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Bayesian uncertainty quantification for data-driven equation learning

Equation learning aims to infer differential equation models from data. While a number of studies have shown that differential equation models can be successfully identified when the data are sufficiently detailed and corrupted with relatively small amounts of noise, the relationship between observa...

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Detalles Bibliográficos
Autores principales: Martina-Perez, Simon, Simpson, Matthew J., Baker, Ruth E.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: The Royal Society 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8548080/
https://www.ncbi.nlm.nih.gov/pubmed/35153587
http://dx.doi.org/10.1098/rspa.2021.0426
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author Martina-Perez, Simon
Simpson, Matthew J.
Baker, Ruth E.
author_facet Martina-Perez, Simon
Simpson, Matthew J.
Baker, Ruth E.
author_sort Martina-Perez, Simon
collection PubMed
description Equation learning aims to infer differential equation models from data. While a number of studies have shown that differential equation models can be successfully identified when the data are sufficiently detailed and corrupted with relatively small amounts of noise, the relationship between observation noise and uncertainty in the learned differential equation models remains unexplored. We demonstrate that for noisy datasets there exists great variation in both the structure of the learned differential equation models and their parameter values. We explore how to exploit multiple datasets to quantify uncertainty in the learned models, and at the same time draw mechanistic conclusions about the target differential equations. We showcase our results using simulation data from a relatively straightforward agent-based model (ABM) which has a well-characterized partial differential equation description that provides highly accurate predictions of averaged ABM behaviours in relevant regions of parameter space. Our approach combines equation learning methods with Bayesian inference approaches so that a quantification of uncertainty can be given by the posterior parameter distribution of the learned model.
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spelling pubmed-85480802022-02-11 Bayesian uncertainty quantification for data-driven equation learning Martina-Perez, Simon Simpson, Matthew J. Baker, Ruth E. Proc Math Phys Eng Sci Research Articles Equation learning aims to infer differential equation models from data. While a number of studies have shown that differential equation models can be successfully identified when the data are sufficiently detailed and corrupted with relatively small amounts of noise, the relationship between observation noise and uncertainty in the learned differential equation models remains unexplored. We demonstrate that for noisy datasets there exists great variation in both the structure of the learned differential equation models and their parameter values. We explore how to exploit multiple datasets to quantify uncertainty in the learned models, and at the same time draw mechanistic conclusions about the target differential equations. We showcase our results using simulation data from a relatively straightforward agent-based model (ABM) which has a well-characterized partial differential equation description that provides highly accurate predictions of averaged ABM behaviours in relevant regions of parameter space. Our approach combines equation learning methods with Bayesian inference approaches so that a quantification of uncertainty can be given by the posterior parameter distribution of the learned model. The Royal Society 2021-10 2021-10-27 /pmc/articles/PMC8548080/ /pubmed/35153587 http://dx.doi.org/10.1098/rspa.2021.0426 Text en © 2021 The Authors. https://creativecommons.org/licenses/by/4.0/Published by the Royal Society under the terms of the Creative Commons Attribution License http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, provided the original author and source are credited.
spellingShingle Research Articles
Martina-Perez, Simon
Simpson, Matthew J.
Baker, Ruth E.
Bayesian uncertainty quantification for data-driven equation learning
title Bayesian uncertainty quantification for data-driven equation learning
title_full Bayesian uncertainty quantification for data-driven equation learning
title_fullStr Bayesian uncertainty quantification for data-driven equation learning
title_full_unstemmed Bayesian uncertainty quantification for data-driven equation learning
title_short Bayesian uncertainty quantification for data-driven equation learning
title_sort bayesian uncertainty quantification for data-driven equation learning
topic Research Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8548080/
https://www.ncbi.nlm.nih.gov/pubmed/35153587
http://dx.doi.org/10.1098/rspa.2021.0426
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