Machine Learning for Dynamical Mean Field Theory

ORAL

Abstract

Machine Learning (ML), an approach that infers new results from accumulated knowledge, is in use for a variety of tasks ranging from face and voice recognition to internet searching and has recently been gaining increasing importance in chemistry and physics [1]. In this talk, we investigate the possibility of using ML to solve the equations of dynamical mean field theory which otherwise requires the (numerically very expensive) solution of a quantum impurity model. Our ML scheme requires the relation between two functions: the hybridization function describing the bare (local) electronic structure of a material and the self-energy describing the many body physics. We discuss the parameterization of the two functions for the exact diagonalization solver and present examples, beginning with the Anderson Impurity model with a fixed bath density of states, demonstrating the advantages and the pitfalls of the method.\\[4pt] [1] J. Chem. Theory Comput., 9 3404 (2013)

*DOE contract DE-AC02-06CH11357

Authors

  • Louis-Francois Arsenault

    • Department of Physics, Columbia University, New York, NY 10027, USA
  • Alejandro Lopez-Bezanilla

    • Argonne National Laboratory
    • Physical Sciences and Engineering, Argonne National Laboratory, Argonne, Illinois 60439, USA
  • O. Anatole von Lilienfeld

    • University of Basel
    • Department of Chemistry, University of Basel, Basel, Switzerland
  • Peter Littlewood

    • Argonne National Laboratory
    • Physical Sciences and Engineering, Argonne National Laboratory, Argonne, Illinois 60439, USA
    • Univ of Chicago
  • Andrew Millis

    • Columbia University
    • Department of Physics, Columbia University, New York, NY 10027, USA
    • Department of Physics, Columbia University
    • Columbia Univ