Symmetry-Adapted Machine Learning for Tensorial Properties of Atomistic Systems 论文

2018Physical Review Letters引用 317
Machine Learning in Materials ScienceComputational Drug Discovery MethodsX-ray Diffraction in Crystallography

详细信息

发表期刊/会议
Physical Review Letters
发表日期
2018-01-19
发表年份
2018

关键词

Machine Learning in Materials ScienceComputational Drug Discovery MethodsX-ray Diffraction in Crystallography

摘要

Statistical learning methods show great promise in providing an accurate prediction of materials and molecular properties, while minimizing the need for computationally demanding electronic structure calculations. The accuracy and transferability of these models are increased significantly by encoding into the learning procedure the fundamental symmetries of rotational and permutational invariance of scalar properties. However, the prediction of tensorial properties requires that the model respects the appropriate geometric transformations, rather than invariance, when the reference frame is rotated. We introduce a formalism that extends existing schemes and makes it possible to perform machine learning of tensorial properties of arbitrary rank, and for general molecular geometries. To demonstrate it, we derive a tensor kernel adapted to rotational symmetry, which is the natural generalization of the smooth overlap of atomic positions kernel commonly used for the prediction of scalar properties at the atomic scale. The performance and generality of the approach is demonstrated by learning the instantaneous response to an external electric field of water oligomers of increasing complexity, from the isolated molecule to the condensed phase.