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首页> 外文期刊>International Journal of Quantum Chemistry >Crystal structure representations for machine learning models of formation energies
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Crystal structure representations for machine learning models of formation energies

机译:用于形成能的机器学习模型的晶体结构表示

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We introduce and evaluate a set of feature vector representations of crystal structures for machine learning (ML) models of formation energies of solids. ML models of atomization energies of organic molecules have been successful using a Coulomb matrix representation of the molecule. We consider three ways to generalize such representations to periodic systems: (i) a matrix where each element is related to the Ewald sum of the electrostatic interaction between two different atoms in the unit cell repeated over the lattice; (ii) an extended Coulomb-like matrix that takes into account a number of neighboring unit cells; and (iii) an ansatz that mimics the periodicity and the basic features of the elements in the Ewald sum matrix using a sine function of the crystal coordinates of the atoms. The representations are compared for a Laplacian kernel with Manhattan norm, trained to reproduce formation energies using a dataset of 3938 crystal structures obtained from the Materials Project. For training sets consisting of 3000 crystals, the generalization error in predicting formation energies of new structures corresponds to (i) 0.49, (ii) 0.64, and (iii) 0.37eV/atom for the respective representations. (c) 2015 Wiley Periodicals, Inc.
机译:我们介绍并评估了用于固体形成能的机器学习(ML)模型的晶体结构的特征向量表示集。使用分子的库仑矩阵表示法,有机分子的雾化能量的ML模型已经成功。我们考虑了三种将这些表示推广到周期系统的方法:(i)一个矩阵,其中每个元素与晶格中重复的晶胞中两个不同原子之间的静电相互作用的Ewald和有关; (ii)考虑到许多相邻的晶胞的扩展的库仑样矩阵; (iii)使用原子的晶体坐标的正弦函数来模拟Ewald和矩阵中元素的周期性和基本特征的ansatz。比较了使用曼哈顿标准的拉普拉斯核的表示,并使用从“材料计划”获得的3938个晶体结构的数据集对其进行了训练,以再生地层能。对于由3000个晶体组成的训练集,在预测新结构的形成能时的泛化误差分别对应于(i)0.49,(ii)0.64和(iii)0.37eV /原子。 (c)2015年威利期刊有限公司

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