忠诚
计算机科学
图形
高保真
带隙
材料信息学
理论计算机科学
材料科学
物理
光电子学
医学
电信
公共卫生
健康信息学
工程信息学
护理部
声学
作者
Chi Chen,Yunxing Zuo,Weike Ye,Xiangguo Li,Shyue Ping Ong
标识
DOI:10.1038/s43588-020-00002-x
摘要
Predicting the properties of a material from the arrangement of its atoms is a fundamental goal in materials science. While machine learning has emerged in recent years as a new paradigm to provide rapid predictions of materials properties, their practical utility is limited by the scarcity of high-fidelity data. Here, we develop multi-fidelity graph networks as a universal approach to achieve accurate predictions of materials properties with small data sizes. As a proof of concept, we show that the inclusion of low-fidelity Perdew-Burke-Ernzerhof band gaps greatly enhances the resolution of latent structural features in materials graphs, leading to a 22-45% decrease in the mean absolute errors of experimental band gap predictions. We further demonstrate that learned elemental embeddings in materials graph networks provide a natural approach to model disorder in materials, addressing a fundamental gap in the computational prediction of materials properties.
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