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Comparing weak- and unsupervised methods for resonant anomaly detection

Jack H. Collins, Pablo Martín-Ramiro, Benjamin Nachman, David Shih

2021The European Physical Journal C41 citationsDOIOpen Access PDF

Abstract

Abstract Anomaly detection techniques are growing in importance at the Large Hadron Collider (LHC), motivated by the increasing need to search for new physics in a model-agnostic way. In this work, we provide a detailed comparative study between a well-studied unsupervised method called the autoencoder (AE) and a weakly-supervised approach based on the Classification Without Labels (CWoLa) technique. We examine the ability of the two methods to identify a new physics signal at different cross sections in a fully hadronic resonance search. By construction, the AE classification performance is independent of the amount of injected signal. In contrast, the CWoLa performance improves with increasing signal abundance. When integrating these approaches with a complete background estimate, we find that the two methods have complementary sensitivity. In particular, CWoLa is effective at finding diverse and moderately rare signals while the AE can provide sensitivity to very rare signals, but only with certain topologies. We therefore demonstrate that both techniques are complementary and can be used together for anomaly detection at the LHC.

Topics & Concepts

AutoencoderSensitivity (control systems)Anomaly detectionPattern recognition (psychology)Artificial intelligenceSIGNAL (programming language)Computer scienceLarge Hadron ColliderPhysicsParticle physicsDetection theoryAnomaly (physics)ColliderMachine learningData miningHadronResonance (particle physics)Signal processingAlgorithmParticle physics theoretical and experimental studiesAnomaly Detection Techniques and ApplicationsQuantum Chromodynamics and Particle Interactions