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Infrared safety of a neural-net top tagging algorithm

Authors
Choi, SuyongLee, Seung J.Perelstein, Maxim
Issue Date
20-2월-2019
Publisher
SPRINGER
Keywords
Jets; QCD Phenomenology
Citation
JOURNAL OF HIGH ENERGY PHYSICS, no.2
Indexed
SCIE
SCOPUS
Journal Title
JOURNAL OF HIGH ENERGY PHYSICS
Number
2
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/131485
DOI
10.1007/JHEP02(2019)132
ISSN
1126-6708
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.
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