Performance of heavy-flavour jet identification in Lorentz-boosted topologies in proton-proton collisions at √(s) = 13 TeV

the CMS Collaboration, David B Anthony, Jim Brooke, Aaron Bundock, Florian J J Bury, Emily A Clement, David G Cussans, H. Flächer, Maciej Glowacki, Joel Goldstein, Helen F Heath, Mei-Li Holmberg, Lukasz Kreczko, Sudarshan Paramesvaran, Liam Robertshaw, Vincent J Smith, Katie L M R Walkingshaw Pass, et al

Research output: Contribution to journalArticle (Academic Journal)peer-review

Abstract

Measurements in the highly Lorentz-boosted regime provoke increased interest in probing the Higgs boson properties and in searching for particles beyond the standard model at the LHC. In the CMS Collaboration, various boosted-object tagging algorithms, designed to identify hadronic jets originating from a massive particle decaying to bb̅ or cc̅, have been developed and deployed across a range of physics analyses. This paper highlights their performance on simulated events, and summarizes novel calibration techniques using proton-proton collision data collected at √(s) = 13 TeV during the 2016–2018 LHC data-taking period. Three dedicated methods are used for the calibration in multijet events, leveraging either machine learning techniques, the presence of muons within energetic boosted jets, or the reconstruction of hadronically decaying high-energy Z bosons. The calibration results, obtained through a combination of these approaches, are presented and discussed.
Original languageEnglish
Article numberP11006
Number of pages65
JournalJournal of Instrumentation
Volume20
Issue number11
DOIs
Publication statusPublished - 12 Nov 2025

Bibliographical note

©2025 CERN for the benefit of the CMS collaboration.

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