Reconstructing short-lived particles using hypergraph representation learning

Callum Birch-Sykes, Brian Le, R. F. Y. Peters, Ethan Simpson*, Zihan Zhang*

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

Abstract

In collider experiments, the kinematic reconstruction of heavy, short-lived particles is vital for precision tests of the Standard Model and in searches for physics beyond it. Performing kinematic reconstruction in collider events with many final-state jets, such as the all-hadronic decay of top-antitop quark pairs, is challenging. We present Hypergraph for Particle Event Reconstruction (HyPER), a novel architecture based on graph neural networks that uses hypergraph representation learning to build more powerful and efficient representations of collider events. HyPER is used to reconstruct parent particles from sets of final-state objects. Trained and tested on simulation, the HyPER model is shown to perform favorably when compared to existing state-of-the-art reconstruction techniques, while demonstrating superior parameter efficiency. The novel hypergraph approach allows the method to be applied to particle reconstruction in a multitude of different physics processes.
Original languageEnglish
Article number032004
JournalPhys.Rev.D
Volume111
Issue number3
DOIs
Publication statusPublished - 11 Feb 2025

Keywords

  • Top quark
  • Artificial neural networks
  • Hadron colliders
  • Particle data analysis
  • Particle decays

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