Identifying quenched jets in heavy ion collisions with machine learning

Publication date

2023-04

Authors

Liu, Lihan
Velkovska, Julia
Wu, Yilun
Verweij, M.ORCID 0000-0002-1504-3420ISNI 0000000387711368

Editors

Advisors

Supervisors

Document Type

Article
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License

cc_by

Abstract

Measurements of jet substructure in ultra-relativistic heavy ion collisions suggest that the jet showering process is modified by the interaction with the quark-gluon plasma. Modifications of the hard substructure of jets can be explored with modern data-driven techniques. In this study, a machine learning approach to the identification of quenched jets is designed. Jet showering processes are simulated with a jet quenching model Jewel and a non-quenching model Pythia 8. Sequential substructure variables are extracted from the jet clustering history following an angular-ordered sequence and are used in the training of a neural network built on top of a long short-term memory network. We show that this approach successfully identifies the quenching effect in the presence of the large uncorrelated background of soft particles created in heavy-ion collisions.

Keywords

Jets and Jet Substructure, Quark-Gluon Plasma, Nuclear and High Energy Physics

Citation

Liu, L, Velkovska, J, Wu, Y & Verweij, M 2023, 'Identifying quenched jets in heavy ion collisions with machine learning', Journal of High Energy Physics, vol. 2023, no. 4, 140. https://doi.org/10.1007/JHEP04(2023)140