear multivariate processes assessed through penalized regression techniques: validation and application to physiological networks
publisher MDPI AG
series Entropy
issn 1099-4300
publishDate 2020-07-01
description The framework of information dynamics allows the dissection of the information processed in a network of multiple interacting dynamical systems into meaningful elements of computation that quantify the information generated in a target system, stored in it, transferred to it from one or more source systems, and modified in a synergistic or redundant way. The concepts of information transfer and modification have been recently formulated in the context of linear parametric modeling of vector stochastic processes, linking them to the notion of Granger causality and providing efficient tools for their computation based on the state–space (SS) representation of vector autoregressive (VAR) models. Despite their high computational reliability these tools still suffer from estimation problems which emerge, in the case of low ratio between data points available and the number of time series, when VAR identification is performed via the standard ordinary least squares (OLS). In this work we propose to replace the OLS with penalized regression performed through the Least Absolute Shrinkage and Selection Operator (LASSO), prior to computation of the measures of information transfer and information modification. First, simulating networks of several coupled Gaussian systems with complex interactions, we show that the LASSO regression allows, also in conditions of data paucity, to accurately reconstruct both the underlying network topology and the expected patterns of information transfer. Then we apply the proposed VAR-SS-LASSO approach to a challenging application context, i.e., the study of the physiological network of brain and peripheral interactions probed in humans under different conditions of rest and mental stress. Our results, which document the possibility to extract physiologically plausible patterns of interaction between the cardiovascular, respiratory and brain wave amplitudes, open the way to the use of our new analysis tools to explore the emerging field of Network Physiology in several practical applications.
topic information dynamics
partial information decomposition
entropy
conditional transfer entropy
network physiology
multivariate time series analysis
url https://www.mdpi.com/1099-4300/22/7/732
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