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Prediction model of band gap for inorganic compounds by combination of density functional theory calculations and machine learning techniques

机译:密度泛函理论计算与机器学习技术相结合的无机化合物带隙预测模型

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摘要

Machine learning techniques are applied to make prediction models of the G(0)W(0) band gaps for 270 inorganic compounds using Kohn-Sham (KS) band gaps, cohesive energy, crystalline volume per atom, and other fundamental information of constituent elements as predictors. Ordinary least squares regression (OLSR), least absolute shrinkage and selection operator, and nonlinear support vector regression (SVR) methods are applied with two levels of predictor sets. When the KS band gap by generalized gradient approximation of Perdew-Burke-Ernzerhof (PBE) or modified Becke-Johnson (mBJ) is used as a single predictor, the OLSR model predicts the G(0)W(0) band gap of randomly selected test data with the root-mean-square error (RMSE) of 0.59 eV. When KS band gap by PBE and mBJ methods are used together with a set of predictors representing constituent elements and compounds, the RMSE decreases significantly. The best model by SVR yields the RMSE of 0.24 eV. Band gaps estimated in this way should be useful as predictors for virtual screening of a large set of materials.
机译:应用机器学习技术,使用Kohn-Sham(KS)带隙,内聚能,每个原子的晶体体积和其他组成元素的基本信息,为270种无机化合物的G(0)W(0)带隙预测模型作为预测指标。普通最小二乘回归(OLSR),最小绝对收缩和选择算子以及非线性支持向量回归(SVR)方法应用于两个级别的预测器集。当通过Perdew-Burke-Ernzerhof(PBE)或改进的Becke-Johnson(mBJ)的广义梯度逼近将KS带隙用作单个预测变量时,OLSR模型将随机预测G(0)W(0)带隙选择的测试数据的均方根误差(RMSE)为0.59 eV。当通过PBE和mBJ方法的KS带隙与代表组成元素和化合物的一组预测变量一起使用时,RMSE显着降低。 SVR的最佳模型产生的RMSE为0.24 eV。以这种方式估算的带隙应该用作虚拟筛选大量材料的预测指标。

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