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Vertex identification optimization in the Higgs to gamma gamma decay channel

A study of vertex identification efficiency in the Higgs to gamma gamma channel has been performed using boosted decision tree multivariate classification. The analysis tests the performance of a photon time of flight discriminant as an additional variable in classification. All training is done on...

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Autor principal: Gonski, Julia Lynne
Lenguaje:eng
Publicado: 2013
Materias:
Acceso en línea:http://cds.cern.ch/record/1570197
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author Gonski, Julia Lynne
author_facet Gonski, Julia Lynne
author_sort Gonski, Julia Lynne
collection CERN
description A study of vertex identification efficiency in the Higgs to gamma gamma channel has been performed using boosted decision tree multivariate classification. The analysis tests the performance of a photon time of flight discriminant as an additional variable in classification. All training is done on Monte Carlo events with 14 TeV collisions, 50 pile up events, and a Higgs mass of 125 GeV, from both gluon-gluon fusion and vector boson fusion production. The algorithm is designed for a time resolution of 0.01 nanoseconds, requiring the addition of a high precision timing layer for implementation. Preliminary efficiency increases in individualized detector regions motivates further study of this algorithm for use in future analyses.
id cern-1570197
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2013
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spelling cern-15701972019-09-30T06:29:59Zhttp://cds.cern.ch/record/1570197engGonski, Julia LynneVertex identification optimization in the Higgs to gamma gamma decay channelParticle Physics - ExperimentA study of vertex identification efficiency in the Higgs to gamma gamma channel has been performed using boosted decision tree multivariate classification. The analysis tests the performance of a photon time of flight discriminant as an additional variable in classification. All training is done on Monte Carlo events with 14 TeV collisions, 50 pile up events, and a Higgs mass of 125 GeV, from both gluon-gluon fusion and vector boson fusion production. The algorithm is designed for a time resolution of 0.01 nanoseconds, requiring the addition of a high precision timing layer for implementation. Preliminary efficiency increases in individualized detector regions motivates further study of this algorithm for use in future analyses. CERN-STUDENTS-Note-2013-003oai:cds.cern.ch:15701972013-08-09
spellingShingle Particle Physics - Experiment
Gonski, Julia Lynne
Vertex identification optimization in the Higgs to gamma gamma decay channel
title Vertex identification optimization in the Higgs to gamma gamma decay channel
title_full Vertex identification optimization in the Higgs to gamma gamma decay channel
title_fullStr Vertex identification optimization in the Higgs to gamma gamma decay channel
title_full_unstemmed Vertex identification optimization in the Higgs to gamma gamma decay channel
title_short Vertex identification optimization in the Higgs to gamma gamma decay channel
title_sort vertex identification optimization in the higgs to gamma gamma decay channel
topic Particle Physics - Experiment
url http://cds.cern.ch/record/1570197
work_keys_str_mv AT gonskijulialynne vertexidentificationoptimizationinthehiggstogammagammadecaychannel