Self-Supervised Learning Strategies for Jet Physics

Patrick Rieck, Kyle Cranmer, Etienne Dreyer, Eilam Gross, Nilotpal Kakati, Dmitrii Kobylanskii, Garrett W. Merz, Nathalie Soybelman

Research output: Contribution to journalArticle

Abstract

We extend the re-simulation-based self-supervised learning approach to learning representations of hadronic jets in colliders by exploiting the Markov property of the standard simulation chain. Instead of masking, cropping, or other forms of data augmentation, this approach simulates pairs of events where the initial portion of the simulation is shared, but the subsequent stages of the simulation evolve independently. When paired with a contrastive loss function, this naturally leads to representations that capture the physics in the initial stages of the simulation. In particular, we force the hard scattering and parton shower to be shared and let the hadronization and interaction with the detector evolve independently. We then evaluate the utility of these representations on downstream tasks.
Original languageEnglish
Number of pages19
Journalarxiv.org
DOIs
StateIn preparation - 14 Mar 2025

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