Machine Learning Model for the Prediction of Hubbard U Parameters and Its Application to Fe–O Systems
Wenming Xia,
Guo Chen,
Yuanqin Zhu
et al.
Abstract:Without incurring additional computational cost, the Hubbard model can prevalently address the electron selfinteraction problems of the local or semilocal exchange− correlation functions within density functional theory. However, determining the value of the Hubbard parameter, U, promptly, efficiently, and accurately has been a long-standing challenge. Here, we develop a method for predicting the Hubbard U of iron oxides by establishing a potential relationship through machine learning fitting of structural fi… Show more
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