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Machine learning estimators for lattice QCD observables

Authors :
Rajan Gupta
Boram Yoon
Tanmoy Bhattacharya
Source :
Physical Review
Publication Year :
2019
Publisher :
American Physical Society (APS), 2019.

Abstract

A novel technique using machine learning (ML) to reduce the computational cost of evaluating lattice quantum chromodynamics (QCD) observables is presented. The ML is trained on a subset of background gauge field configurations, called the labeled set, to predict an observable $O$ from the values of correlated, but less compute-intensive, observables $\mathbf{X}$ calculated on the full sample. By using a second subset, also part of the labeled set, we estimate the bias in the result predicted by the trained ML algorithm. A reduction in the computational cost by about $7\%-38\%$ is demonstrated for two different lattice QCD calculations using the Boosted decision tree regression ML algorithm: (1) prediction of the nucleon three-point correlation functions that yield isovector charges from the two-point correlation functions, and (2) prediction of the phase acquired by the neutron mass when a small Charge-Parity (CP) violating interaction, the quark chromoelectric dipole moment interaction, is added to QCD, again from the two-point correlation functions calculated without CP violation.<br />8 pages, 5 figures

Details

ISSN :
24700029 and 24700010
Volume :
100
Database :
OpenAIRE
Journal :
Physical Review D
Accession number :
edsair.doi.dedup.....78e88af64c956532b135cda1c3f30b24
Full Text :
https://doi.org/10.1103/physrevd.100.014504