卷积神经网络
计算机科学
大数据
学习迁移
图形
Crystal(编程语言)
深度学习
材料信息学
人工神经网络
人工智能
回归
机器学习
材料科学
数据挖掘
理论计算机科学
数学
统计
公共卫生
程序设计语言
护理部
工程信息学
健康信息学
医学
作者
Joohwi Lee,Ryoji Asahi
标识
DOI:10.1016/j.commatsci.2021.110314
摘要
For successful applications of machine learning in materials informatics, it is necessary to overcome the inaccuracy of predictions ascribed to insufficient amount of data. In this study, we propose a transfer learning using a crystal graph convolutional neural network (TL-CGCNN). Herein, TL-CGCNN is pretrained with big data such as formation energies for crystal structures, and then used for predicting target properties with relatively small data. We confirm that TL-CGCNN can improve predictions of various properties such as bulk moduli, dielectric constants, and quasiparticle band gaps, which are computationally demanding, to construct big data for materials. Moreover, we quantitatively observe that the prediction of properties in target models via TL-CGCNN becomes more accurate with an increase in size of training dataset in pretrained models. Finally, we confirm that TL-CGCNN is superior to other regression methods in the predictions of target properties, which suffer from small amount of data. Therefore, we conclude that TL-CGCNN is promising along with compiling big data for materials that are easy to accumulate and relevant to the target properties.
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