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Efficiency Improvements Using Machine Learning in Event Generators for the LHC

In particle physics, event generators play an important role in connecting theoretical predictions with experimental results. Especially for experimental issues one often wants to generate events which follow a probability distribution based on the underlying physics. The generation of such events i...

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Autor principal: Krause, Johannes
Lenguaje:eng
Publicado: 2022
Materias:
Acceso en línea:http://cds.cern.ch/record/2804526
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author Krause, Johannes
author_facet Krause, Johannes
author_sort Krause, Johannes
collection CERN
description In particle physics, event generators play an important role in connecting theoretical predictions with experimental results. Especially for experimental issues one often wants to generate events which follow a probability distribution based on the underlying physics. The generation of such events is currently done by a ‘hit-or-miss’ method, which is particularly for processes with many final-state particles very expensive in terms of CPU time. In this thesis a modified variant of this algorithm is introduced, which combines the ‘hit-or-miss’-method with machine-learning techniques in order to improve the performance. Several possible applications of this new method are presented and compared with currently available methods of event generation in SHERPA for different processes.
id cern-2804526
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2022
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spelling cern-28045262022-03-22T19:28:33Zhttp://cds.cern.ch/record/2804526engKrause, JohannesEfficiency Improvements Using Machine Learning in Event Generators for the LHCParticle Physics - PhenomenologyIn particle physics, event generators play an important role in connecting theoretical predictions with experimental results. Especially for experimental issues one often wants to generate events which follow a probability distribution based on the underlying physics. The generation of such events is currently done by a ‘hit-or-miss’ method, which is particularly for processes with many final-state particles very expensive in terms of CPU time. In this thesis a modified variant of this algorithm is introduced, which combines the ‘hit-or-miss’-method with machine-learning techniques in order to improve the performance. Several possible applications of this new method are presented and compared with currently available methods of event generation in SHERPA for different processes.CERN-THESIS-2015-486oai:cds.cern.ch:28045262022-03-22T13:55:22Z
spellingShingle Particle Physics - Phenomenology
Krause, Johannes
Efficiency Improvements Using Machine Learning in Event Generators for the LHC
title Efficiency Improvements Using Machine Learning in Event Generators for the LHC
title_full Efficiency Improvements Using Machine Learning in Event Generators for the LHC
title_fullStr Efficiency Improvements Using Machine Learning in Event Generators for the LHC
title_full_unstemmed Efficiency Improvements Using Machine Learning in Event Generators for the LHC
title_short Efficiency Improvements Using Machine Learning in Event Generators for the LHC
title_sort efficiency improvements using machine learning in event generators for the lhc
topic Particle Physics - Phenomenology
url http://cds.cern.ch/record/2804526
work_keys_str_mv AT krausejohannes efficiencyimprovementsusingmachinelearningineventgeneratorsforthelhc