학술논문

Data-driven study of timelike Compton scattering.
Document Type
Article
Source
European Physical Journal C -- Particles & Fields. Feb2020, Vol. 80 Issue 2, p1-9. 9p.
Subject
*ARTIFICIAL neural networks
*COMPTON scattering
*PARTONS
Language
ISSN
1434-6044
Abstract
In the framework of collinear QCD factorization, the leading twist scattering amplitudes for deeply virtual Compton scattering (DVCS) and timelike Compton scattering (TCS) are intimately related thanks to analytic properties of leading and next-to-leading order amplitudes. We exploit this welcome feature to make data-driven predictions for TCS observables to be measured in near future experiments. Using a recent extraction of DVCS Compton form factors from most of the existing experimental data for that process, we derive TCS amplitudes and calculate TCS observables only assuming leading-twist dominance. Artificial neural network techniques are used for an essential reduction of model dependency, while a careful propagation of experimental uncertainties is achieved with replica methods. Our analysis allows for stringent tests of the leading twist dominance of DVCS and TCS amplitudes. Moreover, this study helps to understand quantitatively the complementarity of DVCS and TCS measurements to test the universality of generalized parton distributions, which is crucial e.g. to perform the nucleon tomography. [ABSTRACT FROM AUTHOR]