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Multivariate analysis techniques for Particle Flow-based neutral pileup suppression at the ATLAS experiment

The removal of contamination from multiple pp interaction at the Large Hadron Collider, also known as pile-up, plays a fundamental role in the object reconstruction necessary for searches for new physics using data recorded by the ATLAS detector. To suppress pileup clusters originating from charged...

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Autor principal: Luthi, Melina
Lenguaje:eng
Publicado: 2019
Materias:
Acceso en línea:http://cds.cern.ch/record/2655145
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author Luthi, Melina
author_facet Luthi, Melina
author_sort Luthi, Melina
collection CERN
description The removal of contamination from multiple pp interaction at the Large Hadron Collider, also known as pile-up, plays a fundamental role in the object reconstruction necessary for searches for new physics using data recorded by the ATLAS detector. To suppress pileup clusters originating from charged particles, the particle tracks are used by the current ATLAS Particle Flow algorithm. Due to the lack of tracks, pileup suppression of neutral constituents has to entirely rely on calorimeter information. The Soft Killer algorithm uses a sophisticated pT cut to suppress neutral pileup clusters. In this report, machine learning is used to combine additional calorimeter information for suppressing neutral pileup clusters. At first, a study of calorimeter cluster variables is performed to see which variables are suitable to distinguish hard scatter from pileup clusters. Then a machine learning algorithm is trained and the impact on the classification of clusters is analyzed. To conclude, the performance of the soft term MET reconstruction with the trained algorithm is studied.
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institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2019
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spelling cern-26551452019-09-30T06:29:59Zhttp://cds.cern.ch/record/2655145engLuthi, MelinaMultivariate analysis techniques for Particle Flow-based neutral pileup suppression at the ATLAS experimentPhysics in GeneralThe removal of contamination from multiple pp interaction at the Large Hadron Collider, also known as pile-up, plays a fundamental role in the object reconstruction necessary for searches for new physics using data recorded by the ATLAS detector. To suppress pileup clusters originating from charged particles, the particle tracks are used by the current ATLAS Particle Flow algorithm. Due to the lack of tracks, pileup suppression of neutral constituents has to entirely rely on calorimeter information. The Soft Killer algorithm uses a sophisticated pT cut to suppress neutral pileup clusters. In this report, machine learning is used to combine additional calorimeter information for suppressing neutral pileup clusters. At first, a study of calorimeter cluster variables is performed to see which variables are suitable to distinguish hard scatter from pileup clusters. Then a machine learning algorithm is trained and the impact on the classification of clusters is analyzed. To conclude, the performance of the soft term MET reconstruction with the trained algorithm is studied.CERN-STUDENTS-Note-2019-003oai:cds.cern.ch:26551452019-01-29
spellingShingle Physics in General
Luthi, Melina
Multivariate analysis techniques for Particle Flow-based neutral pileup suppression at the ATLAS experiment
title Multivariate analysis techniques for Particle Flow-based neutral pileup suppression at the ATLAS experiment
title_full Multivariate analysis techniques for Particle Flow-based neutral pileup suppression at the ATLAS experiment
title_fullStr Multivariate analysis techniques for Particle Flow-based neutral pileup suppression at the ATLAS experiment
title_full_unstemmed Multivariate analysis techniques for Particle Flow-based neutral pileup suppression at the ATLAS experiment
title_short Multivariate analysis techniques for Particle Flow-based neutral pileup suppression at the ATLAS experiment
title_sort multivariate analysis techniques for particle flow-based neutral pileup suppression at the atlas experiment
topic Physics in General
url http://cds.cern.ch/record/2655145
work_keys_str_mv AT luthimelina multivariateanalysistechniquesforparticleflowbasedneutralpileupsuppressionattheatlasexperiment