物理约束机器学习的电子激发态

IF 12.7 1区 化学 Q1 CHEMISTRY, MULTIDISCIPLINARY ACS Central Science Pub Date : 2024-02-29 DOI:10.1021/acscentsci.3c01480
Edoardo Cignoni, Divya Suman, Jigyasa Nigam, Lorenzo Cupellini, Benedetta Mennucci and Michele Ceriotti*, 
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引用次数: 0

摘要

数据驱动技术越来越多地被用来取代物质的电子结构计算。在这种情况下,一个相关的问题是机器学习(ML)应该直接用于预测所需的特性,还是明确地与物理基础操作相结合。我们介绍了一个综合建模方法的实例,其中对有效哈密顿的对称性适应 ML 模型进行了训练,以重现量子力学计算中的电子激发。由此产生的模型可以预测比它所训练的分子大得多、复杂得多的分子,并通过间接瞄准良好聚合计算的输出,同时使用与最小原子中心基础相对应的参数化,极大地节省了计算量。这些成果强调了将数据驱动技术与物理近似交织在一起的优点,在不影响 ML 模型的准确性和计算效率的前提下提高了模型的可转移性和可解释性,并为开发 ML 增强电子结构方法提供了蓝图。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Electronic Excited States from Physically Constrained Machine Learning

Data-driven techniques are increasingly used to replace electronic-structure calculations of matter. In this context, a relevant question is whether machine learning (ML) should be applied directly to predict the desired properties or combined explicitly with physically grounded operations. We present an example of an integrated modeling approach in which a symmetry-adapted ML model of an effective Hamiltonian is trained to reproduce electronic excitations from a quantum-mechanical calculation. The resulting model can make predictions for molecules that are much larger and more complex than those on which it is trained and allows for dramatic computational savings by indirectly targeting the outputs of well-converged calculations while using a parametrization corresponding to a minimal atom-centered basis. These results emphasize the merits of intertwining data-driven techniques with physical approximations, improving the transferability and interpretability of ML models without affecting their accuracy and computational efficiency and providing a blueprint for developing ML-augmented electronic-structure methods.

Development of a hybrid model integrating a data-driven prediction of molecular Hamiltonians and physics-based postprocessing yields an accurate and balanced description of excited states.

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来源期刊
ACS Central Science
ACS Central Science Chemical Engineering-General Chemical Engineering
CiteScore
25.50
自引率
0.50%
发文量
194
审稿时长
10 weeks
期刊介绍: ACS Central Science publishes significant primary reports on research in chemistry and allied fields where chemical approaches are pivotal. As the first fully open-access journal by the American Chemical Society, it covers compelling and important contributions to the broad chemistry and scientific community. "Central science," a term popularized nearly 40 years ago, emphasizes chemistry's central role in connecting physical and life sciences, and fundamental sciences with applied disciplines like medicine and engineering. The journal focuses on exceptional quality articles, addressing advances in fundamental chemistry and interdisciplinary research.
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