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Learning to Reconstruct Quirky Tracks

Authors :
Sha, Qiyu
Murnane, Daniel
Fieg, Max
Tong, Shelley
Zakharyan, Mark
Fang, Yaquan
Whiteson, Daniel
Publication Year :
2024

Abstract

Analysis of data from particle physics experiments traditionally sacrifices some sensitivity to new particles for the sake of practical computability, effectively ignoring some potentially striking signatures. However, recent advances in ML-based tracking allow for new inroads into previously inaccessible territory, such as reconstruction of tracks which do not follow helical trajectories. This paper presents a demonstration of the capacity of ML-based tracking to reconstruct the oscillating trajectories of quirks. The technique used is not specific to quirks, and opens the door to a program of searching for many kinds of non-standard tracks.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2410.00269
Document Type :
Working Paper