학술논문

Combining lattice QCD and phenomenological inputs on generalised parton distributions at moderate skewness.
Document Type
Article
Source
European Physical Journal C -- Particles & Fields. Feb2024, Vol. 84 Issue 2, p1-15. 15p.
Subject
*ARTIFICIAL neural networks
*PARTONS
*QUANTUM chromodynamics
*COMPTON scattering
*DATA mining
*DATA extraction
Language
ISSN
1434-6044
Abstract
We present a systematic study demonstrating the impact of lattice QCD data on the extraction of generalised parton distributions (GPDs). For this purpose, we use a previously developed modelling of GPDs based on machine learning techniques fulfilling the theoretical requirements of polynomiality, a form of positivity constraint and known reduction limits. A special care is given to estimate the uncertainty stemming from the ill-posed character of the connection between GPDs and the experimental processes usually considered to constrain them, like deeply virtual Compton scattering (DVCS). Moke lattice QCD data inputs are included in a Bayesian framework to a prior model based on an Artificial Neural Network. This prior model is fitted to reproduce the most experimentally accessible information of a phenomenological extraction by Goloskokov and Kroll. We highlight the impact of the precision, correlation and kinematic coverage of lattice data on GPD extraction at moderate ξ which has only been brushed in the literature so far, paving the way for a joint extraction of GPDs. [ABSTRACT FROM AUTHOR]