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Machine-learning techniques as noise reduction strategies in lattice calculations of the muon $g-2$

Authors :
Blum, Thomas
Conigli, Alessandro
Geyer, Lukas
Kuberski, Simon
Segner, Alexander
Wittig, Hartmut
Publication Year :
2025

Abstract

Lattice calculations of the hadronic contributions to the muon anomalous magnetic moment are numerically highly demanding due to the necessity of reaching total errors at the sub-percent level. Noise-reduction techniques such as low-mode averaging have been applied successfully to determine the vector-vector correlator with high statistical precision in the long-distance regime, but display an unfavourable scaling in terms of numerical cost. This is particularly true for the mixed contribution in which one of the two quark propagators is described in terms of low modes. Here we report on an ongoing project aimed at investigating the potential of machine learning as a cost-effective tool to produce approximate estimates of the mixed contribution, which are then bias-corrected to produce an exact result. A second example concerns the determination of electromagnetic isospin-breaking corrections by combining the predictions from a trained model with a bias correction.<br />Comment: 9 pages, Proceedings of the 41st International Symposium on Lattice Field Theory (LATTICE2024), University of Liverpool, 28 July - 3 August 2024

Subjects

Subjects :
High Energy Physics - Lattice

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2502.10237
Document Type :
Working Paper