Machine-Learning Screening of Inorganic Compounds for Defect Spin Properties

07 June 2024, Version 1
This content is a preprint and has not undergone peer review at the time of posting.

Abstract

An ensemble regression algorithm predicting refractive index, band gap and magnetic susceptibility utilizing elemental composition based physical descriptors is developed to screen for inorganic compounds with color defect spin properties at low computational cost. Mean absolute error (MAE) values of 0.46 for refractive index, 0.65 eV for bandgap utilizing gradient boost regression and 2.95e-3 cm3/mol for magnetic susceptibility with random forest regression were obtained via 70:30 train-test splits. When screened for threshold values of bandgap >2 eV, refractive index > 2 and magnetic susceptibility < 10e-5 cm3/mol, notable binary compounds with defect spin properties include GaN and SiC among 348 compounds demonstrating model utility.

Keywords

Machine-Learning
Ensemble Regression
Spin
Inorganic Compounds

Supplementary materials

Title
Description
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Title
Elemental Dataset
Description
Elemental Data used to construct datasets of parameters for training.
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Title
Refractive Index Training Dataset
Description
Refractive Index training data based on mean values based on elemental composition for features.
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Title
Band Gap Training Dataset
Description
Band gap training data based on mean values based on elemental composition for features.
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Title
Magnetic Susceptibility Training Dataset
Description
Magnetic suspectibility training data based on mean values based on elemental composition for features.
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