2024
DOI: 10.1007/jhep04(2024)059
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Non-resonant anomaly detection with background extrapolation

Kehang Bai,
Radha Mastandrea,
Benjamin Nachman

Abstract: Complete anomaly detection strategies that are both signal sensitive and compatible with background estimation have largely focused on resonant signals. Non-resonant new physics scenarios are relatively under-explored and may arise from off-shell effects or final states with significant missing energy. In this paper, we extend a class of weakly supervised anomaly detection strategies developed for resonant physics to the non-resonant case. Machine learning models are trained to reweight, generate, or morph the… Show more

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