A new metric improving Bayesian calibration of a multistage approach studying hadron and inclusive jet suppression

W. Fan, G. Vujanovic, S. A. Bass, A. Angerami, R. Arora, S. Cao,Y. Chen, T. Dai, L. Du, R. Ehlers, H. Elfner, R. J. Fries, C. Gale, Y. He, M. Heffernan, U. Heinz, B. V. Jacak,P. M. Jacobs, S. Jeon, Y. Ji, L. Kasper,M. Kordell II, A. Kumar,J. Latessa,Y. -J. Lee, R. Lemmon, D. Liyanage, A. Lopez, M. Luzum,A. Majumder,S. Mak, A. Mankolli, C. Martin, H. Mehryar, T. Mengel, J. Mulligan, C. Nattrass, J. Norman, J. -F. Paquet, C. Parker, J. H. Putschke, G. Roland, B. Schenke,L. Schwiebert, A. Sengupta, C. Shen, C. Sirimanna, D. Soeder, R. A. Soltz, I. Soudi,M. Strickland, Y. Tachibana, J. Velkovska,X. -N. Wang, W. Zhao

arXiv (Cornell University)(2023)

引用 0|浏览4
暂无评分
摘要
We study parton energy-momentum exchange with the quark gluon plasma (QGP) within a multistage approach composed of in-medium DGLAP evolution at high virtuality, and (linearized) Boltzmann Transport formalism at lower virtuality. This multistage simulation is then calibrated in comparison with high $p_T$ charged hadrons, D-mesons, and the inclusive jet nuclear modification factors, using Bayesian model-to-data comparison, to extract the virtuality-dependent transverse momentum broadening transport coefficient $\hat{q}$. To facilitate this undertaking, we develop a quantitative metric for validating the Bayesian workflow, which is used to analyze the sensitivity of various model parameters to individual observables. The usefulness of this new metric in improving Bayesian model emulation is shown to be highly beneficial for future such analyses.
更多
查看译文
关键词
bayesian calibration,suppression,hadron
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要