Banjade Huta R, Hauri Sandro, Zhang Shanshan, Ricci Francesco, Gong Weiyi, Hautier Geoffroy, Vucetic Slobodan, Yan Qimin
Department of Physics, Temple University, Philadelphia, PA 19122, USA.
Department of Computer and Information Science, Temple University, Philadelphia, PA 19122, USA.
Sci Adv. 2021 Apr 21;7(17). doi: 10.1126/sciadv.abf1754. Print 2021 Apr.
Incorporation of physical principles in a machine learning (ML) architecture is a fundamental step toward the continued development of artificial intelligence for inorganic materials. As inspired by the Pauling's rule, we propose that structure motifs in inorganic crystals can serve as a central input to a machine learning framework. We demonstrated that the presence of structure motifs and their connections in a large set of crystalline compounds can be converted into unique vector representations using an unsupervised learning algorithm. To demonstrate the use of structure motif information, a motif-centric learning framework is created by combining motif information with the atom-based graph neural networks to form an atom-motif dual graph network (AMDNet), which is more accurate in predicting the electronic structures of metal oxides such as bandgaps. The work illustrates the route toward fundamental design of graph neural network learning architecture for complex materials by incorporating beyond-atom physical principles.
将物理原理融入机器学习(ML)架构是推动无机材料人工智能持续发展的关键一步。受鲍林规则启发,我们提出无机晶体中的结构基序可作为机器学习框架的核心输入。我们证明,使用无监督学习算法,大量晶体化合物中结构基序的存在及其连接可转化为独特的向量表示。为展示结构基序信息的用途,通过将基序信息与基于原子的图神经网络相结合,创建了一个以基序为中心的学习框架,形成原子 - 基序双图网络(AMDNet),该网络在预测金属氧化物的电子结构(如带隙)方面更为准确。这项工作通过纳入超越原子的物理原理,阐明了复杂材料图神经网络学习架构的基础设计路径。