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Machine Learning Predictors of Extreme Events Occurring in Complex Dynamical Systems

The ability to characterize and predict extreme events is a vital topic in fields ranging from finance to ocean engineering. Typically, the most-extreme events are also the most-rare, and it is this property that makes data collection and direct simulation challenging. We consider the problem of der...

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Autores principales: Guth, Stephen, Sapsis, Themistoklis P.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7514256/
http://dx.doi.org/10.3390/e21100925
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author Guth, Stephen
Sapsis, Themistoklis P.
author_facet Guth, Stephen
Sapsis, Themistoklis P.
author_sort Guth, Stephen
collection PubMed
description The ability to characterize and predict extreme events is a vital topic in fields ranging from finance to ocean engineering. Typically, the most-extreme events are also the most-rare, and it is this property that makes data collection and direct simulation challenging. We consider the problem of deriving optimal predictors of extremes directly from data characterizing a complex system, by formulating the problem in the context of binary classification. Specifically, we assume that a training dataset consists of: (i) indicator time series specifying on whether or not an extreme event occurs; and (ii) observables time series, which are employed to formulate efficient predictors. We employ and assess standard binary classification criteria for the selection of optimal predictors, such as total and balanced error and area under the curve, in the context of extreme event prediction. For physical systems for which there is sufficient separation between the extreme and regular events, i.e., extremes are distinguishably larger compared with regular events, we prove the existence of optimal extreme event thresholds that lead to efficient predictors. Moreover, motivated by the special character of extreme events, i.e., the very low rate of occurrence, we formulate a new objective function for the selection of predictors. This objective is constructed from the same principles as receiver operating characteristic curves, and exhibits a geometric connection to the regime separation property. We demonstrate the application of the new selection criterion to the advance prediction of intermittent extreme events in two challenging complex systems: the Majda–McLaughlin–Tabak model, a 1D nonlinear, dispersive wave model, and the 2D Kolmogorov flow model, which exhibits extreme dissipation events.
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spelling pubmed-75142562020-11-09 Machine Learning Predictors of Extreme Events Occurring in Complex Dynamical Systems Guth, Stephen Sapsis, Themistoklis P. Entropy (Basel) Article The ability to characterize and predict extreme events is a vital topic in fields ranging from finance to ocean engineering. Typically, the most-extreme events are also the most-rare, and it is this property that makes data collection and direct simulation challenging. We consider the problem of deriving optimal predictors of extremes directly from data characterizing a complex system, by formulating the problem in the context of binary classification. Specifically, we assume that a training dataset consists of: (i) indicator time series specifying on whether or not an extreme event occurs; and (ii) observables time series, which are employed to formulate efficient predictors. We employ and assess standard binary classification criteria for the selection of optimal predictors, such as total and balanced error and area under the curve, in the context of extreme event prediction. For physical systems for which there is sufficient separation between the extreme and regular events, i.e., extremes are distinguishably larger compared with regular events, we prove the existence of optimal extreme event thresholds that lead to efficient predictors. Moreover, motivated by the special character of extreme events, i.e., the very low rate of occurrence, we formulate a new objective function for the selection of predictors. This objective is constructed from the same principles as receiver operating characteristic curves, and exhibits a geometric connection to the regime separation property. We demonstrate the application of the new selection criterion to the advance prediction of intermittent extreme events in two challenging complex systems: the Majda–McLaughlin–Tabak model, a 1D nonlinear, dispersive wave model, and the 2D Kolmogorov flow model, which exhibits extreme dissipation events. MDPI 2019-09-23 /pmc/articles/PMC7514256/ http://dx.doi.org/10.3390/e21100925 Text en © 2019 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Guth, Stephen
Sapsis, Themistoklis P.
Machine Learning Predictors of Extreme Events Occurring in Complex Dynamical Systems
title Machine Learning Predictors of Extreme Events Occurring in Complex Dynamical Systems
title_full Machine Learning Predictors of Extreme Events Occurring in Complex Dynamical Systems
title_fullStr Machine Learning Predictors of Extreme Events Occurring in Complex Dynamical Systems
title_full_unstemmed Machine Learning Predictors of Extreme Events Occurring in Complex Dynamical Systems
title_short Machine Learning Predictors of Extreme Events Occurring in Complex Dynamical Systems
title_sort machine learning predictors of extreme events occurring in complex dynamical systems
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7514256/
http://dx.doi.org/10.3390/e21100925
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