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Accuracy versus precision in boosted top tagging with the ATLAS detector
The ATLAS, Collaboration
•
GONELLA, Laura
2024
journal article
Periodico
JOURNAL OF INSTRUMENTATION
Abstract
The identification of top quark decays where the top quark has a large momentum transverse to the beam axis, known as top tagging, is a crucial component in many measurements of Standard Model processes and searches for beyond the Standard Model physics at the Large Hadron Collider. Machine learning techniques have improved the performance of top tagging algorithms, but the size of the systematic uncertainties for all proposed algorithms has not been systematically studied. This paper presents the performance of several machine learning based top tagging algorithms on a dataset constructed from simulated proton-proton collision events measured with the ATLAS detector at √s = 13 TeV. The systematic uncertainties associated with these algorithms are estimated through an approximate procedure that is not meant to be used in a physics analysis, but is appropriate for the level of precision required for this study. The most performant algorithms are found to have the largest uncertainties, motivating the development of methods to reduce these uncertainties without compromising performance. To enable such efforts in the wider scientific community, the datasets used in this paper are made publicly available. © 2024 CERN for the benefit of the ATLAS collaboration. Published by IOP Publishing Ltd on behalf of Sissa Medialab.
DOI
10.1088/1748-0221/19/08/p08018
WOS
WOS:001381766600001
Archivio
https://hdl.handle.net/11368/3100818
info:eu-repo/semantics/altIdentifier/scopus/2-s2.0-85203388592
https://arts.units.it/item/preview.htm?uuid=4fa65518-771e-454b-9090-b81b0b0eeeae
Diritti
open access
license:creative commons
license uri:http://creativecommons.org/licenses/by/4.0/
FVG url
https://arts.units.it/bitstream/11368/3100818/1/Aad_2024_J._Inst._19_P08018.pdf
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