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Using Boosted Decision Trees to look for displaced Jets in the ATLAS Calorimeter

<!--HTML-->A boosted decision tree is used to identify unique jets in a recently released conference note describing a search for long lived particles decaying to hadrons in the ATLAS Calorimeter. Neutral Long lived particles decaying to hadrons are “typical” signatures in a lot of models incl...

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Detalles Bibliográficos
Autor principal: Watts, Gordon
Lenguaje:eng
Publicado: 2017
Materias:
Acceso en línea:http://cds.cern.ch/record/2256879
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author Watts, Gordon
author_facet Watts, Gordon
author_sort Watts, Gordon
collection CERN
description <!--HTML-->A boosted decision tree is used to identify unique jets in a recently released conference note describing a search for long lived particles decaying to hadrons in the ATLAS Calorimeter. Neutral Long lived particles decaying to hadrons are “typical” signatures in a lot of models including Hidden Valley models, Higgs Portal Models, Baryogenesis, Stealth SUSY, etc. Long lived neutral particles that decay in the calorimeter leave behind an object that looks like a regular Standard Model jet, with subtle differences. For example, the later in the calorimeter it decays, the less energy will be deposited in the early layers of the calorimeter. Because the jet does not originate at the interaction point, it will likely be more narrow as reconstructed by the standard Anti-kT jet reconstruction algorithm used by ATLAS. To separate the jets due to neutral long lived decays from the standard model jets we used a boosted decision tree with thirteen variables as inputs. We used the information from the boosted decision tree as input into a more traditional straight-cuts analysis to separate background and signal event topologies. We will describe the process by which we choose the variables for the boosted decision tree, “cleaned the data”, the tuning of the boosted decision tree, and the results in this talk. As far as we are aware this is the first time a multivariate technique has been used for object ID in a search for long lived particles.
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institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2017
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spelling cern-22568792022-11-02T22:34:06Zhttp://cds.cern.ch/record/2256879engWatts, GordonUsing Boosted Decision Trees to look for displaced Jets in the ATLAS CalorimeterIML Machine Learning WorkshopMachine Learning<!--HTML-->A boosted decision tree is used to identify unique jets in a recently released conference note describing a search for long lived particles decaying to hadrons in the ATLAS Calorimeter. Neutral Long lived particles decaying to hadrons are “typical” signatures in a lot of models including Hidden Valley models, Higgs Portal Models, Baryogenesis, Stealth SUSY, etc. Long lived neutral particles that decay in the calorimeter leave behind an object that looks like a regular Standard Model jet, with subtle differences. For example, the later in the calorimeter it decays, the less energy will be deposited in the early layers of the calorimeter. Because the jet does not originate at the interaction point, it will likely be more narrow as reconstructed by the standard Anti-kT jet reconstruction algorithm used by ATLAS. To separate the jets due to neutral long lived decays from the standard model jets we used a boosted decision tree with thirteen variables as inputs. We used the information from the boosted decision tree as input into a more traditional straight-cuts analysis to separate background and signal event topologies. We will describe the process by which we choose the variables for the boosted decision tree, “cleaned the data”, the tuning of the boosted decision tree, and the results in this talk. As far as we are aware this is the first time a multivariate technique has been used for object ID in a search for long lived particles.oai:cds.cern.ch:22568792017
spellingShingle Machine Learning
Watts, Gordon
Using Boosted Decision Trees to look for displaced Jets in the ATLAS Calorimeter
title Using Boosted Decision Trees to look for displaced Jets in the ATLAS Calorimeter
title_full Using Boosted Decision Trees to look for displaced Jets in the ATLAS Calorimeter
title_fullStr Using Boosted Decision Trees to look for displaced Jets in the ATLAS Calorimeter
title_full_unstemmed Using Boosted Decision Trees to look for displaced Jets in the ATLAS Calorimeter
title_short Using Boosted Decision Trees to look for displaced Jets in the ATLAS Calorimeter
title_sort using boosted decision trees to look for displaced jets in the atlas calorimeter
topic Machine Learning
url http://cds.cern.ch/record/2256879
work_keys_str_mv AT wattsgordon usingboosteddecisiontreestolookfordisplacedjetsintheatlascalorimeter
AT wattsgordon imlmachinelearningworkshop