<div class="csl-bib-body">
<div class="csl-entry">Carrete, J., Montes-Campos, H., Wanzenböck, R., Heid, E., & Madsen, G. K. H. (2023). Deep ensembles vs committees for uncertainty estimation in neural-network force fields: Comparison and application to active learning. <i>Journal of Chemical Physics</i>, <i>158</i>(20), Article 204801. https://doi.org/10.1063/5.0146905</div>
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dc.identifier.issn
0021-9606
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dc.identifier.uri
http://hdl.handle.net/20.500.12708/192776
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dc.description.abstract
A reliable uncertainty estimator is a key ingredient in the successful use of machine-learning force fields for predictive calculations. Important considerations are correlation with error, overhead during training and inference, and efficient workflows to systematically improve the force field. However, in the case of neural-network force fields, simple committees are often the only option considered due to their easy implementation. Here, we present a generalization of the deep-ensemble design based on multiheaded neural networks and a heteroscedastic loss. It can efficiently deal with uncertainties in both energy and forces and take sources of aleatoric uncertainty affecting the training data into account. We compare uncertainty metrics based on deep ensembles, committees, and bootstrap-aggregation ensembles using data for an ionic liquid and a perovskite surface. We demonstrate an adversarial approach to active learning to efficiently and progressively refine the force fields. That active learning workflow is realistically possible thanks to exceptionally fast training enabled by residual learning and a nonlinear learned optimizer.
en
dc.description.sponsorship
FWF - Österr. Wissenschaftsfonds
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dc.description.sponsorship
FWF - Österr. Wissenschaftsfonds
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dc.language.iso
en
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dc.publisher
AIP Publishing
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dc.relation.ispartof
Journal of Chemical Physics
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dc.rights.uri
http://creativecommons.org/licenses/by/4.0/
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dc.subject
Machine Learning
en
dc.subject
neural-network force fields
en
dc.title
Deep ensembles vs committees for uncertainty estimation in neural-network force fields: Comparison and application to active learning