Journal article
Authors list: Dort, Katharina; Bilk, Johannes; Kas, Stepahnie; Lange, Jens Soren; Peter, Marvin; Schellhaas, Timo; Schwenker, Benjamin; Spruck, Bjoern
Publication year: 2022
Journal: The European Physical Journal C
Volume number: 82
Issue number: 7
ISSN: 1434-6044
eISSN: 1434-6052
Open access status: Gold
DOI Link: https://doi.org/10.1140/epjc/s10052-022-10548-x
Publisher: SpringerOpen
Abstract:
Machine learning has become a popular instrument for the search of undiscovered particles and mechanisms at particle collider experiments. It enables the investigation of large datasets and is therefore suitable to operate directly on minimally-processed data coming from the detector instead of reconstructed objects. Here, we study patterns of raw pixel hits recorded by the Belle II pixel detector, that is operational since 2019 and presently features 4 M pixels and trigger rates up to 5 kHz. In particular, we focus on unsupervised techniques that operate without the need for a theoretical model. These model-agnostic approaches allow for an unbiased exploration of data while filtering out anomalous detector signatures that could hint at new physics scenarios. We present the identification of hypothetical magnetic monopoles against Belle II beam background using self-organizing kohonen maps and autoencoders. These two unsupervised algorithms are compared to a Multilayer Perceptron and a superior signal efficiency of the Autoencoder is found at high background-rejection levels. Our results strengthen the case for using unsupervised machine learning techniques to complement traditional search strategies at particle colliders and pave the way to potential online applications of the algorithms in the near future.
Citation Styles
Harvard Citation style: Dort, K., Bilk, J., Kas, S., Lange, J., Peter, M., Schellhaas, T., et al. (2022) Comparison of supervised and unsupervised anomaly detection in Belle II pixel detector data, The European Physical Journal C, 82(7), Article 587. https://doi.org/10.1140/epjc/s10052-022-10548-x
APA Citation style: Dort, K., Bilk, J., Kas, S., Lange, J., Peter, M., Schellhaas, T., Schwenker, B., & Spruck, B. (2022). Comparison of supervised and unsupervised anomaly detection in Belle II pixel detector data. The European Physical Journal C. 82(7), Article 587. https://doi.org/10.1140/epjc/s10052-022-10548-x