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Autori principali: Kimpton, Louise, Salter, James, Xiong, Xiaoyu, Challenor, Peter
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2502.17367
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author Kimpton, Louise
Salter, James
Xiong, Xiaoyu
Challenor, Peter
author_facet Kimpton, Louise
Salter, James
Xiong, Xiaoyu
Challenor, Peter
contents Decision making often uses complex computer codes run at the exa-scale (10e18 flops). Such computer codes or models are often run in a hierarchy of different levels of fidelity ranging from the basic to the very sophisticated. The top levels in this hierarchy are expensive to run, limiting the number of possible runs. To make use of runs over all levels, and crucially improve emulation at the top level, we use multi-level Gaussian process emulators (GPs). We will present a new method of building GP emulators from hierarchies of models. In order to share information across the different levels, l=1,...,L, we define the form of the prior of the l+1th level to be the posterior of the lth level, hence building a Bayesian hierarchical structure for the top Lth level. This enables us to not only learn about the GP hyperparameters as we move up the multi-level hierarchy, but also allows us to limit the total number of parameters in the full model, whilst maintaining accuracy.
format Preprint
id arxiv_https___arxiv_org_abs_2502_17367
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Bayesian Hierarchical Emulators for Multi-Level Models: BayHEm
Kimpton, Louise
Salter, James
Xiong, Xiaoyu
Challenor, Peter
Methodology
Decision making often uses complex computer codes run at the exa-scale (10e18 flops). Such computer codes or models are often run in a hierarchy of different levels of fidelity ranging from the basic to the very sophisticated. The top levels in this hierarchy are expensive to run, limiting the number of possible runs. To make use of runs over all levels, and crucially improve emulation at the top level, we use multi-level Gaussian process emulators (GPs). We will present a new method of building GP emulators from hierarchies of models. In order to share information across the different levels, l=1,...,L, we define the form of the prior of the l+1th level to be the posterior of the lth level, hence building a Bayesian hierarchical structure for the top Lth level. This enables us to not only learn about the GP hyperparameters as we move up the multi-level hierarchy, but also allows us to limit the total number of parameters in the full model, whilst maintaining accuracy.
title Bayesian Hierarchical Emulators for Multi-Level Models: BayHEm
topic Methodology
url https://arxiv.org/abs/2502.17367