Multi-head committees enable direct uncertainty prediction for atomistic foundation models

Autor
Beck, Hubert
Šimko, Pavol
Schaaf, Lars L.
Datum vydání
2025Publikováno v
Journal of Chemical PhysicsNakladatel / Místo vydání
American Institute of PhysicsRočník / Číslo vydání
163 (23)ISBN / ISSN
ISSN: 0021-9606ISBN / ISSN
eISSN: 1089-7690Informace o financování
UK//COOP
UK//GAUK248923
GA0//GA21-27987S
Metadata
Zobrazit celý záznamKolekce
Tato publikace má vydavatelskou verzi s DOI 10.1063/5.0302097
Abstrakt
Machine learning potentials have become a standard tool for atomistic materials modeling. While models continue to become more generalizable, an open challenge relates to efficient uncertainty predictions for active learning and robust error analysis. In this work, we utilize MACE and its multi-head mechanism to implement a committee neural network potential for message-passing architectures, where the committee comprises multiple output modules attached to the same atomic environment descriptors. As with traditional committees of independent networks, the standard deviation of the predictions functions as an estimate of the model's uncertainty. We show for a range of datasets in custom-build models that the uncertainty of the force predictions correlates well with the true errors. We subsequently apply this concept to foundation models, in particular MACE-MP-0, where we train only the newly attached output heads while keeping the remaining part of the model fixed. We use this approach in an active learning workflow to condense the training set of the foundation model to just 5% of its original size. The foundation model multi-head committee trained on the condensed training set enables reliable uncertainty estimation without any substantial decrease in prediction accuracy.
Klíčová slova
Active Learning, Atomistic material modelling, Atomistics, Foundation models, Learning potential, Machine-learning, Neural-networks, Standard tools, Training sets, Uncertainty
Trvalý odkaz
https://hdl.handle.net/20.500.14178/3565Licence
Licence pro užití plného textu výsledku: Creative Commons Uveďte původ 4.0 International
