电子密度的可转移机器学习模型

Andrea Grisafi, Alberto Fabrizio, Benjamin Meyer, D. Wilkins, C. Corminboeuf, M. Ceriotti
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引用次数: 156

摘要

我们在少量参考计算的基础上引入了一个以原子为中心、对称适应的框架来机器学习价电荷密度。该模型具有高度可转移性,这意味着它可以在小分子的电子结构数据上进行训练,并以低线性缩放成本用于预测较大化合物的电荷密度。
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A Transferable Machine-Learning Model of the Electron Density
We introduce an atom-centered, symmetry-adapted framework to machine-learn the valence charge density based on a small number of reference calculations. The model is highly transferable, meaning it can be trained on electronic-structure data of small molecules and used to predict the charge density of larger compounds with low, linear-scaling cost.
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