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AI-powered full-data set search for new physics in ultraperipheral and diffractive events
Journal article   Open access   Peer reviewed

AI-powered full-data set search for new physics in ultraperipheral and diffractive events

S. Ragoni, B. Kinkaid, J. Seger, C. Anson and D. Tlusty
The journal of high energy physics, Vol.2026(4), p.139
04/17/2026

Abstract

Classical and Quantum Gravitation Elementary Particles Physics Physics and Astronomy Quantum Field Theories Quantum Field Theory Quantum Physics Regular Article - Theoretical Physics Relativity Theory String Theory
A bstract We present possible strategies for anomaly detection of rare particle decays and exotic hadrons, such as pentaquarks, in low-background environments such as those characteristic of diffractive events and ultraperipheral pp, p-A, or A-A collisions at the CERN Large Hadron Collider (LHC). Our models are trained with toy samples representing the UPC processes measured until now by the ALICE Collaboration. When samples containing rare processes such as J/ ψ → 4 π and pentaquark production, where the number of injected pentaquark events is estimated based on current experimentally available upper limits, and those for J/ ψ → 4 π are estimated through the branching ratio of the decay channel, are analyzed, the rare processes are flagged as anomalous by the models. This approach demonstrates the applicability of such a technique for searches for new physics in the current and future data sets at collider experiments with high purity, while also allowing for the measurement of upper limits for the production of exotica.
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https://doi.org/10.1007/JHEP04(2026)139View
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