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A BDT optimization study and assessment of deep learning in selecting VBF events in the $H\to ZZ^{*}\to4l$ channel

Since the discovery of the Higgs boson in 2012, the most recently confirmed and final piece of the Standard Model has been rigorously studied in various production modes and decay channels. However, Run 1 of the LHC did not yield sufficient statistics to resolve production modes in the $H\to ZZ^{*}\...

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Autor principal: Morningstar, Alan
Lenguaje:eng
Publicado: 2015
Materias:
Acceso en línea:http://cds.cern.ch/record/2046171
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author Morningstar, Alan
author_facet Morningstar, Alan
author_sort Morningstar, Alan
collection CERN
description Since the discovery of the Higgs boson in 2012, the most recently confirmed and final piece of the Standard Model has been rigorously studied in various production modes and decay channels. However, Run 1 of the LHC did not yield sufficient statistics to resolve production modes in the $H\to ZZ^{*}\to4l$ channel. Current and future runs of the LHC will offer sufficient data to do so, thus machine learning techniques used to separate the two most frequent Higgs boson production modes - gluon fusion and vector boson fusion - were studied and the findings are presented in this report. An optimization of boosted decision trees trained on $\sqrt{s}=\text{8 TeV}$ ATLAS Monte Carlo data is presented. The feasibility of improving classification efficiency by using deep neural networks is also studied and detailed below.
id cern-2046171
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2015
record_format invenio
spelling cern-20461712019-09-30T06:29:59Zhttp://cds.cern.ch/record/2046171engMorningstar, AlanA BDT optimization study and assessment of deep learning in selecting VBF events in the $H\to ZZ^{*}\to4l$ channelParticle Physics - ExperimentSince the discovery of the Higgs boson in 2012, the most recently confirmed and final piece of the Standard Model has been rigorously studied in various production modes and decay channels. However, Run 1 of the LHC did not yield sufficient statistics to resolve production modes in the $H\to ZZ^{*}\to4l$ channel. Current and future runs of the LHC will offer sufficient data to do so, thus machine learning techniques used to separate the two most frequent Higgs boson production modes - gluon fusion and vector boson fusion - were studied and the findings are presented in this report. An optimization of boosted decision trees trained on $\sqrt{s}=\text{8 TeV}$ ATLAS Monte Carlo data is presented. The feasibility of improving classification efficiency by using deep neural networks is also studied and detailed below.CERN-STUDENTS-Note-2015-123oai:cds.cern.ch:20461712015-08-21
spellingShingle Particle Physics - Experiment
Morningstar, Alan
A BDT optimization study and assessment of deep learning in selecting VBF events in the $H\to ZZ^{*}\to4l$ channel
title A BDT optimization study and assessment of deep learning in selecting VBF events in the $H\to ZZ^{*}\to4l$ channel
title_full A BDT optimization study and assessment of deep learning in selecting VBF events in the $H\to ZZ^{*}\to4l$ channel
title_fullStr A BDT optimization study and assessment of deep learning in selecting VBF events in the $H\to ZZ^{*}\to4l$ channel
title_full_unstemmed A BDT optimization study and assessment of deep learning in selecting VBF events in the $H\to ZZ^{*}\to4l$ channel
title_short A BDT optimization study and assessment of deep learning in selecting VBF events in the $H\to ZZ^{*}\to4l$ channel
title_sort bdt optimization study and assessment of deep learning in selecting vbf events in the $h\to zz^{*}\to4l$ channel
topic Particle Physics - Experiment
url http://cds.cern.ch/record/2046171
work_keys_str_mv AT morningstaralan abdtoptimizationstudyandassessmentofdeeplearninginselectingvbfeventsinthehtozzto4lchannel
AT morningstaralan bdtoptimizationstudyandassessmentofdeeplearninginselectingvbfeventsinthehtozzto4lchannel