Phonon dispersion filter: A physics-inspired feature selection for machine learning potentials

How to improve the accuracy and precision of machine learning potential functions while reducing their computational cost has long been a subject of considerable interest. In this regard, a common approach is to reduce the number of descriptors through feature selection and dimensionality reduction,...

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Bibliographic Details
Published inJournal of applied physics Vol. 137; no. 11
Main Authors Xu, Tianyan, Xue, Yixuan, Park, Harold S., Jiang, Jinwu
Format Journal Article
LanguageEnglish
Published Melville American Institute of Physics 21.03.2025
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ISSN0021-8979
1089-7550
DOI10.1063/5.0253209

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Summary:How to improve the accuracy and precision of machine learning potential functions while reducing their computational cost has long been a subject of considerable interest. In this regard, a common approach is to reduce the number of descriptors through feature selection and dimensionality reduction, thereby improving computational efficiency. In our paper, we propose a descriptor selection method based on the material’s phonon spectrum, which is called a phonon dispersion filter (PDF) method. Compared to other mathematics-based machine learning feature selection methods, the PDF method is a more physics-based feature selection approach. Taking graphene and bulk silicon as examples, we provide a detailed introduction to the screening process of the PDF method and its underlying principles. Furthermore, we test the PDF method on two types of descriptors: Atom-centered symmetry functions descriptors and smooth overlap of atomic positions descriptors. Both demonstrate promising screening results.
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ISSN:0021-8979
1089-7550
DOI:10.1063/5.0253209