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Top tagging with deep neural networks [Vidyo]

<!--HTML-->Recent literature on deep neural networks for top tagging has focussed on image based techniques or multivariate approaches using high level jet substructure variables. Here, we take a sequential approach to this task by using anordered sequence of energy deposits as training inputs...

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Detalles Bibliográficos
Autor principal: Pearkes, Jannicke
Lenguaje:eng
Publicado: 2017
Materias:
Acceso en línea:http://cds.cern.ch/record/2256876
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author Pearkes, Jannicke
author_facet Pearkes, Jannicke
author_sort Pearkes, Jannicke
collection CERN
description <!--HTML-->Recent literature on deep neural networks for top tagging has focussed on image based techniques or multivariate approaches using high level jet substructure variables. Here, we take a sequential approach to this task by using anordered sequence of energy deposits as training inputs. Unlike previous approaches, this strategy does not result in a loss of information during pixelization or the calculation of high level features. We also propose new preprocessing methods that do not alter key physical quantities such as jet mass. We compare the performance of this approach to standard tagging techniques and present results evaluating the robustness of the neural network to pileup.
id cern-2256876
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2017
record_format invenio
spelling cern-22568762022-11-02T22:34:06Zhttp://cds.cern.ch/record/2256876engPearkes, JannickeTop tagging with deep neural networks [Vidyo]IML Machine Learning WorkshopMachine Learning<!--HTML-->Recent literature on deep neural networks for top tagging has focussed on image based techniques or multivariate approaches using high level jet substructure variables. Here, we take a sequential approach to this task by using anordered sequence of energy deposits as training inputs. Unlike previous approaches, this strategy does not result in a loss of information during pixelization or the calculation of high level features. We also propose new preprocessing methods that do not alter key physical quantities such as jet mass. We compare the performance of this approach to standard tagging techniques and present results evaluating the robustness of the neural network to pileup.oai:cds.cern.ch:22568762017
spellingShingle Machine Learning
Pearkes, Jannicke
Top tagging with deep neural networks [Vidyo]
title Top tagging with deep neural networks [Vidyo]
title_full Top tagging with deep neural networks [Vidyo]
title_fullStr Top tagging with deep neural networks [Vidyo]
title_full_unstemmed Top tagging with deep neural networks [Vidyo]
title_short Top tagging with deep neural networks [Vidyo]
title_sort top tagging with deep neural networks [vidyo]
topic Machine Learning
url http://cds.cern.ch/record/2256876
work_keys_str_mv AT pearkesjannicke toptaggingwithdeepneuralnetworksvidyo
AT pearkesjannicke imlmachinelearningworkshop