Classifying Anomalies THrough Outer Density Estimation (CATHODE)
Anna Hallin, Joshua Isaacson, Gregor Kasieczka, Claudius Krause,, Benjamin Nachman, Tobias Quadfasel, Matthias Schlaffer, David Shih, Manuel, Sommerhalder

TL;DR
CATHODE introduces a neural density estimation-based, model-agnostic method for anomaly detection in LHC data, effectively identifying BSM signals by comparing observed data to a learned background model.
Contribution
The paper presents CATHODE, a novel approach that uses conditional density estimation and classification to detect anomalies, nearly reaching optimal performance and outperforming existing methods.
Findings
CATHODE nearly saturates the optimal anomaly detection performance.
It significantly outperforms other bump hunt enhancement methods.
The approach is robust against feature correlations.
Abstract
We propose a new model-agnostic search strategy for physics beyond the standard model (BSM) at the LHC, based on a novel application of neural density estimation to anomaly detection. Our approach, which we call Classifying Anomalies THrough Outer Density Estimation (CATHODE), assumes the BSM signal is localized in a signal region (defined e.g. using invariant mass). By training a conditional density estimator on a collection of additional features outside the signal region, interpolating it into the signal region, and sampling from it, we produce a collection of events that follow the background model. We can then train a classifier to distinguish the data from the events sampled from the background model, thereby approaching the optimal anomaly detector. Using the LHC Olympics R&D dataset, we demonstrate that CATHODE nearly saturates the best possible performance, and significantly…
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Taxonomy
TopicsParticle physics theoretical and experimental studies · Particle Detector Development and Performance · Computational Physics and Python Applications
