4.6 Article

Accurate band gap prediction based on an interpretable ?-machine learning

Journal

MATERIALS TODAY COMMUNICATIONS
Volume 33, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.mtcomm.2022.104630

Keywords

2D materials; Bandgap; Machine learning; DFT calculation; Interpretable

Funding

  1. National Natural Science Foundation of China [11929401, 12074241, 52130204]
  2. Science and Technology Commission of Shanghai Municipality [22XD1400900, 20501130600, 21JC1402600, 22YF1413300]
  3. National Key Research and Development Program of China [2018YFB0704404]
  4. Key Research Project of Zhejiang Lab [2021PE0AC02]

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This paper presents an interpretable Delta machine learning model for predicting bandgaps in materials. The model was trained using high-throughput calculations on two-dimensional semiconductors and achieved accurate predictions by using complex descriptors. A functional relationship between the descriptors and target properties was established.
Most materials science datasets are not so large that the accuracy of machine learning (ML) models is relatively limited if only simple features are used. Here, we constructed an interpretable delta-machine learning (delta-ML) model to connect the hybrid functional HSE bandgap (E-g(HSE)) with the PBE functional bandgap (E-g(PBE)). The former can reproduce the band gap comparable with experiments, but the computational cost is much more challenging. The training is based on our high-throughput calculations on a set of two-dimensional semiconductors. Four complex descriptors, all based on the EPBE g are constructed using the sure independence screening and sparsifying operator (SISSO) algorithm. Using these descriptors, the delta-ML can accurately predict the E-g(HSE) of test set with a determination coefficient (R2) of 0.96. The error satisfies a normal distribution with a mean of zero. We provide a direct functional relationship between input descriptors and target properties. We find that E-g(HSE ) and the 5/6th power of E(g )(PBE )show a significant linear correlation, which may guide rapid prediction of E-g(HSE ) from (EPBE) (g) for materials with a E-HSE (g) greater than 0.22 eV. We also discussed the correlation between the atomic radius and the E- g(HSE) . Our work will provide an effective and interpretable model to construct the optimal physical descriptors for ML prediction on bandgaps in screening massive new 2D materials research.

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