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Incorporating long-range physics in atomic-scale machine learning

机译:在原子级机器学习中纳入远程物理

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摘要

The most successful and popular machine learning models of atomic-scale properties derive their transferability from a locality ansatz. The properties of a large molecule or a bulk material are written as a sum over contributions that depend on the configurations within finite atom-centered environments. The obvious downside of this approach is that it cannot capture nonlocal, nonadditive effects such as those arising due to long-range electrostatics or quantum interference. We propose a solution to this problem by introducing nonlocal representations of the system, which are remapped as feature vectors that are defined locally and are equivariant in O(3). We consider, in particular, one form that has the same asymptotic behavior as the electrostatic potential. We demonstrate that this framework can capture nonlocal, long-range physics by building a model for the electrostatic energy of randomly distributed point-charges, for the unrelaxed binding curves of charged organic molecular dimers, and for the electronic dielectric response of liquid water. By combining a representation of the system that is sensitive to long-range correlations with the transferability of an atom-centered additive model, this method outperforms current state-of-the-art machine-learning schemes and provides a conceptual framework to incorporate nonlocal physics into atomistic machine learning. Published under license by AIP Publishing.
机译:原子尺度特性最成功和最流行的机器学习模型从地区ANSATZ中得出其可转移性。大分子或散装材料的性质被写为依赖于有限原子为中心环境中的配置的总和。这种方法的明显下行是它不能捕获非局部的非吸收效应,例如由于远程静脉静态或量子干扰而产生的效果。我们通过引入系统的非局部表示来提出解决此问题的解决方案,该系统被重新映射为在本地定义的特征向量,并且在O(3)中具有等值。我们认为,特别是一种具有与静电潜力相同的渐近行为的形式。我们证明该框架可以通过为带电有机分子二聚体的未密封的结合曲线构建用于随机分布的点电荷的静电能量的模型来捕获非局部远程物理学,以及用于液态水的电子介电响应。通过将系统的表示与远程相关性敏感的系统与原子为中心的添加剂模型的可转换性相结合,该方法优于当前最先进的机器学习方案,并提供了一种概念框架来包含非局部物理学进入原子的机器学习。通过AIP发布在许可证下发布。

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