Learning (from) the Electron Density: Transferability, Conformational and Chemical Diversity

Author:

Fabrizio Alberto,Briling Ksenia,Grisafi Andrea,Corminboeuf Clémence

Abstract

Machine-learning in quantum chemistry is currently booming, with reported applications spanning all molecular properties from simple atomization energies to complex mathematical objects such as the many-body wavefunction. Due to its central role in density functional theory, the electron density is a particularly compelling target for non-linear regression. Nevertheless, the scalability and the transferability of the existing machine-learning models of ?(r) are limited by its complex rotational symmetries. Recently, in collaboration with Ceriotti and coworkers, we combined an efficient electron density decomposition scheme with a local regression framework based on symmetry-adapted Gaussian process regression able to accurately describe the covariance of the electron density spherical tensor components. The learning exercise is performed on local environments, allowing high transferability and linear-scaling of the prediction with respect to the number of atoms. Here, we review the main characteristics of the model and show its predictive power in a series of applications. The scalability and transferability of the trained model are demonstrated through the prediction of the electron density of Ubiquitin.

Publisher

Swiss Chemical Society

Subject

General Medicine,General Chemistry

Cited by 9 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Predicting the charge density response in metal electrodes;Physical Review Materials;2023-12-22

2. Electronic-Structure Properties from Atom-Centered Predictions of the Electron Density;Journal of Chemical Theory and Computation;2022-12-01

3. Quantum Chemical Roots of Machine-Learning Molecular Similarity Descriptors;Journal of Chemical Theory and Computation;2022-10-11

4. Learning Electron Densities in the Condensed Phase;Journal of Chemical Theory and Computation;2021-10-20

5. Gaussian Process Regression for Materials and Molecules;Chemical Reviews;2021-08-16

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