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首页> 外文期刊>Physical chemistry chemical physics: PCCP >Feature optimization for atomistic machine learning yields a data-driven construction of the periodic table of the elements
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Feature optimization for atomistic machine learning yields a data-driven construction of the periodic table of the elements

机译:原始机器学习的特征优化产生了元素周期表的数据驱动构造

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摘要

Machine-learning of atomic-scale properties amounts to extracting correlations between structure, composition and the quantity that one wants to predict. Representing the input structure in a way that best reflects such correlations makes it possible to improve the accuracy of the model for a given amount of reference data. When using a description of the structures that is transparent and well-principled, optimizing the representation might reveal insights into the chemistry of the data set. Here we show how one can generalize the SOAP kernel to introduce a distance-dependent weight that accounts for the multi-scale nature of the interactions, and a description of correlations between chemical species. We show that this improves substantially the performance of ML models of molecular and materials stability, while making it easier to work with complex, multi-component systems and to extend SOAP to coarse-grained intermolecular potentials. The element correlations that give the best performing model show striking similarities with the conventional periodic table of the elements, providing an inspiring example of how machine learning can rediscover, and generalize, intuitive concepts that constitute the foundations of chemistry.
机译:机器学习原子尺度属性的量,以提取结构,组成和想要预测的数量之间的相关性。以最佳反映这种相关方式的方式表示输入结构使得可以提高给定量的参考数据的模型的准确性。当使用透明且原则优化的结构的描述时,优化表示可能会显示进入数据集的化学性的见解。在这里,我们展示了如何概括肥皂核,以引入差距的重量,该重量涉及相互作用的多尺度性质,以及化学物种之间的相关性描述。我们表明,这提高了ML模型的分子和材料稳定性的性能,同时使得更容易使用复杂的多组分系统并将肥皂延伸到粗粒分子间电位。给出最佳性能模型的元素相关性显示与元件的传统周期表一起显示出醒目的相似性,提供了机器学习如何重新发现的鼓舞人员,并概括构成化学基础的概念。

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    Ecole Polytech Fed Lausanne Inst Mat Natl Ctr Computat Design &

    Discovery Novel Mat MA Lab Computat Sci &

    Modelling Lausanne Switzerland;

    Ecole Polytech Fed Lausanne Inst Mat Natl Ctr Computat Design &

    Discovery Novel Mat MA Lab Computat Sci &

    Modelling Lausanne Switzerland;

    Ecole Polytech Fed Lausanne Inst Mat Natl Ctr Computat Design &

    Discovery Novel Mat MA Lab Computat Sci &

    Modelling Lausanne Switzerland;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 物理学;化学;
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