Finding density functionals with machine learning

ORAL

Abstract

Using standard methods from machine learning, we introduce a novel technique for density functional approximation. We use kernel ridge regression with a Gaussian kernel to approximate the non-interacting kinetic energy of 1-dimensional multi-electron systems. With fewer than 100 training densities, we can achieve mean absolute errors of less than 1 kcal/mol on new densities. We determine densities for which our new functional will fail or perform well. Finally, we use principle component analysis to extract accurate functional derivatives from our functional, enabling an orbital-free minimization of the total energy to find a self-consistent density. This empirical method has two parameters, set via cross-validation, and requires no human intuition. In principle, this general technique can be extended to multi-dimensional systems, and can be used to approximate exchange-correlation density functionals.

Authors

  • John Snyder

    University of California, Irvine

  • Matthias Rupp

    Eidgenossische Technische Hochschule, Zurich

  • Katja Hansen

    Technische Universitat, Berlin

  • Klaus Mueller

    Technische Universitat, Berlin

  • Kieron Burke

    Departments of physics and chemistry, University of California, Irvine, University of California, Irvine, Department of Chemistry, University of California, 1102 Natural Sciences 2, Irvine, California 92697-2025, USA, Departments of Physics and Chemistry, University of California, Irvine