Transfer Entropy for Coupled Autoregressive Processes

A method is shown for computing transfer entropy over multiple time lags for coupled autoregressive processes using formulas for the differential entropy of multivariate Gaussian processes. Two examples are provided: (1) a first-order filtered noise process whose state is measured with additive nois...

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Main Authors: Shawn D. Pethel, Daniel W. Hahs
Format: Article
Language:English
Published: MDPI AG 2013-02-01
Series:Entropy
Subjects:
Online Access:http://www.mdpi.com/1099-4300/15/3/767
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spelling doaj-d28ceaa50a874a789e7ae4712b455f5a2020-11-24T23:08:55ZengMDPI AGEntropy1099-43002013-02-0115376778810.3390/e15030767Transfer Entropy for Coupled Autoregressive ProcessesShawn D. PethelDaniel W. HahsA method is shown for computing transfer entropy over multiple time lags for coupled autoregressive processes using formulas for the differential entropy of multivariate Gaussian processes. Two examples are provided: (1) a first-order filtered noise process whose state is measured with additive noise, and (2) two first-order coupled processes each of which is driven by white process noise. We found that, for the first example, increasing the first-order AR coefficient while keeping the correlation coefficient between filtered and measured process fixed, transfer entropy increased since the entropy of the measured process was itself increased. For the second example, the minimum correlation coefficient occurs when the process noise variances match. It was seen that matching of these variances results in minimum information flow, expressed as the sum of transfer entropies in both directions. Without a match, the transfer entropy is larger in the direction away from the process having the larger process noise. Fixing the process noise variances, transfer entropies in both directions increase with the coupling strength. Finally, we note that the method can be generally employed to compute other information theoretic quantities as well.http://www.mdpi.com/1099-4300/15/3/767transfer entropyautoregressive processGaussian processinformation transfer
collection DOAJ
language English
format Article
sources DOAJ
author Shawn D. Pethel
Daniel W. Hahs
spellingShingle Shawn D. Pethel
Daniel W. Hahs
Transfer Entropy for Coupled Autoregressive Processes
Entropy
transfer entropy
autoregressive process
Gaussian process
information transfer
author_facet Shawn D. Pethel
Daniel W. Hahs
author_sort Shawn D. Pethel
title Transfer Entropy for Coupled Autoregressive Processes
title_short Transfer Entropy for Coupled Autoregressive Processes
title_full Transfer Entropy for Coupled Autoregressive Processes
title_fullStr Transfer Entropy for Coupled Autoregressive Processes
title_full_unstemmed Transfer Entropy for Coupled Autoregressive Processes
title_sort transfer entropy for coupled autoregressive processes
publisher MDPI AG
series Entropy
issn 1099-4300
publishDate 2013-02-01
description A method is shown for computing transfer entropy over multiple time lags for coupled autoregressive processes using formulas for the differential entropy of multivariate Gaussian processes. Two examples are provided: (1) a first-order filtered noise process whose state is measured with additive noise, and (2) two first-order coupled processes each of which is driven by white process noise. We found that, for the first example, increasing the first-order AR coefficient while keeping the correlation coefficient between filtered and measured process fixed, transfer entropy increased since the entropy of the measured process was itself increased. For the second example, the minimum correlation coefficient occurs when the process noise variances match. It was seen that matching of these variances results in minimum information flow, expressed as the sum of transfer entropies in both directions. Without a match, the transfer entropy is larger in the direction away from the process having the larger process noise. Fixing the process noise variances, transfer entropies in both directions increase with the coupling strength. Finally, we note that the method can be generally employed to compute other information theoretic quantities as well.
topic transfer entropy
autoregressive process
Gaussian process
information transfer
url http://www.mdpi.com/1099-4300/15/3/767
work_keys_str_mv AT shawndpethel transferentropyforcoupledautoregressiveprocesses
AT danielwhahs transferentropyforcoupledautoregressiveprocesses
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