用神经网络分析分子中的原子相互作用。

IF 5.5 1区 化学 Q2 CHEMISTRY, PHYSICAL Journal of Chemical Theory and Computation Pub Date : 2025-01-28 Epub Date: 2025-01-10 DOI:10.1021/acs.jctc.4c01424
Malte Esders, Thomas Schnake, Jonas Lederer, Adil Kabylda, Grégoire Montavon, Alexandre Tkatchenko, Klaus-Robert Müller
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引用次数: 0

摘要

虽然机器学习(ML)模型已经能够在量子化学的各种预测任务中实现前所未有的准确性,但现在很明显,仅在测试集上的准确性并不能保证稳定分子动力学(MD)等强大的化学建模。为了超越准确性,我们使用可解释的人工智能(XAI)技术来开发原子相互作用的通用分析框架,并将其应用于SchNet和PaiNN神经网络模型。我们将这些相互作用与一组基本化学原理进行比较,以了解模型如何从数据中学习潜在的物理化学概念。我们关注不同原子种类相互作用的强度,如何预测密集和广泛的量子分子性质,并分析相互作用随原子间距离的衰减和多体性质。偏离已知物理原理太远的模型会产生不稳定的MD轨迹,即使它们具有非常高的能量和力预测精度。我们还建议进一步改进机器学习架构,以更好地解释原子相互作用的多项式衰减。
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Analyzing Atomic Interactions in Molecules as Learned by Neural Networks.

While machine learning (ML) models have been able to achieve unprecedented accuracies across various prediction tasks in quantum chemistry, it is now apparent that accuracy on a test set alone is not a guarantee for robust chemical modeling such as stable molecular dynamics (MD). To go beyond accuracy, we use explainable artificial intelligence (XAI) techniques to develop a general analysis framework for atomic interactions and apply it to the SchNet and PaiNN neural network models. We compare these interactions with a set of fundamental chemical principles to understand how well the models have learned the underlying physicochemical concepts from the data. We focus on the strength of the interactions for different atomic species, how predictions for intensive and extensive quantum molecular properties are made, and analyze the decay and many-body nature of the interactions with interatomic distance. Models that deviate too far from known physical principles produce unstable MD trajectories, even when they have very high energy and force prediction accuracy. We also suggest further improvements to the ML architectures to better account for the polynomial decay of atomic interactions.

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来源期刊
Journal of Chemical Theory and Computation
Journal of Chemical Theory and Computation 化学-物理:原子、分子和化学物理
CiteScore
9.90
自引率
16.40%
发文量
568
审稿时长
1 months
期刊介绍: The Journal of Chemical Theory and Computation invites new and original contributions with the understanding that, if accepted, they will not be published elsewhere. Papers reporting new theories, methodology, and/or important applications in quantum electronic structure, molecular dynamics, and statistical mechanics are appropriate for submission to this Journal. Specific topics include advances in or applications of ab initio quantum mechanics, density functional theory, design and properties of new materials, surface science, Monte Carlo simulations, solvation models, QM/MM calculations, biomolecular structure prediction, and molecular dynamics in the broadest sense including gas-phase dynamics, ab initio dynamics, biomolecular dynamics, and protein folding. The Journal does not consider papers that are straightforward applications of known methods including DFT and molecular dynamics. The Journal favors submissions that include advances in theory or methodology with applications to compelling problems.
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