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Quark/gluon jet discrimination: a reproducible analysis using R

<!--HTML-->The power to discriminate between light-quark jets and gluon jets would have a huge impact on many searches for new physics at CERN and beyond. This talk will present a walk-through of the development of a prototype machine learning classifier for differentiating between quark and g...

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Autor principal: Lowe, Andrew
Lenguaje:eng
Publicado: 2017
Materias:
Acceso en línea:http://cds.cern.ch/record/2256741
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author Lowe, Andrew
author_facet Lowe, Andrew
author_sort Lowe, Andrew
collection CERN
description <!--HTML-->The power to discriminate between light-quark jets and gluon jets would have a huge impact on many searches for new physics at CERN and beyond. This talk will present a walk-through of the development of a prototype machine learning classifier for differentiating between quark and gluon jets at experiments like those at the Large Hadron Collider at CERN. A new fast feature selection method that combines information theory and graph analytics will be outlined. This method has found new variables that promise significant improvements in discrimination power. The prototype jet tagger is simple, interpretable, parsimonious, and computationally extremely cheap, and therefore might be suitable for use in trigger systems for real-time data processing. Nested stratified k-fold cross validation was used to generate robust estimates of model performance. The data analysis was performed entirely in the R statistical programming language, and is fully reproducible. The entire analysis workflow is data-driven, automated and runs on very modest hardware with no human intervention. New data visualisation techniques will also be introduced.
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institution Organización Europea para la Investigación Nuclear
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publishDate 2017
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spelling cern-22567412022-11-02T22:34:07Zhttp://cds.cern.ch/record/2256741engLowe, AndrewQuark/gluon jet discrimination: a reproducible analysis using RIML Machine Learning WorkshopMachine Learning<!--HTML-->The power to discriminate between light-quark jets and gluon jets would have a huge impact on many searches for new physics at CERN and beyond. This talk will present a walk-through of the development of a prototype machine learning classifier for differentiating between quark and gluon jets at experiments like those at the Large Hadron Collider at CERN. A new fast feature selection method that combines information theory and graph analytics will be outlined. This method has found new variables that promise significant improvements in discrimination power. The prototype jet tagger is simple, interpretable, parsimonious, and computationally extremely cheap, and therefore might be suitable for use in trigger systems for real-time data processing. Nested stratified k-fold cross validation was used to generate robust estimates of model performance. The data analysis was performed entirely in the R statistical programming language, and is fully reproducible. The entire analysis workflow is data-driven, automated and runs on very modest hardware with no human intervention. New data visualisation techniques will also be introduced.oai:cds.cern.ch:22567412017
spellingShingle Machine Learning
Lowe, Andrew
Quark/gluon jet discrimination: a reproducible analysis using R
title Quark/gluon jet discrimination: a reproducible analysis using R
title_full Quark/gluon jet discrimination: a reproducible analysis using R
title_fullStr Quark/gluon jet discrimination: a reproducible analysis using R
title_full_unstemmed Quark/gluon jet discrimination: a reproducible analysis using R
title_short Quark/gluon jet discrimination: a reproducible analysis using R
title_sort quark/gluon jet discrimination: a reproducible analysis using r
topic Machine Learning
url http://cds.cern.ch/record/2256741
work_keys_str_mv AT loweandrew quarkgluonjetdiscriminationareproducibleanalysisusingr
AT loweandrew imlmachinelearningworkshop