Event-based anomaly detection for new physics searches at the LHC using machine learning
ORAL
Abstract
This paper discusses model-agnostic searches for new physics at the Large Hadron Collider (LHC) using anomaly-detection techniques for the identification of event signatures that deviate from the Standard Model (SM). We investigate anomaly detection in the context of machine-learning approaches using autoencoders, and illustrate expected shapes of invariant masses in the outlier region using Monte Carlo simulations. Challenges and conceptual limitations of this approach are discussed.
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Publication: S.V.Chekanov, W.Hopkins, Event-based anomaly detection for new physics searches at the LHC using machine learning, https://arxiv.org/abs/2111.12119, ANL-HEP-17239 (2020)
Presenters
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Sergei Chekanov
Argonne National Laboratory
Authors
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Sergei Chekanov
Argonne National Laboratory
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Walter Hopkins
Argonne National Laboratory