Anomalies, representations, and self-supervision

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Abstract

We develop a self-supervised method for density-based anomaly detection using contrastive learning, and test it using event-level anomaly data from CMS ADC2021. The AnomalyCLR technique is data-driven and uses augmentations of the background data to mimic non-Standard-Model events in a model-agnostic way. It uses a permutation-invariant Transformer Encoder architecture to map the objects measured in a collider event to the representation space, where the data augmentations define a representation space which is sensitive to potential anomalous features. An AutoEncoder trained on background representations then computes anomaly scores for a variety of signals in the representation space. With AnomalyCLR we find significant improvements on performance metrics for all signals when compared to the raw data baseline.

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Dillon, B. M., Favaro, L., Feiden, F., Modak, T., & Plehn, T. (2024). Anomalies, representations, and self-supervision. SciPost Physics Core, 7(3). https://doi.org/10.21468/SciPostPhysCore.7.3.056

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