Journal of High Energy Physics (Dec 2022)

Learning to identify semi-visible jets

  • Taylor Faucett,
  • Shih-Chieh Hsu,
  • Daniel Whiteson

DOI
https://doi.org/10.1007/JHEP12(2022)132
Journal volume & issue
Vol. 2022, no. 12
pp. 1 – 26

Abstract

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Abstract We train a network to identify jets with fractional dark decay (semi-visible jets) using the pattern of their low-level jet constituents, and explore the nature of the information used by the network by mapping it to a space of jet substructure observables. Semi-visible jets arise from dark matter particles which decay into a mixture of dark sector (invisible) and Standard Model (visible) particles. Such objects are challenging to identify due to the complex nature of jets and the alignment of the momentum imbalance from the dark particles with the jet axis, but such jets do not yet benefit from the construction of dedicated theoretically-motivated jet substructure observables. A deep network operating on jet constituents is used as a probe of the available information and indicates that classification power not captured by current high-level observables arises primarily from low-p T jet constituents.

Keywords