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Data-driven computational methods: parameter and operator estimations

Modern scientific computational methods are undergoing a transformative change; big data and statistical learning methods now have the potential to outperform the classical first-principles modeling paradigm. This book bridges this transition, connecting the theory of probability, stochastic process...

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Detalles Bibliográficos
Autor principal: Harlim, John
Lenguaje:eng
Publicado: Cambridge University Press 2018
Materias:
Acceso en línea:https://dx.doi.org/10.1017/9781108562461
http://cds.cern.ch/record/2631440
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author Harlim, John
author_facet Harlim, John
author_sort Harlim, John
collection CERN
description Modern scientific computational methods are undergoing a transformative change; big data and statistical learning methods now have the potential to outperform the classical first-principles modeling paradigm. This book bridges this transition, connecting the theory of probability, stochastic processes, functional analysis, numerical analysis, and differential geometry. It describes two classes of computational methods to leverage data for modeling dynamical systems. The first is concerned with data fitting algorithms to estimate parameters in parametric models that are postulated on the basis of physical or dynamical laws. The second is on operator estimation, which uses the data to nonparametrically approximate the operator generated by the transition function of the underlying dynamical systems. This self-contained book is suitable for graduate studies in applied mathematics, statistics, and engineering. Carefully chosen elementary examples with supplementary MATLAB® codes and appendices covering the relevant prerequisite materials are provided, making it suitable for self-study.
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spelling cern-26314402021-04-21T18:45:02Zdoi:10.1017/9781108562461http://cds.cern.ch/record/2631440engHarlim, JohnData-driven computational methods: parameter and operator estimationsComputing and ComputersModern scientific computational methods are undergoing a transformative change; big data and statistical learning methods now have the potential to outperform the classical first-principles modeling paradigm. This book bridges this transition, connecting the theory of probability, stochastic processes, functional analysis, numerical analysis, and differential geometry. It describes two classes of computational methods to leverage data for modeling dynamical systems. The first is concerned with data fitting algorithms to estimate parameters in parametric models that are postulated on the basis of physical or dynamical laws. The second is on operator estimation, which uses the data to nonparametrically approximate the operator generated by the transition function of the underlying dynamical systems. This self-contained book is suitable for graduate studies in applied mathematics, statistics, and engineering. Carefully chosen elementary examples with supplementary MATLAB® codes and appendices covering the relevant prerequisite materials are provided, making it suitable for self-study.Cambridge University Pressoai:cds.cern.ch:26314402018
spellingShingle Computing and Computers
Harlim, John
Data-driven computational methods: parameter and operator estimations
title Data-driven computational methods: parameter and operator estimations
title_full Data-driven computational methods: parameter and operator estimations
title_fullStr Data-driven computational methods: parameter and operator estimations
title_full_unstemmed Data-driven computational methods: parameter and operator estimations
title_short Data-driven computational methods: parameter and operator estimations
title_sort data-driven computational methods: parameter and operator estimations
topic Computing and Computers
url https://dx.doi.org/10.1017/9781108562461
http://cds.cern.ch/record/2631440
work_keys_str_mv AT harlimjohn datadrivencomputationalmethodsparameterandoperatorestimations