Top Jets at the LHC
Leandro G. Almeida, Seung J. Lee, Gilad Perez, Ilmo Sung, Joseph Virzi

TL;DR
This paper develops a theoretical and experimental framework for identifying high-energy top quarks at the LHC by analyzing jet mass spectra and substructure, improving background discrimination without b-tagging.
Contribution
It introduces a first-principles based method for top-jet tagging using jet mass and shape variables, applicable to other boosted particles, with analytic QCD background modeling.
Findings
Effective top-jet identification at p_T ≥ 1 TeV with 25 fb^{-1}
Accurate QCD background modeling via analytic jet mass spectrum
Enhanced top polarization measurement using b-quark p_T
Abstract
We study the reconstruction of high p_T hadronically-decaying top quarks at the LHC. The main challenge in identifying energetic top quarks is that the decay products become increasingly collimated. This reduces the efficacy of conventional methods that exploit the topology of the top decay chain. We focus on the cases where the decay products of the top quark are reconstructed as a single jet, a "top-jet". The most basic "top-tag" method based on jet mass measurement is considered in detail. To analyze the top-tagging method, theoretical and experimental aspects of the QCD jet background are examined. Based on QCD factorization, we derive a simple analytic approximation for the shape of the QCD jet mass spectrum. We observe a good agreement with the Monte Carlo simulation. We consider high-p_T t\bar{t} production in the Standard Model as an example, and show that our theoretical QCD…
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Taxonomy
TopicsParticle physics theoretical and experimental studies · Particle Detector Development and Performance · High-Energy Particle Collisions Research
