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Tau identification in CMS during LHC Run 2

The LHC Run 2 data-taking period was characterized by an increase in instantaneous luminosity and center-of-mass energy. Several techniques have been deployed in the CMS experiment to reconstruct and identify tau leptons in this environment. The DeepTau identification algorithm is used to identify h...

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Autor principal: Hassanshahi, Mohammad Hassan
Lenguaje:eng
Publicado: 2021
Materias:
Acceso en línea:http://cds.cern.ch/record/2797703
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author Hassanshahi, Mohammad Hassan
author_facet Hassanshahi, Mohammad Hassan
author_sort Hassanshahi, Mohammad Hassan
collection CERN
description The LHC Run 2 data-taking period was characterized by an increase in instantaneous luminosity and center-of-mass energy. Several techniques have been deployed in the CMS experiment to reconstruct and identify tau leptons in this environment. The DeepTau identification algorithm is used to identify hadronically decaying tau leptons from quark and gluon induced jets, electrons, and muons. Compared to previously used MVA identification algorithms, the use of deep-learning techniques brought a noticeable improvement in the tau identification and rejection of contaminating sources. Low transverse momentum topologies were addressed separately with a dedicated identification algorithm, while machine learning techniques were implemented to improve the identification of the tau hadronic decay channels. These algorithms have been already used for several published physics analyses in CMS. The algorithms are presented together with their measured performances.
id cern-2797703
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2021
record_format invenio
spelling cern-27977032021-12-13T20:15:44Zhttp://cds.cern.ch/record/2797703engHassanshahi, Mohammad HassanTau identification in CMS during LHC Run 2Detectors and Experimental TechniquesThe LHC Run 2 data-taking period was characterized by an increase in instantaneous luminosity and center-of-mass energy. Several techniques have been deployed in the CMS experiment to reconstruct and identify tau leptons in this environment. The DeepTau identification algorithm is used to identify hadronically decaying tau leptons from quark and gluon induced jets, electrons, and muons. Compared to previously used MVA identification algorithms, the use of deep-learning techniques brought a noticeable improvement in the tau identification and rejection of contaminating sources. Low transverse momentum topologies were addressed separately with a dedicated identification algorithm, while machine learning techniques were implemented to improve the identification of the tau hadronic decay channels. These algorithms have been already used for several published physics analyses in CMS. The algorithms are presented together with their measured performances.CMS-CR-2021-246oai:cds.cern.ch:27977032021-11-10
spellingShingle Detectors and Experimental Techniques
Hassanshahi, Mohammad Hassan
Tau identification in CMS during LHC Run 2
title Tau identification in CMS during LHC Run 2
title_full Tau identification in CMS during LHC Run 2
title_fullStr Tau identification in CMS during LHC Run 2
title_full_unstemmed Tau identification in CMS during LHC Run 2
title_short Tau identification in CMS during LHC Run 2
title_sort tau identification in cms during lhc run 2
topic Detectors and Experimental Techniques
url http://cds.cern.ch/record/2797703
work_keys_str_mv AT hassanshahimohammadhassan tauidentificationincmsduringlhcrun2