人工神经网络
可解释性
接口
参数化复杂度
简单(哲学)
统计物理学
哈密顿量(控制论)
计算机科学
深度学习
物理
人工智能
理论物理学
算法
数学
计算机硬件
数学优化
哲学
认识论
作者
Tetiana Zubatyuk,Benjamin Nebgen,Nicholas Lubbers,Justin S. Smith,R.I. Zubatyuk,Guoqing Zhou,Christopher Koh,Kipton Barros,Olexandr Isayev,Sergei Tretiak
出处
期刊:Cornell University - arXiv
日期:2019-01-01
被引量:2
标识
DOI:10.48550/arxiv.1909.12963
摘要
The H\"uckel Hamiltonian is an incredibly simple tight-binding model famed for its ability to capture qualitative physics phenomena arising from electron interactions in molecules and materials. Part of its simplicity arises from using only two types of empirically fit physics-motivated parameters: the first describes the orbital energies on each atom and the second describes electronic interactions and bonding between atoms. By replacing these traditionally static parameters with dynamically predicted values, we vastly increase the accuracy of the extended H\"uckel model. The dynamic values are generated with a deep neural network, which is trained to reproduce orbital energies and densities derived from density functional theory. The resulting model retains interpretability while the deep neural network parameterization is smooth, accurate, and reproduces insightful features of the original static parameterization. Finally, we demonstrate that the H\"uckel model, and not the deep neural network, is responsible for capturing intricate orbital interactions in two molecular case studies. Overall, this work shows the promise of utilizing machine learning to formulate simple, accurate, and dynamically parameterized physics models.
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