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Published December 2019 | Submitted
Journal Article Open

Topology Classification with Deep Learning to Improve Real-Time Event Selection at the LHC

Abstract

We show how an event topology classification based on deep learning could be used to improve the purity of data samples selected in real time at the Large Hadron Collider. We consider different data representations, on which different kinds of multi-class classifiers are trained. Both raw data and high-level features are utilized. In the considered examples, a filter based on the classifier's score can be trained to retain ∼99% of the interesting events and reduce the false-positive rate by more than one order of magnitude. By operating such a filter as part of the online event selection infrastructure of the LHC experiments, one could benefit from a more flexible and inclusive selection strategy while reducing the amount of downstream resources wasted in processing false positives. The saved resources could translate into a reduction of the detector operation cost or into an effective increase of storage and processing capabilities, which could be reinvested to extend the physics reach of the LHC experiments.

Additional Information

© Springer Nature Switzerland AG 2019. Received: 1 August 2018; Accepted: 21 August 2019; Published online: 31 August 2019. This work is supported by Grants from the Swiss National Supercomputing Center (CSCS) under project ID d59, the United States Department of Energy, Office of High Energy Physics Research under Caltech Contract No. DE-SC0011925, and the European Research Council (ERC) under the European Union's Horizon 2020 research and innovation program (Grant agreement no. 772369). T.N. would like to thank Duc Le for valuable discussions during the earlier stage of this project. We thank CERN OpenLab for supporting D.W. during his internship at CERN. We are grateful to Caltech and the Kavli Foundation for their support of undergraduate student research in cross-cutting areas of machine learning and domain sciences. Part of this work was conducted at "iBanks", the AI GPU cluster at Caltech. We acknowledge NVIDIA, SuperMicro and the Kavli Foundation for their support of "iBanks". On behalf of all authors, the corresponding author states that there is no conflict of interest.

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