Machine learning-based compression of quantum many body physics: PCA and autoencoder representation of the vertex function

ORAL

Abstract

The vertex function, a continuous function of three momenta describing particle-particle scattering that is typically obtained by sophisticated calculations, plays a central role in the Feynman diagram approach to quantum many-body physics. Here, we use Principal Component Analysis (PCA) and a deep convolutional autoencoder to derive compact, low-dimensional representations of the vertex functions derived using the functional renormalization group for the two dimensional Hubbard model, a paradigmatic theoretical model of interacting electrons on a lattice. Both methodologies successfully reduced the dimensionality to a mere few dimensions while preserving accuracy. PCA demonstrated superior performance in dimensionality reduction compared to the autoencoder. The results suggest the presence of a fundamental underlying structure in the vertex function and suggest paths to dramatically reducing the computational complexity of quantum many-body calculations.

*J. Z., and A.J.M. acknowledge support from the NSF MRSEC program through the Center for Precision-Assembled Quantum Materials (PAQM)—DMR-2011738.

Presenters

  • Jiawei Zang

    • Columbia University

Authors

  • Jiawei Zang

    • Columbia University
  • Andrew Millis

    • Columbia University
  • Matija Medvidović

    • Columbia University; Center for Computational Quantum Physics, Flatiron Institute
    • Columbia University
  • Dominik Kiese

    • Center for Computational Quantum Physics, Flatiron Institute
    • Flatiron Institute, Simons Foundation
  • Domenico Di Sante

    • University of Bologna
  • Anirvan M Sengupta

    • Rutgers University, New Brunswick