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Flavor Tagging Efficiency Parametrisations with Graph Neural Networks

The identification of jets containing $b$-hadrons is obtained through dedicated flavour-tagging algorithms and is crucial for the physics program of the ATLAS experiment. The performance of the flavour-tagging algorithm is such that the statistical precision of the simulated samples is reduced when...

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Autor principal: The ATLAS collaboration
Lenguaje:eng
Publicado: 2022
Materias:
Acceso en línea:http://cds.cern.ch/record/2825433
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author The ATLAS collaboration
author_facet The ATLAS collaboration
author_sort The ATLAS collaboration
collection CERN
description The identification of jets containing $b$-hadrons is obtained through dedicated flavour-tagging algorithms and is crucial for the physics program of the ATLAS experiment. The performance of the flavour-tagging algorithm is such that the statistical precision of the simulated samples is reduced when flavour tagging is applied, in particular when requiring many tagged jets per event. The truth-flavour tagging approach aims at increasing the statistical power of the simulated samples after the event selection. The method is based on a per-event weighting, computed according to the probability for the given event to contain tagged jets. This note describes truth-flavour tagging based on efficiency maps and a novel implementation based on Graph Neural Networks. The second approach is demonstrated to also capture correlations among jets in the same event, improving the overall performance of the truth-flavour tagging method.
id cern-2825433
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2022
record_format invenio
spelling cern-28254332022-08-26T20:48:48Zhttp://cds.cern.ch/record/2825433engThe ATLAS collaborationFlavor Tagging Efficiency Parametrisations with Graph Neural NetworksParticle Physics - ExperimentThe identification of jets containing $b$-hadrons is obtained through dedicated flavour-tagging algorithms and is crucial for the physics program of the ATLAS experiment. The performance of the flavour-tagging algorithm is such that the statistical precision of the simulated samples is reduced when flavour tagging is applied, in particular when requiring many tagged jets per event. The truth-flavour tagging approach aims at increasing the statistical power of the simulated samples after the event selection. The method is based on a per-event weighting, computed according to the probability for the given event to contain tagged jets. This note describes truth-flavour tagging based on efficiency maps and a novel implementation based on Graph Neural Networks. The second approach is demonstrated to also capture correlations among jets in the same event, improving the overall performance of the truth-flavour tagging method.ATL-PHYS-PUB-2022-041oai:cds.cern.ch:28254332022-08-26
spellingShingle Particle Physics - Experiment
The ATLAS collaboration
Flavor Tagging Efficiency Parametrisations with Graph Neural Networks
title Flavor Tagging Efficiency Parametrisations with Graph Neural Networks
title_full Flavor Tagging Efficiency Parametrisations with Graph Neural Networks
title_fullStr Flavor Tagging Efficiency Parametrisations with Graph Neural Networks
title_full_unstemmed Flavor Tagging Efficiency Parametrisations with Graph Neural Networks
title_short Flavor Tagging Efficiency Parametrisations with Graph Neural Networks
title_sort flavor tagging efficiency parametrisations with graph neural networks
topic Particle Physics - Experiment
url http://cds.cern.ch/record/2825433
work_keys_str_mv AT theatlascollaboration flavortaggingefficiencyparametrisationswithgraphneuralnetworks