Infrared safety of a neural-net top tagging algorithm

Abstract Neural network-based algorithms provide a promising approach to jet classification problems, such as boosted top jet tagging. To date, NN-based top taggers demonstrated excellent performance in Monte Carlo studies. In this paper, we construct a top-jet tagger based on a Convolutional Neural...

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Main Authors: Suyong Choi, Seung J. Lee, Maxim Perelstein
Format: Article
Language:English
Published: SpringerOpen 2019-02-01
Series:Journal of High Energy Physics
Subjects:
Online Access:http://link.springer.com/article/10.1007/JHEP02(2019)132
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spelling doaj-eb9b184b096a45fa91e50e2b37177cf62020-11-25T01:10:22ZengSpringerOpenJournal of High Energy Physics1029-84792019-02-012019211410.1007/JHEP02(2019)132Infrared safety of a neural-net top tagging algorithmSuyong Choi0Seung J. Lee1Maxim Perelstein2Department of Physics, Korea UniversityDepartment of Physics, Korea UniversityLaboratory for Elementary Particle Physics, Cornell UniversityAbstract Neural network-based algorithms provide a promising approach to jet classification problems, such as boosted top jet tagging. To date, NN-based top taggers demonstrated excellent performance in Monte Carlo studies. In this paper, we construct a top-jet tagger based on a Convolutional Neural Network (CNN), and apply it to parton-level boosted top samples, with and without an additional gluon in the final state. We show that the jet observable defined by the CNN obeys the canonical definition of infrared safety: it is unaffected by the presence of the extra gluon, as long as it is soft or collinear with one of the quarks. Our results indicate that the CNN tagger is robust with respect to possible mis-modeling of soft and collinear final-state radiation by Monte Carlo generators.http://link.springer.com/article/10.1007/JHEP02(2019)132JetsQCD Phenomenology
collection DOAJ
language English
format Article
sources DOAJ
author Suyong Choi
Seung J. Lee
Maxim Perelstein
spellingShingle Suyong Choi
Seung J. Lee
Maxim Perelstein
Infrared safety of a neural-net top tagging algorithm
Journal of High Energy Physics
Jets
QCD Phenomenology
author_facet Suyong Choi
Seung J. Lee
Maxim Perelstein
author_sort Suyong Choi
title Infrared safety of a neural-net top tagging algorithm
title_short Infrared safety of a neural-net top tagging algorithm
title_full Infrared safety of a neural-net top tagging algorithm
title_fullStr Infrared safety of a neural-net top tagging algorithm
title_full_unstemmed Infrared safety of a neural-net top tagging algorithm
title_sort infrared safety of a neural-net top tagging algorithm
publisher SpringerOpen
series Journal of High Energy Physics
issn 1029-8479
publishDate 2019-02-01
description Abstract Neural network-based algorithms provide a promising approach to jet classification problems, such as boosted top jet tagging. To date, NN-based top taggers demonstrated excellent performance in Monte Carlo studies. In this paper, we construct a top-jet tagger based on a Convolutional Neural Network (CNN), and apply it to parton-level boosted top samples, with and without an additional gluon in the final state. We show that the jet observable defined by the CNN obeys the canonical definition of infrared safety: it is unaffected by the presence of the extra gluon, as long as it is soft or collinear with one of the quarks. Our results indicate that the CNN tagger is robust with respect to possible mis-modeling of soft and collinear final-state radiation by Monte Carlo generators.
topic Jets
QCD Phenomenology
url http://link.springer.com/article/10.1007/JHEP02(2019)132
work_keys_str_mv AT suyongchoi infraredsafetyofaneuralnettoptaggingalgorithm
AT seungjlee infraredsafetyofaneuralnettoptaggingalgorithm
AT maximperelstein infraredsafetyofaneuralnettoptaggingalgorithm
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