职位(财务)
子空间拓扑
Atom(片上系统)
计算机科学
密度泛函理论
对称(几何)
先验与后验
机器学习
人工智能
算法
化学
数学
计算化学
几何学
认识论
哲学
嵌入式系统
经济
财务
作者
Ankit Jain,Thomas Bligaard
出处
期刊:Physical review
[American Physical Society]
日期:2018-12-20
卷期号:98 (21)
被引量:53
标识
DOI:10.1103/physrevb.98.214112
摘要
The high-throughput screening of periodic inorganic solids using machine learning methods requires atomic positions to encode structural and compositional details into appropriate material descriptors. These atomic positions are not available {\it a priori} for new materials which severely limits exploration of novel materials. We overcome this limitation by using only crystallographic symmetry information in the structural description of materials. We show that for materials with identical structural symmetry, machine learning is trivial and accuracies similar to that of density functional theory calculations can be achieved by using only atomic numbers in the material description. For machine learning of formation energies of bulk crystalline solids, this simple material descriptor is able to achieve prediction mean absolute errors of only 0.07 eV/atom on a test dataset consisting of more than 85,000 diverse materials. This atomic-position independent material descriptor presents a new route of materials discovery wherein millions of materials can be screened by training a machine learning model over a drastically reduced subspace of materials.
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