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Boosted object tagging in ATLAS and CMS

At the energies of the Large Hardon Collider vector bosons, higgs bosons and top quarks are often produced with momenta significantly higher than their rest mass. This means that if they decay hadronically their decay products boosted such that they fall in a small area in eta-phi. The identifi- cat...

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Autor principal: Delsart, Pierre-Antoine
Lenguaje:eng
Publicado: 2019
Materias:
Acceso en línea:http://cds.cern.ch/record/2654367
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author Delsart, Pierre-Antoine
author_facet Delsart, Pierre-Antoine
author_sort Delsart, Pierre-Antoine
collection CERN
description At the energies of the Large Hardon Collider vector bosons, higgs bosons and top quarks are often produced with momenta significantly higher than their rest mass. This means that if they decay hadronically their decay products boosted such that they fall in a small area in eta-phi. The identifi- cation of these interesting objects over the large backgrounds of jets from QCD processes poses an interesting reconstruction challenge. An efficient way to reconstruct these is to use large-radius jets. As well as the mass of the large-radius jet, sub-structure variables that attempt to separate the hard multi-prong structure of these interesting jets from the QCD radiation pattern are used. Recently, machine learning techniques have been employed to fully exploit the correlations in these variables and the detector’s capabilities. Measuring the efficiency of identifying these objects in data and the background rejection that can be achieved has been a primary focus such that these complicated taggers can be used in analyses. Finally the sensitivity of these tagging techniques to pile-up – addi- tional simultaneous collisions with the collisions of interest – will be shown along with the various methods used to mitigate such effects.
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institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2019
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spelling cern-26543672019-09-30T06:29:59Zhttp://cds.cern.ch/record/2654367engDelsart, Pierre-AntoineBoosted object tagging in ATLAS and CMSParticle Physics - ExperimentAt the energies of the Large Hardon Collider vector bosons, higgs bosons and top quarks are often produced with momenta significantly higher than their rest mass. This means that if they decay hadronically their decay products boosted such that they fall in a small area in eta-phi. The identifi- cation of these interesting objects over the large backgrounds of jets from QCD processes poses an interesting reconstruction challenge. An efficient way to reconstruct these is to use large-radius jets. As well as the mass of the large-radius jet, sub-structure variables that attempt to separate the hard multi-prong structure of these interesting jets from the QCD radiation pattern are used. Recently, machine learning techniques have been employed to fully exploit the correlations in these variables and the detector’s capabilities. Measuring the efficiency of identifying these objects in data and the background rejection that can be achieved has been a primary focus such that these complicated taggers can be used in analyses. Finally the sensitivity of these tagging techniques to pile-up – addi- tional simultaneous collisions with the collisions of interest – will be shown along with the various methods used to mitigate such effects.ATL-PHYS-SLIDE-2019-012oai:cds.cern.ch:26543672019-01-21
spellingShingle Particle Physics - Experiment
Delsart, Pierre-Antoine
Boosted object tagging in ATLAS and CMS
title Boosted object tagging in ATLAS and CMS
title_full Boosted object tagging in ATLAS and CMS
title_fullStr Boosted object tagging in ATLAS and CMS
title_full_unstemmed Boosted object tagging in ATLAS and CMS
title_short Boosted object tagging in ATLAS and CMS
title_sort boosted object tagging in atlas and cms
topic Particle Physics - Experiment
url http://cds.cern.ch/record/2654367
work_keys_str_mv AT delsartpierreantoine boostedobjecttagginginatlasandcms