多维材料的图形表示法

Tong Cai, Amanda J Parker, Amanda S. Barnard
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引用次数: 0

摘要

基于图的表示法与机器学习方法的整合正在改变材料发现的格局,为从分子和纳米材料到广阔的三维块体材料等各种材料的建模提供了灵活的方法。然而,文献往往缺乏从材料维度的角度进行系统的探讨。虽然设计出普遍适用于各种材料的表征和算法非常重要,但对于材料科学家来说,直观的做法是将维度与所使用的图描述符的特征之间的基本模式联系起来。在这篇综述中,我们概述了作为机器学习模型输入的图形表示法,并介绍了最近的应用,涵盖了各种材料维度。本综述强调了这些挑战的持续差距和创新解决方案,强调了对更大基准数据集和利用图形模式的迫切需要。随着基于图的机器学习技术的发展,它们为准确、可扩展和可解释的材料应用提供了一个前景广阔的前沿领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Graph Representation of Multi-dimensional Materials
The integration of graph-based representations with machine learning methodologies is transforming the landscape of material discovery, offering a flexible approach for modelling a variety of materials, from molecules and nanomaterials to expansive 3D bulk materials. Nonetheless, the literature often lacks a systematic exploration from the perspective of material dimensionality. While it is important to design representations and algorithms that are universally applicable across species, it is intuitive for material scientists to align the underlying patterns between dimensionality and the characteristics of the employed graph descriptors. In this review, we provide an overview of the graph representations as inputs to machine learning models and navigate the recent applications, spanning the diverse range of material dimensions. This review highlights both persistent gaps and innovative solutions to these challenges, emphasising the pressing need for larger benchmark datasets and leveraging graphical patterns. As graph-based machine learning techniques evolve, they present a promising frontier for accurate, scalable, and interpretable material applications.
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