Machine learning to identify top quarks for BSM searches

ORAL

Abstract

Many scenarios of physics beyond the standard model lead to final states involving a top quark, and its identification can play an important role. I will present a tagging method to identify tops quarks that decay into 3 separately resolved hadronic jets. This method complements other types of top quark identification, and is especially helpful in the case of low momentum top quarks. The tagger makes use of a neural network with both Recurrent Neural Network (RNN) and Dense Neural Network (DNN) elements. This tagger is applied in a search for supersymmetric particles in events with multiple top quarks and missing transverse energy. The search is based on proton-proton collisions collected with the CMS detector at the CERN LHC at a center of mass energy of 13 TeV.

*This research is supported by the U.S. Department of Energy (award: DE-SC0007861)

Authors

  • Kenneth Call

    • Baylor Univ
  • Jay Dittmann

    • Baylor University
  • Kenichi Hatakeyama

    • Baylor University
  • Nathaniel Pastika

    • Baylor University