Skip to main content

Lund University Publications

LUND UNIVERSITY LIBRARIES

Phenomenology at the large hadron collider with deep learning : the case of vector-like quarks decaying to light jets

Freitas, Felipe F. ; Gonçalves, João ; Morais, António P. and Pasechnik, Roman LU (2022) In European Physical Journal C 82(9).
Abstract

In this work, we continue our exploration of TeV-scale vector-like fermion signatures inspired by a Grand Unification scenario based on the trinification gauge group. A particular focus is given to pair-production topologies of vector-like quarks (VLQs) at the LHC, in a multi-jet plus a charged lepton and a missing energy signature. We employ Deep Learning methods and techniques based in evolutive algorithms that optimize hyper-parameters in the neural network construction, whose objective is to maximise the Asimov estimate for distinct VLQ masses. In this article, we consider the implications of an innovative approach by simultaneously combining detector images (also known as jet images) and tabular data containing kinematic... (More)

In this work, we continue our exploration of TeV-scale vector-like fermion signatures inspired by a Grand Unification scenario based on the trinification gauge group. A particular focus is given to pair-production topologies of vector-like quarks (VLQs) at the LHC, in a multi-jet plus a charged lepton and a missing energy signature. We employ Deep Learning methods and techniques based in evolutive algorithms that optimize hyper-parameters in the neural network construction, whose objective is to maximise the Asimov estimate for distinct VLQ masses. In this article, we consider the implications of an innovative approach by simultaneously combining detector images (also known as jet images) and tabular data containing kinematic information from the final states. With this technique we are able to exclude VLQs, that are specific for the considered model, up to a mass of 800 GeV in both the high-luminosity the Run-III phases of the LHC programme.

(Less)
Please use this url to cite or link to this publication:
author
; ; and
organization
publishing date
type
Contribution to journal
publication status
published
subject
in
European Physical Journal C
volume
82
issue
9
article number
826
publisher
Springer
external identifiers
  • scopus:85138258496
ISSN
1434-6044
DOI
10.1140/epjc/s10052-022-10799-8
language
English
LU publication?
yes
id
7eae61c1-ee2c-41b9-90cd-c546ed738590
date added to LUP
2022-12-02 11:38:48
date last changed
2024-04-18 09:02:35
@article{7eae61c1-ee2c-41b9-90cd-c546ed738590,
  abstract     = {{<p>In this work, we continue our exploration of TeV-scale vector-like fermion signatures inspired by a Grand Unification scenario based on the trinification gauge group. A particular focus is given to pair-production topologies of vector-like quarks (VLQs) at the LHC, in a multi-jet plus a charged lepton and a missing energy signature. We employ Deep Learning methods and techniques based in evolutive algorithms that optimize hyper-parameters in the neural network construction, whose objective is to maximise the Asimov estimate for distinct VLQ masses. In this article, we consider the implications of an innovative approach by simultaneously combining detector images (also known as jet images) and tabular data containing kinematic information from the final states. With this technique we are able to exclude VLQs, that are specific for the considered model, up to a mass of 800 GeV in both the high-luminosity the Run-III phases of the LHC programme.</p>}},
  author       = {{Freitas, Felipe F. and Gonçalves, João and Morais, António P. and Pasechnik, Roman}},
  issn         = {{1434-6044}},
  language     = {{eng}},
  month        = {{09}},
  number       = {{9}},
  publisher    = {{Springer}},
  series       = {{European Physical Journal C}},
  title        = {{Phenomenology at the large hadron collider with deep learning : the case of vector-like quarks decaying to light jets}},
  url          = {{http://dx.doi.org/10.1140/epjc/s10052-022-10799-8}},
  doi          = {{10.1140/epjc/s10052-022-10799-8}},
  volume       = {{82}},
  year         = {{2022}},
}