Skip to main content

Bayesian inference analysis of jet quenching using inclusive jet and hadron suppression measurements

Publication ,  Journal Article
Ehlers, R; Chen, Y; Mulligan, J; Ji, Y; Kumar, A; Mak, S; Jacobs, PM; Majumder, A; Angerami, A; Arora, R; Bass, SA; Datta, R; Du, L; Gale, C ...
Published in: Physical Review C
May 1, 2025

The JETSCAPE Collaboration reports a new determination of the jet transport parameter q in the quark-gluon plasma (QGP) using Bayesian inference, incorporating all available inclusive hadron and jet yield suppression data measured in heavy-ion collisions at the BNL Relativistic Heavy Ion Collider (RHIC) and the CERN Large Hadron Collider (LHC). This multi-observable analysis extends the previously published JETSCAPE Bayesian inference determination of q, which was based solely on a selection of inclusive hadron suppression data. jetscape is a modular framework incorporating detailed dynamical models of QGP formation and evolution, and jet propagation and interaction in the QGP. Virtuality-dependent partonic energy loss in the QGP is modeled as a thermalized weakly coupled plasma, with parameters determined from Bayesian calibration using soft-sector observables. This Bayesian calibration of q utilizes active learning, a machine-learning approach, for efficient exploitation of computing resources. The experimental data included in this analysis span a broad range in collision energy and centrality, and in transverse momentum. In order to explore the systematic dependence of the extracted parameter posterior distributions, several different calibrations are reported, based on combined jet and hadron data; on jet or hadron data separately; and on restricted kinematic or centrality ranges of the jet and hadron data. Tension is observed in comparison of these variations, providing new insights into the physics of jet transport in the QGP and its theoretical formulation.

Duke Scholars

Published In

Physical Review C

DOI

EISSN

2469-9993

ISSN

2469-9985

Publication Date

May 1, 2025

Volume

111

Issue

5

Related Subject Headings

  • 5106 Nuclear and plasma physics
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Ehlers, R., Chen, Y., Mulligan, J., Ji, Y., Kumar, A., Mak, S., … Zhao, W. (2025). Bayesian inference analysis of jet quenching using inclusive jet and hadron suppression measurements. Physical Review C, 111(5). https://doi.org/10.1103/PhysRevC.111.054913
Ehlers, R., Y. Chen, J. Mulligan, Y. Ji, A. Kumar, S. Mak, P. M. Jacobs, et al. “Bayesian inference analysis of jet quenching using inclusive jet and hadron suppression measurements.” Physical Review C 111, no. 5 (May 1, 2025). https://doi.org/10.1103/PhysRevC.111.054913.
Ehlers R, Chen Y, Mulligan J, Ji Y, Kumar A, Mak S, et al. Bayesian inference analysis of jet quenching using inclusive jet and hadron suppression measurements. Physical Review C. 2025 May 1;111(5).
Ehlers, R., et al. “Bayesian inference analysis of jet quenching using inclusive jet and hadron suppression measurements.” Physical Review C, vol. 111, no. 5, May 2025. Scopus, doi:10.1103/PhysRevC.111.054913.
Ehlers R, Chen Y, Mulligan J, Ji Y, Kumar A, Mak S, Jacobs PM, Majumder A, Angerami A, Arora R, Bass SA, Datta R, Du L, Elfner H, Fries RJ, Gale C, He Y, Jacak BV, Jeon S, Jonas F, Kasper L, Kordell M, Kunnawalkam-Elayavalli R, Latessa J, Lee YJ, Lemmon R, Luzum M, Mankolli A, Martin C, Mehryar H, Mengel T, Nattrass C, Norman J, Parker C, Paquet JF, Putschke JH, Roch H, Roland G, Schenke B, Schwiebert L, Sengupta A, Shen C, Singh M, Sirimanna C, Soeder D, Soltz RA, Soudi I, Tachibana Y, Velkovska J, Vujanovic G, Wang XN, Wu X, Zhao W. Bayesian inference analysis of jet quenching using inclusive jet and hadron suppression measurements. Physical Review C. 2025 May 1;111(5).

Published In

Physical Review C

DOI

EISSN

2469-9993

ISSN

2469-9985

Publication Date

May 1, 2025

Volume

111

Issue

5

Related Subject Headings

  • 5106 Nuclear and plasma physics