Electronic Response Quantities of Solids and Deep Learning

Abstract

We introduce a deep neural network (DNN) framework called the real-space atomic decomposition network (radnet), which is capable of making accurate polarization and static dielectric function predictions for solids. We use these predictions to calculate Born-effective charges, longitudinal optical transverse optical (LO-TO) splitting frequencies, and Raman tensors for two prototypical examples: GaAs and BN. We then compute the Raman spectra, and find excellent agreement with ab initio techniques. radnet is as good or better than current methodologies. Lastly, we discuss how radnet scales to larger systems, paving the way for predictions of response functions on meso-scale structures with ab initio accuracy.

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