The Liang-Kleeman Information Flow: Theory and Applications
Information flow, or information transfer as it may be referred to, is a fundamental notion in general physics which has wide applications in scientific disciplines. Recently, a rigorous formalism has been established with respect to both deterministic and stochastic systems, with flow measures expl...
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doaj-7482ca5b4cc1423e90c07b2fbb5687582020-11-25T01:40:58ZengMDPI AGEntropy1099-43002013-01-0115132736010.3390/e15010327The Liang-Kleeman Information Flow: Theory and ApplicationsX. San LiangInformation flow, or information transfer as it may be referred to, is a fundamental notion in general physics which has wide applications in scientific disciplines. Recently, a rigorous formalism has been established with respect to both deterministic and stochastic systems, with flow measures explicitly obtained. These measures possess some important properties, among which is flow or transfer asymmetry. The formalism has been validated and put to application with a variety of benchmark systems, such as the baker transformation, Hénon map, truncated Burgers-Hopf system, Langevin equation, etc. In the chaotic Burgers-Hopf system, all the transfers, save for one, are essentially zero, indicating that the processes underlying a dynamical phenomenon, albeit complex, could be simple. (Truth is simple.) In the Langevin equation case, it is found that there could be no information flowing from one certain time series to another series, though the two are highly correlated. Information flow/transfer provides a potential measure of the cause–effect relation between dynamical events, a relation usually hidden behind the correlation in a traditional sense.http://www.mdpi.com/1099-4300/15/1/327Liang-Kleeman information flowcausationemergenceFrobenius-Perron operatortime series analysisatmosphere-ocean scienceEl Ni&#241oneurosciencenetwork dynamicsfinancial economics |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
X. San Liang |
spellingShingle |
X. San Liang The Liang-Kleeman Information Flow: Theory and Applications Entropy Liang-Kleeman information flow causation emergence Frobenius-Perron operator time series analysis atmosphere-ocean science El Ni&#241 o neuroscience network dynamics financial economics |
author_facet |
X. San Liang |
author_sort |
X. San Liang |
title |
The Liang-Kleeman Information Flow: Theory and Applications |
title_short |
The Liang-Kleeman Information Flow: Theory and Applications |
title_full |
The Liang-Kleeman Information Flow: Theory and Applications |
title_fullStr |
The Liang-Kleeman Information Flow: Theory and Applications |
title_full_unstemmed |
The Liang-Kleeman Information Flow: Theory and Applications |
title_sort |
liang-kleeman information flow: theory and applications |
publisher |
MDPI AG |
series |
Entropy |
issn |
1099-4300 |
publishDate |
2013-01-01 |
description |
Information flow, or information transfer as it may be referred to, is a fundamental notion in general physics which has wide applications in scientific disciplines. Recently, a rigorous formalism has been established with respect to both deterministic and stochastic systems, with flow measures explicitly obtained. These measures possess some important properties, among which is flow or transfer asymmetry. The formalism has been validated and put to application with a variety of benchmark systems, such as the baker transformation, Hénon map, truncated Burgers-Hopf system, Langevin equation, etc. In the chaotic Burgers-Hopf system, all the transfers, save for one, are essentially zero, indicating that the processes underlying a dynamical phenomenon, albeit complex, could be simple. (Truth is simple.) In the Langevin equation case, it is found that there could be no information flowing from one certain time series to another series, though the two are highly correlated. Information flow/transfer provides a potential measure of the cause–effect relation between dynamical events, a relation usually hidden behind the correlation in a traditional sense. |
topic |
Liang-Kleeman information flow causation emergence Frobenius-Perron operator time series analysis atmosphere-ocean science El Ni&#241 o neuroscience network dynamics financial economics |
url |
http://www.mdpi.com/1099-4300/15/1/327 |
work_keys_str_mv |
AT xsanliang theliangkleemaninformationflowtheoryandapplications AT xsanliang liangkleemaninformationflowtheoryandapplications |
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1725043323073200128 |