Better without U: Impact of Selective Hubbard U Correction on Foundational MLIPs
Thomas Warford, Fabian L. Thiemann, G\'abor Cs\'anyi

TL;DR
This paper investigates how the inconsistent application of Hubbard U corrections in training datasets affects the accuracy and physical realism of machine learning interatomic potentials, proposing a simple correction method and recommending dataset exclusion of U corrections.
Contribution
It identifies the impact of selective Hubbard U correction on MLIPs, introduces a per-U-atom energy shift to improve PES smoothness, and advocates for excluding U corrections in future datasets.
Findings
U correction inconsistencies cause spurious interactions in MLIPs.
Applying a per-U-atom energy shift improves PES smoothness.
Excluding U corrections from datasets reduces modeling pathologies.
Abstract
The training of foundational machine learning interatomic potentials (fMLIPs) relies on diverse databases with energies and forces calculated using ab initio methods. We show that fMLIPs trained on large datasets such as MPtrj, Alexandria, and OMat24 encode inconsistencies from the Materials Project's selective use of the Hubbard U correction, which is applied to certain transition metals only if O or F atoms are present in the simulation cell. This inconsistent use of +U creates two incompatible potential-energy surfaces (PES): a lower-energy GGA surface and a higher-energy GGA+U one. When trained on both, MLIPs interpolate between them, leading to systematic underbinding, or even spurious repulsion, between U-corrected metals and oxygen- or fluorine-containing species. Models such as MACE-OMAT and -MPA exhibit repulsion between U-corrected metals and their oxides, limiting their value…
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Taxonomy
TopicsMachine Learning in Materials Science · Advanced Electron Microscopy Techniques and Applications · Inorganic Chemistry and Materials
