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Naturally-meaningful and efficient descriptors: machine learning of material properties based on robust one-shot ab initio descriptors

Version 2 2024-06-19, 16:25
Version 1 2023-02-20, 05:14
journal contribution
posted on 2024-06-19, 16:25 authored by Sherif AbbasSherif Abbas, SP Russo
AbstractEstablishing a data-driven pipeline for the discovery of novel materials requires the engineering of material features that can be feasibly calculated and can be applied to predict a material’s target properties. Here we propose a new class of descriptors for describing crystal structures, which we term Robust One-Shot Ab initio (ROSA) descriptors. ROSA is computationally cheap and is shown to accurately predict a range of material properties. These simple and intuitive class of descriptors are generated from the energetics of a material at a low level of theory using an incomplete ab initio calculation. We demonstrate how the incorporation of ROSA descriptors in ML-based property prediction leads to accurate predictions over a wide range of crystals, amorphized crystals, metal–organic frameworks and molecules. We believe that the low computational cost and ease of use of these descriptors will significantly improve ML-based predictions.

History

Journal

Journal of Cheminformatics

Volume

14

Article number

ARTN 78

Location

England

ISSN

1758-2946

eISSN

1758-2946

Language

English

Publication classification

C1 Refereed article in a scholarly journal

Issue

1

Publisher

BMC