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Neural Network Ansätze for Infinite Matter

ORAL

Abstract

Artificial neural networks have shown tremendous promise as a flexible ansatz for quantum many-body problems. In this work, we approximately solve the Schrödinger equation by performing variational Monte Carlo calculations with a deep, permutation-invariant neural network as a Jastrow correlator. We discuss the reinforcement learning scheme and the stochastic reconfiguration algorithm which helps stabilize the optimization of the wave function parameters. Ground state energies for the three-dimensional electron gas and infinite neutron matter will be compared to standard variational and diffusion Monte Carlo results.

Presenters

  • Jane M Kim

    Michigan State University

Authors

  • Jane M Kim

    Michigan State University

  • Bryce Fore

    Argonne National Lab

  • Alessandro Lovato

    Argonne National Laboratory

  • Morten Hjorth-Jensen

    Michigan State University