Nothing Special   »   [go: up one dir, main page]

CERN Accelerating science

If you experience any problem watching the video, click the download button below
Download Embed
Preprint
Report number arXiv:2412.05863
Title Run 3 performance and advances in heavy-flavor jet tagging in CMS
Author(s) Sarkar, Uttiya (RWTH Aachen U.)
Collaboration CMS Collaboration
Document contact Contact: arXiv
Imprint 2024-12-08
Number of pages 13
Subject category physics.data-an ; Other Fields of Physics ; hep-ex ; Particle Physics - Experiment
Accelerator/Facility, Experiment CERN LHC ; CMS
Abstract Identification of hadronic jets originating from heavy-flavor quarks is extremely important to several physics analyses in High Energy Physics, such as studies of the properties of the top quark and the Higgs boson, and searches for new physics. Recent algorithms used in the CMS experiment were developed using state-of-the-art machine-learning techniques to distinguish jets emerging from the decay of heavy flavour (charm and bottom) quarks from those arising from light-flavor (udsg) ones. Increasingly complex deep neural network architectures, such as graphs and transformers, have helped achieve unprecedented accuracies in jet tagging. New advances in tagging algorithms, along with new calibration methods using flavour-enriched selections of proton-proton collision events, allow us to estimate flavour tagging performances with the CMS detector during early Run 3 of the LHC.
Other source Inspire
Copyright/License preprint: (License: CC BY 4.0)



 


 Element opprettet 2024-12-12, sist endret 2024-12-13


Fulltekst:
Last ned fulltekst
PDF