25–29 May 2026
Chulalongkorn University
Asia/Bangkok timezone

Particle-Based Representation Learning for Anomaly Detection in the CMS High-Level Trigger

25 May 2026, 17:27
18m
Chulalongkorn University

Chulalongkorn University

Oral Presentation Track 2 - Online and real-time computing Track 2 - Online and real-time computing

Speaker

Mehrnoosh Moallemi (Rutherford Appleton Laboratory (GB))

Description

Anomaly detection at the LHC aims to identify events that deviate from dominant Standard Model (SM) processes while minimizing assumptions inherent to predefined trigger selections, enabling model-agnostic searches for new physics. The CMS experiment employs a two-stage trigger system that reduces the LHC bunch-crossing rate of up to 40 MHz to an output rate of approximately 9 kHz for offline processing in Run 3.
This work explores a proposed additional anomaly-detection layer at the High-Level Trigger (HLT), complementing the AXOL1TL system deployed at Level-1. The approach uses self-supervised representation learning to construct a physics-informed latent space in which the main SM processes populate well-separated regions, while anomalous or previously unmodeled event topologies tend to occupy distinct areas.
The model ingests the full set of reconstructed particles and their features, processes them with an attention-based architecture, and produces a compact fixed-size event representation. Preliminary results demonstrate the potential of this strategy to preferentially highlight anomalous events and to achieve rate reduction while improving sensitivity to a broad range of signal scenarios relative to dominant SM backgrounds.

Authors

Abhijith Gandrakota (Fermi National Accelerator Lab. (US)) Claire Shepherd-Themistocleous (Rutherford Appleton Laboratory (GB)) Elliott Kauffman (Princeton University (US)) Jennifer Ngadiuba (FNAL) Maciej Mikolaj Glowacki (CERN) Mehrnoosh Moallemi (Rutherford Appleton Laboratory (GB)) Roy Cruz Candelaria (University of Wisconsin Madison) Sabrina Giorgetti (Universita e INFN, Padova (IT)) Sioni Paris Summers (CERN) Stefano Moretti (Science and Technology Facilities Council STFC (GB))

Presentation materials

There are no materials yet.