English

Identifying Merged Tracks in Dense Environments with Machine Learning

High Energy Physics - Experiment 2019-10-23 v2 Instrumentation and Detectors

Abstract

Tracking in high density environments plays an important role in many physics analyses at the LHC. In such environments, it is possible that two nearly collinear particles contribute to the same hits as they travel through the ATLAS pixel detector and semiconductor tracker. If the two particles are sufficiently collinear, it is possible that only a single track candidate will be created, denominated a "merged track", leading to a decrease in tracking efficiency. These proceedings show a possible new technique that uses a boosted decision tree to classify reconstructed tracks as merged. An application of this new method is the recovery of the number of reconstructed tracks in high transverse momentum three-pronged τ\tau decays, leading to an increased τ\tau reconstruction efficiency. The observed mistag rate is small.

Keywords

Cite

@article{arxiv.1910.06286,
  title  = {Identifying Merged Tracks in Dense Environments with Machine Learning},
  author = {Patrick McCormack and Milan Ganai and Ben Nachman and Maurice Garcia-Sciveres},
  journal= {arXiv preprint arXiv:1910.06286},
  year   = {2019}
}

Comments

Proceedings for Young Scientist Forum Poster at CTD/WIT 2019 in Valencia, Spain

R2 v1 2026-06-23T11:43:16.434Z