Affiliation:
1. Autonomous University of Sinaloa
2. Deutsche Elektronen-Synchrotron DESY
3. University of Salamanca
4. University of Regensburg
Abstract
In the context of high-energy physics, a reliable description of the
parton-level kinematics plays a crucial role for understanding the
internal structure of hadrons and improving the precision of the
calculations. In proton-proton collisions, this represents a challenging
task since extracting such information from experimental data is not
straightforward. With this in mind, we propose to tackle this problem by
studying the production of one hadron and a direct photon in
proton-proton collisions, including up to Next-to-Leading Order Quantum
Chromodynamics and Leading-Order Quantum Electrodynamics corrections.
Using Monte-Carlo integration, we simulate the collisions and analyze
the events to determine the correlations among measurable and partonic
quantities. Then, we use these results to feed three different Machine
Learning algorithms that allow us to find the momentum fractions of the
partons involved in the process, in terms of suitable combinations of
the final state momenta. Our results are compatible with previous
findings and suggest a powerful application of Machine-Learning to model
high-energy collisions at the partonic-level with high-precision.
Funder
Consejo Nacional de Ciencia y Tecnología
Deutsche Forschungsgemeinschaft
European Cooperation in Science and Technology
Horizon 2020
Ministerio de Ciencia e Innovación
Universidad Autónoma de Sinaloa
Universidad de Salamanca
Cited by
1 articles.
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