• Open Access

Jet Tomography in Heavy-Ion Collisions with Deep Learning

Yi-Lun Du, Daniel Pablos, and Konrad Tywoniuk
Phys. Rev. Lett. 128, 012301 – Published 5 January 2022
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Abstract

Deep learning techniques have the power to identify the degree of modification of high energy jets traversing deconfined QCD matter on a jet-by-jet basis. Such knowledge allows us to study jets based on their initial, rather than final, energy. We show how this new technique provides unique access to the genuine configuration profile of jets over the transverse plane of the nuclear collision, both with respect to their production point and their orientation. By effectively removing the selection biases induced by final-state interactions, one can analyze the potential azimuthal anisotropies of jet production associated to initial-state effects. Additionally, we demonstrate the capability of our new method to locate with precision the production point of a dijet pair in the nuclear overlap region, in what constitutes an important step forward toward the long term quest of using jets as tomographic probes of the quark-gluon plasma.

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  • Received 9 July 2021
  • Accepted 29 November 2021

DOI:https://doi.org/10.1103/PhysRevLett.128.012301

Published by the American Physical Society under the terms of the Creative Commons Attribution 4.0 International license. Further distribution of this work must maintain attribution to the author(s) and the published article’s title, journal citation, and DOI. Funded by SCOAP3.

Published by the American Physical Society

Physics Subject Headings (PhySH)

Nuclear Physics

Authors & Affiliations

Yi-Lun Du1,*, Daniel Pablos2,†, and Konrad Tywoniuk1,‡

  • 1Department of Physics and Technology, University of Bergen, Postboks 7803, 5020 Bergen, Norway
  • 2INFN, Sezione di Torino, via Pietro Giuria 1, I-10125 Torino, Italy

  • *yilun.du@uib.no
  • daniel.pablos.alfonso@to.infn.it
  • konrad.tywoniuk@uib.no

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Vol. 128, Iss. 1 — 7 January 2022

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