English

Simulating the Hubbard Model with Equivariant Normalizing Flows

Strongly Correlated Electrons 2025-01-14 v1 Machine Learning High Energy Physics - Lattice

Abstract

Generative models, particularly normalizing flows, have shown exceptional performance in learning probability distributions across various domains of physics, including statistical mechanics, collider physics, and lattice field theory. In the context of lattice field theory, normalizing flows have been successfully applied to accurately learn the Boltzmann distribution, enabling a range of tasks such as direct estimation of thermodynamic observables and sampling independent and identically distributed (i.i.d.) configurations. In this work, we present a proof-of-concept demonstration that normalizing flows can be used to learn the Boltzmann distribution for the Hubbard model. This model is widely employed to study the electronic structure of graphene and other carbon nanomaterials. State-of-the-art numerical simulations of the Hubbard model, such as those based on Hybrid Monte Carlo (HMC) methods, often suffer from ergodicity issues, potentially leading to biased estimates of physical observables. Our numerical experiments demonstrate that leveraging i.i.d.\ sampling from the normalizing flow effectively addresses these issues.

Keywords

Cite

@article{arxiv.2501.07371,
  title  = {Simulating the Hubbard Model with Equivariant Normalizing Flows},
  author = {Dominic Schuh and Janik Kreit and Evan Berkowitz and Lena Funcke and Thomas Luu and Kim A. Nicoli and Marcel Rodekamp},
  journal= {arXiv preprint arXiv:2501.07371},
  year   = {2025}
}

Comments

14 pages, 5 figures, contribution to the 41st International Symposium on Lattice Field Theory (Lattice 2024), July 28th - August 3rd, 2024, Liverpool, UK