Kernel based quantum machine learning at record rate: Many-body distribution functionals as compact representations

被引:5
|
作者
Khan, Danish [1 ,2 ]
Heinen, Stefan [2 ]
von Lilienfeld, O. Anatole [1 ,2 ,3 ,4 ,5 ,6 ]
机构
[1] Univ Toronto, Dept Chem, St George Campus, Toronto, ON M5S 1A1, Canada
[2] Vector Inst Artificial Intelligence, Toronto, ON M5S 1M1, Canada
[3] Univ Toronto, Dept Mat Sci & Engn, St George Campus, Toronto, ON M5S 1A1, Canada
[4] Univ Toronto, Dept Phys, St George Campus, Toronto, ON M5S 1A1, Canada
[5] Tech Univ Berlin, Machine Learning Grp, D-10587 Berlin, Germany
[6] Inst Fdn Learning & Data, D-10587 Berlin, Germany
来源
JOURNAL OF CHEMICAL PHYSICS | 2023年 / 159卷 / 03期
基金
欧洲研究理事会;
关键词
POTENTIAL-ENERGY SURFACES; GAUSSIAN APPROXIMATION POTENTIALS; NEURAL-NETWORK; MOLECULAR-PROPERTIES; MODEL CHEMISTRY; MECHANICS; ACCURACY; DESCRIPTORS;
D O I
10.1063/5.0152215
中图分类号
O64 [物理化学(理论化学)、化学物理学];
学科分类号
070304 ; 081704 ;
摘要
The feature vector mapping used to represent chemical systems is a key factor governing the superior data efficiency of kernel based quantum machine learning (QML) models applicable throughout chemical compound space. Unfortunately, the most accurate representations require a high dimensional feature mapping, thereby imposing a considerable computational burden on model training and use. We introduce compact yet accurate, linear scaling QML representations based on atomic Gaussian many-body distribution functionals (MBDF) and their derivatives. Weighted density functions of MBDF values are used as global representations that are constant in size, i.e., invariant with respect to the number of atoms. We report predictive performance and training data efficiency that is competitive with state-of-the-art for two diverse datasets of organic molecules, QM9 and QMugs. Generalization capability has been investigated for atomization energies, highest occupied molecular orbital-lowest unoccupied molecular orbital eigenvalues and gap, internal energies at 0 K, zero point vibrational energies, dipole moment norm, static isotropic polarizability, and heat capacity as encoded in QM9. MBDF based QM9 performance lowers the optimal Pareto front spanned between sampling and training cost to compute node minutes, effectively sampling chemical compound space with chemical accuracy at a sampling rate of similar to 48 molecules per core second. (c) 2023 Author(s). All article content, except where otherwise noted, is licensed under a Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
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页数:14
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