Predicting tensorial molecular properties with equivariant machine learning models

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Journal ArticleDate:
2022Access:
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Nguyen, Vu Ha Anh, Lunghi, Alessandro, Predicting tensorial molecular properties with equivariant machine learning models, Physical Review B, 2022, 105, 16Abstract:
Embedding molecular symmetries into machine-learning models is key for efficient learning of chemico-physical scalar properties, but little evidence on how to extend the same strategy to tensorial quantities exists. Here we formulate a scalable equivariant machine-learning model based on local atomic environment descriptors. We apply it to a series of molecules and show that accurate predictions can be achieved for a comprehensive list of dielectric and magnetic tensorial properties of different ranks.
These results show that equivariant models are a promising platform to extend the scope of machine learning in materials modelling.
Author's Homepage:
http://people.tcd.ie/lunghiaDescription:
PUBLISHED
Author: Lunghi, Alessandro; Nguyen, Vu Ha Anh
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American Physical Society (APS)Type of material:
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Series/Report no:
Physical Review B;105;
16;
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Full text availableDOI:
http://dx.doi.org/10.1103/PhysRevB.105.165131ISSN:
2469-9950Metadata
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