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Accelerating Resonance Searches via Signature-Oriented Pre-training

Authors :
Li, Congqiao
Agapitos, Antonios
Drews, Jovin
Duarte, Javier
Fu, Dawei
Gao, Leyun
Kansal, Raghav
Kasieczka, Gregor
Moureaux, Louis
Qu, Huilin
Suarez, Cristina Mantilla
Li, Qiang
Publication Year :
2024

Abstract

The search for heavy resonances beyond the Standard Model (BSM) is a key objective at the LHC. While the recent use of advanced deep neural networks for boosted-jet tagging significantly enhances the sensitivity of dedicated searches, it is limited to specific final states, leaving vast potential BSM phase space underexplored. We introduce a novel experimental method, Signature-Oriented Pre-training for Heavy-resonance ObservatioN (Sophon), which leverages deep learning to cover an extensive number of boosted final states. Pre-trained on the comprehensive JetClass-II dataset, the Sophon model learns intricate jet signatures, ensuring the optimal constructions of various jet tagging discriminates and enabling high-performance transfer learning capabilities. We show that the method can not only push widespread model-specific searches to their sensitivity frontier, but also greatly improve model-agnostic approaches, accelerating LHC resonance searches in a broad sense.<br />Comment: 14 pages, 5 figures

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2405.12972
Document Type :
Working Paper