Back to Search Start Over

Flow-based sampling for fermionic lattice field theories

Authors :
Albergo, Michael S.
Kanwar, Gurtej
Racanière, Sébastien
Rezende, Danilo J.
Urban, Julian M.
Boyda, Denis
Cranmer, Kyle
Hackett, Daniel C.
Shanahan, Phiala E.
Albergo, Michael S.
Kanwar, Gurtej
Racanière, Sébastien
Rezende, Danilo J.
Urban, Julian M.
Boyda, Denis
Cranmer, Kyle
Hackett, Daniel C.
Shanahan, Phiala E.
Publication Year :
2021

Abstract

Algorithms based on normalizing flows are emerging as promising machine learning approaches to sampling complicated probability distributions in a way that can be made asymptotically exact. In the context of lattice field theory, proof-of-principle studies have demonstrated the effectiveness of this approach for scalar theories, gauge theories, and statistical systems. This work develops approaches that enable flow-based sampling of theories with dynamical fermions, which is necessary for the technique to be applied to lattice field theory studies of the Standard Model of particle physics and many condensed matter systems. As a practical demonstration, these methods are applied to the sampling of field configurations for a two-dimensional theory of massless staggered fermions coupled to a scalar field via a Yukawa interaction.<br />Comment: 26 pages, 5 figures

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1417124966
Document Type :
Electronic Resource
Full Text :
https://doi.org/10.1103.PhysRevD.104.114507