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Bibliographic Details
Main Authors: Kim, Minji, Brown, Brendan, Pipiras, Vladas
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2410.08523
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author Kim, Minji
Brown, Brendan
Pipiras, Vladas
author_facet Kim, Minji
Brown, Brendan
Pipiras, Vladas
contents In a multi-fidelity setting, data are available from two sources, high- and low-fidelity. Low-fidelity data has larger size and can be leveraged to make more efficient inference about quantities of interest, e.g. the mean, for high-fidelity variables. In this work, such multi-fidelity setting is studied when the goal is to fit more efficiently a parametric model to high-fidelity data. Three multi-fidelity parameter estimation methods are considered, joint maximum likelihood, (multi-fidelity) moment estimation and (multi-fidelity) marginal maximum likelihood, and are illustrated on several parametric models, with the focus on parametric families used in extreme value analysis. An application is also provided concerning quantification of occurrences of extreme ship motions generated by two computer codes of varying fidelity.
format Preprint
id arxiv_https___arxiv_org_abs_2410_08523
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Parametric multi-fidelity Monte Carlo estimation with applications to extremes
Kim, Minji
Brown, Brendan
Pipiras, Vladas
Methodology
In a multi-fidelity setting, data are available from two sources, high- and low-fidelity. Low-fidelity data has larger size and can be leveraged to make more efficient inference about quantities of interest, e.g. the mean, for high-fidelity variables. In this work, such multi-fidelity setting is studied when the goal is to fit more efficiently a parametric model to high-fidelity data. Three multi-fidelity parameter estimation methods are considered, joint maximum likelihood, (multi-fidelity) moment estimation and (multi-fidelity) marginal maximum likelihood, and are illustrated on several parametric models, with the focus on parametric families used in extreme value analysis. An application is also provided concerning quantification of occurrences of extreme ship motions generated by two computer codes of varying fidelity.
title Parametric multi-fidelity Monte Carlo estimation with applications to extremes
topic Methodology
url https://arxiv.org/abs/2410.08523