Jet charge and machine learning

Abstract Modern machine learning techniques, such as convolutional, recurrent and recursive neural networks, have shown promise for jet substructure at the Large Hadron Collider. For example, they have demonstrated effectiveness at boosted top or W boson identification or for quark/gluon discriminat...

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Main Authors: Katherine Fraser, Matthew D. Schwartz
Format: Article
Language:English
Published: SpringerOpen 2018-10-01
Series:Journal of High Energy Physics
Subjects:
Online Access:http://link.springer.com/article/10.1007/JHEP10(2018)093
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spelling doaj-6765faacbad241ec8aabf190b3147bb32020-11-25T01:37:18ZengSpringerOpenJournal of High Energy Physics1029-84792018-10-0120181011810.1007/JHEP10(2018)093Jet charge and machine learningKatherine Fraser0Matthew D. Schwartz1Department of Physics, Harvard UniversityDepartment of Physics, Harvard UniversityAbstract Modern machine learning techniques, such as convolutional, recurrent and recursive neural networks, have shown promise for jet substructure at the Large Hadron Collider. For example, they have demonstrated effectiveness at boosted top or W boson identification or for quark/gluon discrimination. We explore these methods for the purpose of classifying jets according to their electric charge. We find that both neural networks that incorporate distance within the jet as an input and boosted decision trees including radial distance information can provide significant improvement in jet charge extraction over current methods. Specifically, convolutional, recurrent, and recursive networks can provide the largest improvement over traditional methods, in part by effectively utilizing distance within the jet or clustering history. The advantages of using a fixed-size input representation (as with the CNN) or a small input representation (as with the RNN) suggest that both convolutional and recurrent networks will be essential to the future of modern machine learning at colliders.http://link.springer.com/article/10.1007/JHEP10(2018)093Jets
collection DOAJ
language English
format Article
sources DOAJ
author Katherine Fraser
Matthew D. Schwartz
spellingShingle Katherine Fraser
Matthew D. Schwartz
Jet charge and machine learning
Journal of High Energy Physics
Jets
author_facet Katherine Fraser
Matthew D. Schwartz
author_sort Katherine Fraser
title Jet charge and machine learning
title_short Jet charge and machine learning
title_full Jet charge and machine learning
title_fullStr Jet charge and machine learning
title_full_unstemmed Jet charge and machine learning
title_sort jet charge and machine learning
publisher SpringerOpen
series Journal of High Energy Physics
issn 1029-8479
publishDate 2018-10-01
description Abstract Modern machine learning techniques, such as convolutional, recurrent and recursive neural networks, have shown promise for jet substructure at the Large Hadron Collider. For example, they have demonstrated effectiveness at boosted top or W boson identification or for quark/gluon discrimination. We explore these methods for the purpose of classifying jets according to their electric charge. We find that both neural networks that incorporate distance within the jet as an input and boosted decision trees including radial distance information can provide significant improvement in jet charge extraction over current methods. Specifically, convolutional, recurrent, and recursive networks can provide the largest improvement over traditional methods, in part by effectively utilizing distance within the jet or clustering history. The advantages of using a fixed-size input representation (as with the CNN) or a small input representation (as with the RNN) suggest that both convolutional and recurrent networks will be essential to the future of modern machine learning at colliders.
topic Jets
url http://link.springer.com/article/10.1007/JHEP10(2018)093
work_keys_str_mv AT katherinefraser jetchargeandmachinelearning
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