Machine learning-based identification of highly Lorentz-boosted hadronically decaying particles at the CMS experiment

Collaboration
2019
68 pages
Report number:
  • CMS-PAS-JME-18-002
Experiments:

Citations per year

201920202021202220230246810
Abstract:
In this note, machine learning (ML) based techniques are presented to identify and classify hadronic decays of highly Lorentz-boosted W/Z/H bosons and top quarks, to be used by the CMS Collaboration. The techniques presented include the Energy Correlation Functions tagger, the Boosted Event Shape Tagger, the ImageTop tagger, and the DeepAK8 tagger. Techniques without ML have also been evaluated and are included for comparison. An alternative approach for jet clustering and identification, the Heavy Resonance Tagger with Variable-R, has been also studied. The identification performance is studied in simulated events and directly compared among algorithms. The algorithms are also validated using 35.9 fb135.9~\mathrm{fb}^{-1} of proton-proton events collected at s=13 TeV\sqrt{s}=13~\mathrm{TeV}, and systematic uncertainties are assessed. The new techniques studied in this note provide significant performance improvements over non-ML techniques, reducing the background rate by up to a factor of \sim10 for the same signal efficiency.
Note:
  • Preliminary results
  • Monte-Carlo
  • p p: scattering
  • p p: colliding beams
  • W: boosted particle
  • Z0: boosted particle
  • top: boosted particle
  • Higgs particle: boosted particle
  • energy: correlation function
  • resonance: heavy
  • particle identification: performance