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Applications of flow models to the generation of correlated lattice QCD ensembles

Authors :
Abbott, Ryan
Botev, Aleksandar
Boyda, Denis
Hackett, Daniel C.
Kanwar, Gurtej
Racanière, Sébastien
Rezende, Danilo J.
Romero-López, Fernando
Shanahan, Phiala E.
Urban, Julian M.
Publication Year :
2024

Abstract

Machine-learned normalizing flows can be used in the context of lattice quantum field theory to generate statistically correlated ensembles of lattice gauge fields at different action parameters. This work demonstrates how these correlations can be exploited for variance reduction in the computation of observables. Three different proof-of-concept applications are demonstrated using a novel residual flow architecture: continuum limits of gauge theories, the mass dependence of QCD observables, and hadronic matrix elements based on the Feynman-Hellmann approach. In all three cases, it is shown that statistical uncertainties are significantly reduced when machine-learned flows are incorporated as compared with the same calculations performed with uncorrelated ensembles or direct reweighting.<br />Comment: 12 pages, 2 tables, 5 figures. v2: accepted for publication

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2401.10874
Document Type :
Working Paper