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Identification of Hadronically-Decaying W Boson Top Quarks Using High-Level Features as Input to Boosted Decision Trees and Deep Neural Networks in ATLAS at #sqrt{s} = 13 TeV

The application of boosted decision trees and deep neural networks to the identification of hadronically-decaying W bosons and top quarks using high-level jet observables as inputs is investigated using Monte Carlo simulations. In the case of both boosted decision trees and deep neural networks, the...

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Autor principal: Nitta, Tatsumi
Lenguaje:eng
Publicado: 2017
Materias:
Acceso en línea:http://cds.cern.ch/record/2275499
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author Nitta, Tatsumi
author_facet Nitta, Tatsumi
author_sort Nitta, Tatsumi
collection CERN
description The application of boosted decision trees and deep neural networks to the identification of hadronically-decaying W bosons and top quarks using high-level jet observables as inputs is investigated using Monte Carlo simulations. In the case of both boosted decision trees and deep neural networks, the use of machine learning techniques is found to improve the background rejection with respect to simple reference single jet substructure and mass taggers. Linear correlations between the resulting classifiers and the substructure variables are also presented.
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institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2017
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spelling cern-22754992019-09-30T06:29:59Zhttp://cds.cern.ch/record/2275499engNitta, TatsumiIdentification of Hadronically-Decaying W Boson Top Quarks Using High-Level Features as Input to Boosted Decision Trees and Deep Neural Networks in ATLAS at #sqrt{s} = 13 TeVParticle Physics - ExperimentThe application of boosted decision trees and deep neural networks to the identification of hadronically-decaying W bosons and top quarks using high-level jet observables as inputs is investigated using Monte Carlo simulations. In the case of both boosted decision trees and deep neural networks, the use of machine learning techniques is found to improve the background rejection with respect to simple reference single jet substructure and mass taggers. Linear correlations between the resulting classifiers and the substructure variables are also presented.ATL-PHYS-SLIDE-2017-571oai:cds.cern.ch:22754992017-07-23
spellingShingle Particle Physics - Experiment
Nitta, Tatsumi
Identification of Hadronically-Decaying W Boson Top Quarks Using High-Level Features as Input to Boosted Decision Trees and Deep Neural Networks in ATLAS at #sqrt{s} = 13 TeV
title Identification of Hadronically-Decaying W Boson Top Quarks Using High-Level Features as Input to Boosted Decision Trees and Deep Neural Networks in ATLAS at #sqrt{s} = 13 TeV
title_full Identification of Hadronically-Decaying W Boson Top Quarks Using High-Level Features as Input to Boosted Decision Trees and Deep Neural Networks in ATLAS at #sqrt{s} = 13 TeV
title_fullStr Identification of Hadronically-Decaying W Boson Top Quarks Using High-Level Features as Input to Boosted Decision Trees and Deep Neural Networks in ATLAS at #sqrt{s} = 13 TeV
title_full_unstemmed Identification of Hadronically-Decaying W Boson Top Quarks Using High-Level Features as Input to Boosted Decision Trees and Deep Neural Networks in ATLAS at #sqrt{s} = 13 TeV
title_short Identification of Hadronically-Decaying W Boson Top Quarks Using High-Level Features as Input to Boosted Decision Trees and Deep Neural Networks in ATLAS at #sqrt{s} = 13 TeV
title_sort identification of hadronically-decaying w boson top quarks using high-level features as input to boosted decision trees and deep neural networks in atlas at #sqrt{s} = 13 tev
topic Particle Physics - Experiment
url http://cds.cern.ch/record/2275499
work_keys_str_mv AT nittatatsumi identificationofhadronicallydecayingwbosontopquarksusinghighlevelfeaturesasinputtoboosteddecisiontreesanddeepneuralnetworksinatlasatsqrts13tev