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Titel:

Fast and flexible long-range models for atomistic machine learning

Dokumenttyp:
Zeitschriftenaufsatz
Autor(en):
Loche, Philip; Huguenin-Dumittan, Kevin K.; Honarmand, Melika; Xu, Qianjun; Rumiantsev, Egor; How, Wei Bin; Langer, Marcel F.; Ceriotti, Michele
Abstract:
Most atomistic machine learning (ML) models rely on a locality ansatz and decompose the energy into a sum of short-ranged, atom-centered contributions. This leads to clear limitations when trying to describe problems that are dominated by long-range physical effects—most notably electrostatics. Many approaches have been proposed to overcome these limitations, but efforts to make them efficient and widely available are hampered by the need to incorporate an ad hoc implementation of methods to tre...     »
Zeitschriftentitel:
The Journal of Chemical Physics
Jahr:
2025
Band / Volume:
162
Jahr / Monat:
2025-04
Heft / Issue:
14
Sprache:
en
Volltext / DOI:
doi:10.1063/5.0251713
Verlag / Institution:
AIP Publishing
E-ISSN:
0021-96061089-7690
Publikationsdatum:
08.04.2025
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