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Large-Scale Data Analysis for Higgs Boson Mass Reconstruction in ttH Production

This thesis deals with the problem of reconstruction of the invariant mass of the Higgs boson using machine learning techniques – neural networks. It focuses on the 2lSS + 1τhad decay channel. In the first part, the problem of mass reconstruction is explained and some used approaches to the problem...

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Autor principal: Urban, Petr
Lenguaje:eng
Publicado: 2019
Materias:
Acceso en línea:http://cds.cern.ch/record/2699450
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author Urban, Petr
author_facet Urban, Petr
author_sort Urban, Petr
collection CERN
description This thesis deals with the problem of reconstruction of the invariant mass of the Higgs boson using machine learning techniques – neural networks. It focuses on the 2lSS + 1τhad decay channel. In the first part, the problem of mass reconstruction is explained and some used approaches to the problem are described. The next part describes the phase of reconstructing the invariant mass of all the particles using exact formulas and algorithms. Then, the data obtained during reconstruction of the other particles of the ttH system are used. Several neural networks are trained and tested on different datasets to predict/estimate the invariant mass of the Higgs boson on truth level. Finally, neural networks for estimating the invariant mass of the Higgs boson on detector level and distinguishing signal events from background are prepared.
id cern-2699450
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2019
record_format invenio
spelling cern-26994502019-12-02T13:10:08Zhttp://cds.cern.ch/record/2699450engUrban, PetrLarge-Scale Data Analysis for Higgs Boson Mass Reconstruction in ttH ProductionParticle Physics - ExperimentThis thesis deals with the problem of reconstruction of the invariant mass of the Higgs boson using machine learning techniques – neural networks. It focuses on the 2lSS + 1τhad decay channel. In the first part, the problem of mass reconstruction is explained and some used approaches to the problem are described. The next part describes the phase of reconstructing the invariant mass of all the particles using exact formulas and algorithms. Then, the data obtained during reconstruction of the other particles of the ttH system are used. Several neural networks are trained and tested on different datasets to predict/estimate the invariant mass of the Higgs boson on truth level. Finally, neural networks for estimating the invariant mass of the Higgs boson on detector level and distinguishing signal events from background are prepared.CERN-THESIS-2019-195oai:cds.cern.ch:26994502019-11-06T17:41:36Z
spellingShingle Particle Physics - Experiment
Urban, Petr
Large-Scale Data Analysis for Higgs Boson Mass Reconstruction in ttH Production
title Large-Scale Data Analysis for Higgs Boson Mass Reconstruction in ttH Production
title_full Large-Scale Data Analysis for Higgs Boson Mass Reconstruction in ttH Production
title_fullStr Large-Scale Data Analysis for Higgs Boson Mass Reconstruction in ttH Production
title_full_unstemmed Large-Scale Data Analysis for Higgs Boson Mass Reconstruction in ttH Production
title_short Large-Scale Data Analysis for Higgs Boson Mass Reconstruction in ttH Production
title_sort large-scale data analysis for higgs boson mass reconstruction in tth production
topic Particle Physics - Experiment
url http://cds.cern.ch/record/2699450
work_keys_str_mv AT urbanpetr largescaledataanalysisforhiggsbosonmassreconstructionintthproduction