Novel jet observables from machine learning

Abstract Previous studies have demonstrated the utility and applicability of machine learning techniques to jet physics. In this paper, we construct new observables for the discrimination of jets from different originating particles exclusively from information identified by the machine. The approac...

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Main Authors: Kaustuv Datta, Andrew J. Larkoski
Format: Article
Language:English
Published: SpringerOpen 2018-03-01
Series:Journal of High Energy Physics
Subjects:
Online Access:http://link.springer.com/article/10.1007/JHEP03(2018)086
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author Kaustuv Datta
Andrew J. Larkoski
author_facet Kaustuv Datta
Andrew J. Larkoski
author_sort Kaustuv Datta
collection DOAJ
description Abstract Previous studies have demonstrated the utility and applicability of machine learning techniques to jet physics. In this paper, we construct new observables for the discrimination of jets from different originating particles exclusively from information identified by the machine. The approach we propose is to first organize information in the jet by resolved phase space and determine the effective N -body phase space at which discrimination power saturates. This then allows for the construction of a discrimination observable from the N -body phase space coordinates. A general form of this observable can be expressed with numerous parameters that are chosen so that the observable maximizes the signal vs. background likelihood. Here, we illustrate this technique applied to discrimination of H → b b ¯ $$ H\to b\overline{b} $$ decays from massive g → b b ¯ $$ g\to b\overline{b} $$ splittings. We show that for a simple parametrization, we can construct an observable that has discrimination power comparable to, or better than, widely-used observables motivated from theory considerations. For the case of jets on which modified mass-drop tagger grooming is applied, the observable that the machine learns is essentially the angle of the dominant gluon emission off of the b b ¯ $$ b\overline{b} $$ pair.
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spelling doaj.art-cb8e37e3df7d42979df2c819dff189862022-12-21T23:47:55ZengSpringerOpenJournal of High Energy Physics1029-84792018-03-012018311810.1007/JHEP03(2018)086Novel jet observables from machine learningKaustuv Datta0Andrew J. Larkoski1Physics Department, Reed CollegePhysics Department, Reed CollegeAbstract Previous studies have demonstrated the utility and applicability of machine learning techniques to jet physics. In this paper, we construct new observables for the discrimination of jets from different originating particles exclusively from information identified by the machine. The approach we propose is to first organize information in the jet by resolved phase space and determine the effective N -body phase space at which discrimination power saturates. This then allows for the construction of a discrimination observable from the N -body phase space coordinates. A general form of this observable can be expressed with numerous parameters that are chosen so that the observable maximizes the signal vs. background likelihood. Here, we illustrate this technique applied to discrimination of H → b b ¯ $$ H\to b\overline{b} $$ decays from massive g → b b ¯ $$ g\to b\overline{b} $$ splittings. We show that for a simple parametrization, we can construct an observable that has discrimination power comparable to, or better than, widely-used observables motivated from theory considerations. For the case of jets on which modified mass-drop tagger grooming is applied, the observable that the machine learns is essentially the angle of the dominant gluon emission off of the b b ¯ $$ b\overline{b} $$ pair.http://link.springer.com/article/10.1007/JHEP03(2018)086JetsQCD Phenomenology
spellingShingle Kaustuv Datta
Andrew J. Larkoski
Novel jet observables from machine learning
Journal of High Energy Physics
Jets
QCD Phenomenology
title Novel jet observables from machine learning
title_full Novel jet observables from machine learning
title_fullStr Novel jet observables from machine learning
title_full_unstemmed Novel jet observables from machine learning
title_short Novel jet observables from machine learning
title_sort novel jet observables from machine learning
topic Jets
QCD Phenomenology
url http://link.springer.com/article/10.1007/JHEP03(2018)086
work_keys_str_mv AT kaustuvdatta noveljetobservablesfrommachinelearning
AT andrewjlarkoski noveljetobservablesfrommachinelearning