论文标题

用于机器学习力场自动建模的算法分化

Algorithmic Differentiation for Automated Modeling of Machine Learned Force Fields

论文作者

Schmitz, Niklas Frederik, Müller, Klaus-Robert, Chmiela, Stefan

论文摘要

来自原子模拟数据的重建力场(FFS)是一个挑战,因为准确的数据可能非常昂贵。在这里,机器学习(ML)模型可以帮助成为数据经济,因为可以使用基本的对称和物理保护定律成功限制它们。但是,到目前为止,每个针对ML模型新提出的描述符都需要进行繁琐且数学繁琐的重塑。因此,我们建议在ML建模过程中使用来自算法分化的现代技术 - 有效地以更高的计算效率阶以完全自动自动使用新颖的描述符或模型。这种范式的方法不仅可以使新的表示形式的多功能用法和较大系统的有效计算(对FF社区都具有很高的价值),而且还可以简单地包含进一步的物理知识,例如高阶信息(例如,Hessians,更复杂的部分偏微分方程等),甚至超出了呈现的FF域。

Reconstructing force fields (FFs) from atomistic simulation data is a challenge since accurate data can be highly expensive. Here, machine learning (ML) models can help to be data economic as they can be successfully constrained using the underlying symmetry and conservation laws of physics. However, so far, every descriptor newly proposed for an ML model has required a cumbersome and mathematically tedious remodeling. We therefore propose using modern techniques from algorithmic differentiation within the ML modeling process -- effectively enabling the usage of novel descriptors or models fully automatically at an order of magnitude higher computational efficiency. This paradigmatic approach enables not only a versatile usage of novel representations and the efficient computation of larger systems -- all of high value to the FF community -- but also the simple inclusion of further physical knowledge such as higher-order information (e.g. Hessians, more complex partial differential equations constraints etc.), even beyond the presented FF domain.

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