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Interdisciplinary Machine Learning Methods for Particle Physics: The Search for the Higgs Boson Produced in Association with a Leptonically-Decaying Vector Boson and Decaying to a Tau Pair, Hadronic Tau Identification in the ATLAS High-Level Trigger, and Predictions of Many-Body System Dynamics
Following the discovery of a Higgs boson-like particle in the summer of 2012 at the Large Hadron Collider (LHC) at CERN, the high-energy particle physics community has prioritized its thorough study. As part of a comprehensive plan to investigate the many combinations of production and decay of the...
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Lenguaje: | eng |
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2022
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Acceso en línea: | http://cds.cern.ch/record/2803426 |
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author | Pettee, Mariel |
author_facet | Pettee, Mariel |
author_sort | Pettee, Mariel |
collection | CERN |
description | Following the discovery of a Higgs boson-like particle in the summer of 2012 at the Large Hadron Collider (LHC) at CERN, the high-energy particle physics community has prioritized its thorough study. As part of a comprehensive plan to investigate the many combinations of production and decay of the Standard Model Higgs boson, this thesis describes a continued search for this particle produced in association with a leptonically-decaying vector boson (i.e. a W or Z boson) and decaying into a pair of tau leptons. In Run 1 at the LHC, ATLAS researchers were able to set an upper constraint on the signal strength of this process at $\mu = \sigma/\sigma_{SM} < 5.6$ with 95\% confidence using 20.3 fb$^{-1}$ of collision data collected at a center-of-mass energy of $\sqrt{s}=8$ TeV. My thesis work, which builds upon and extends the Run 1 analysis structure, takes advantage of an increased center-of-mass energy in Run 2 of the LHC of $\sqrt{s}=13$ TeV as well as 139 fb$^{-1}$ of data, approximately seven times the amount used for the Run 1 analysis. While the higher center-of-mass energy in Run 2 yields a higher expected cross-section for this process, the analysis faces the additional challenges of two newly-considered final states, a higher number of simultaneous interactions per event, and a novel neural network-based background estimation technique. I also describe advanced machine learning techniques I have developed to support tau identification in the ATLAS High-Level Trigger as well as predicting and analyzing the dynamics of many-body systems such as 3D motion capture data of choreography. |
id | cern-2803426 |
institution | Organización Europea para la Investigación Nuclear |
language | eng |
publishDate | 2022 |
record_format | invenio |
spelling | cern-28034262022-03-15T22:43:50Zhttp://cds.cern.ch/record/2803426engPettee, MarielInterdisciplinary Machine Learning Methods for Particle Physics: The Search for the Higgs Boson Produced in Association with a Leptonically-Decaying Vector Boson and Decaying to a Tau Pair, Hadronic Tau Identification in the ATLAS High-Level Trigger, and Predictions of Many-Body System DynamicsParticle Physics - ExperimentComputing and ComputersFollowing the discovery of a Higgs boson-like particle in the summer of 2012 at the Large Hadron Collider (LHC) at CERN, the high-energy particle physics community has prioritized its thorough study. As part of a comprehensive plan to investigate the many combinations of production and decay of the Standard Model Higgs boson, this thesis describes a continued search for this particle produced in association with a leptonically-decaying vector boson (i.e. a W or Z boson) and decaying into a pair of tau leptons. In Run 1 at the LHC, ATLAS researchers were able to set an upper constraint on the signal strength of this process at $\mu = \sigma/\sigma_{SM} < 5.6$ with 95\% confidence using 20.3 fb$^{-1}$ of collision data collected at a center-of-mass energy of $\sqrt{s}=8$ TeV. My thesis work, which builds upon and extends the Run 1 analysis structure, takes advantage of an increased center-of-mass energy in Run 2 of the LHC of $\sqrt{s}=13$ TeV as well as 139 fb$^{-1}$ of data, approximately seven times the amount used for the Run 1 analysis. While the higher center-of-mass energy in Run 2 yields a higher expected cross-section for this process, the analysis faces the additional challenges of two newly-considered final states, a higher number of simultaneous interactions per event, and a novel neural network-based background estimation technique. I also describe advanced machine learning techniques I have developed to support tau identification in the ATLAS High-Level Trigger as well as predicting and analyzing the dynamics of many-body systems such as 3D motion capture data of choreography.CERN-THESIS-2021-297oai:cds.cern.ch:28034262022-03-09T22:09:19Z |
spellingShingle | Particle Physics - Experiment Computing and Computers Pettee, Mariel Interdisciplinary Machine Learning Methods for Particle Physics: The Search for the Higgs Boson Produced in Association with a Leptonically-Decaying Vector Boson and Decaying to a Tau Pair, Hadronic Tau Identification in the ATLAS High-Level Trigger, and Predictions of Many-Body System Dynamics |
title | Interdisciplinary Machine Learning Methods for Particle Physics: The Search for the Higgs Boson Produced in Association with a Leptonically-Decaying Vector Boson and Decaying to a Tau Pair, Hadronic Tau Identification in the ATLAS High-Level Trigger, and Predictions of Many-Body System Dynamics |
title_full | Interdisciplinary Machine Learning Methods for Particle Physics: The Search for the Higgs Boson Produced in Association with a Leptonically-Decaying Vector Boson and Decaying to a Tau Pair, Hadronic Tau Identification in the ATLAS High-Level Trigger, and Predictions of Many-Body System Dynamics |
title_fullStr | Interdisciplinary Machine Learning Methods for Particle Physics: The Search for the Higgs Boson Produced in Association with a Leptonically-Decaying Vector Boson and Decaying to a Tau Pair, Hadronic Tau Identification in the ATLAS High-Level Trigger, and Predictions of Many-Body System Dynamics |
title_full_unstemmed | Interdisciplinary Machine Learning Methods for Particle Physics: The Search for the Higgs Boson Produced in Association with a Leptonically-Decaying Vector Boson and Decaying to a Tau Pair, Hadronic Tau Identification in the ATLAS High-Level Trigger, and Predictions of Many-Body System Dynamics |
title_short | Interdisciplinary Machine Learning Methods for Particle Physics: The Search for the Higgs Boson Produced in Association with a Leptonically-Decaying Vector Boson and Decaying to a Tau Pair, Hadronic Tau Identification in the ATLAS High-Level Trigger, and Predictions of Many-Body System Dynamics |
title_sort | interdisciplinary machine learning methods for particle physics: the search for the higgs boson produced in association with a leptonically-decaying vector boson and decaying to a tau pair, hadronic tau identification in the atlas high-level trigger, and predictions of many-body system dynamics |
topic | Particle Physics - Experiment Computing and Computers |
url | http://cds.cern.ch/record/2803426 |
work_keys_str_mv | AT petteemariel interdisciplinarymachinelearningmethodsforparticlephysicsthesearchforthehiggsbosonproducedinassociationwithaleptonicallydecayingvectorbosonanddecayingtoataupairhadronictauidentificationintheatlashighleveltriggerandpredictionsofmanybodysystemdynamics |