Exploring Optimal Transport for Event-Level Anomaly Detection at the LHC - Jessica Howard (Santa Barbara, KITP)

Wednesday, February 21, 2024 · 12:30 p.m.–2:30 p.m.  PT

Abstract: Anomaly detection is a promising, model-agnostic strategy to find physics beyond the Standard Model. State-of-the-art machine learning methods offer impressive performance on anomaly detection tasks, but interpretability, resource, and memory concerns motivate considering a wide range of alternatives. We explore using the 2-Wasserstein distance from optimal transport theory, both as an anomaly score and as input to interpretable machine learning methods, for event-level anomaly detection at the LHC. We find that the choice of ground space plays a key role in optimizing performance and comment on the feasibility of implementing these methods in the L1 trigger system.  Based on: https://arxiv.org/abs/2401.15542.

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