Understanding machine-learned density functionals

被引:124
|
作者
Li, Li [1 ]
Snyder, John C. [2 ,3 ]
Pelaschier, Isabelle M. [1 ,4 ]
Huang, Jessica [5 ]
Niranjan, Uma-Naresh [6 ]
Duncan, Paul [5 ]
Rupp, Matthias [7 ,8 ,9 ]
Mueller, Klaus-Robert [2 ,10 ]
Burke, Kieron [1 ,5 ]
机构
[1] Univ Calif Irvine, Dept Phys & Astron, Irvine, CA 92697 USA
[2] Tech Univ Berlin, Machine Learning Grp, D-10587 Berlin, Germany
[3] Max Planck Inst Microstruct Phys, Weinberg 2, D-06120 Halle, Saale, Germany
[4] Vanderbilt Univ, Dept Phys, Nashville, TN 37235 USA
[5] Univ Calif Irvine, Dept Chem, Irvine, CA 92697 USA
[6] Univ Calif Irvine, Dept Comp Sci, Irvine, CA 92697 USA
[7] Univ Basel, Dept Chem, Inst Phys Chem, CH-4056 Basel, Switzerland
[8] Univ Basel, Dept Chem, Natl Ctr Computat Design & Discovery Novel Mat MA, CH-4056 Basel, Switzerland
[9] Max Planck Gesell, Fritz Haber Inst, D-14195 Berlin, Germany
[10] Korea Univ, Dept Brain & Cognit Engn, Seoul 136713, South Korea
关键词
density functional theory; machine learning; orbital free; kinetic energy functional; self-consistent calculation; KINETIC-ENERGY; APPROXIMATION; ATOMS;
D O I
10.1002/qua.25040
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
Machine learning (ML) is an increasingly popular statistical tool for analyzing either measured or calculated data sets. Here, we explore its application to a well-defined physics problem, investigating issues of how the underlying physics is handled by ML, and how self-consistent solutions can be found by limiting the domain in which ML is applied. The particular problem is how to find accurate approximate density functionals for the kinetic energy (KE) of noninteracting electrons. Kernel ridge regression is used to approximate the KE of non-interacting fermions in a one dimensional box as a functional of their density. The properties of different kernels and methods of cross-validation are explored, reproducing the physics faithfully in some cases, but not others. We also address how self-consistency can be achieved with information on only a limited electronic density domain. Accurate constrained optimal densities are found via a modified Euler-Lagrange constrained minimization of the machine-learned total energy, despite the poor quality of its functional derivative. A projected gradient descent algorithm is derived using local principal component analysis. Additionally, a sparse grid representation of the density can be used without degrading the performance of the methods. The implications for machine-learned density functional approximations are discussed. (c) 2015 Wiley Periodicals, Inc.
引用
收藏
页码:819 / 833
页数:15
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