2024
DOI: 10.21468/scipostphys.16.1.015
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Jet substructure observables for jet quenching in quark gluon plasma: A machine learning driven analysis

Miguel Crispim Romão,
José Guilherme Milhano,
Marco van Leeuwen

Abstract: We present a survey of a comprehensive set of jet substructure observables commonly used to study the modifications of jets resulting from interactions with the Quark Gluon Plasma in Heavy Ion Collisions. The JEWEL event generator is used to produce simulated samples of quenched and unquenched jets. Three distinct analyses using Machine Learning techniques on the jet substructure observables have been performed to identify both linear and non-linear relations between the observables, and to distinguish the Que… Show more

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