English

Exploring unsupervised top tagging using Bayesian inference

High Energy Physics - Phenomenology 2023-06-26 v2 High Energy Physics - Experiment

Abstract

Recognizing hadronically decaying top-quark jets in a sample of jets, or even its total fraction in the sample, is an important step in many LHC searches for Standard Model and Beyond Standard Model physics as well. Although there exists outstanding top-tagger algorithms, their construction and their expected performance rely on Montecarlo simulations, which may induce potential biases. For these reasons we develop two simple unsupervised top-tagger algorithms based on performing Bayesian inference on a mixture model. In one of them we use as the observed variable a new geometrically-based observable A~3\tilde{A}_{3}, and in the other we consider the more traditional τ3/τ2\tau_{3}/\tau_{2} NN-subjettiness ratio, which yields a better performance. As expected, we find that the unsupervised tagger performance is below existing supervised taggers, reaching expected Area Under Curve AUC 0.800.81\sim 0.80-0.81 and accuracies of about 69% - 75% in a full range of sample purity. However, these performances are more robust to possible biases in the Montecarlo that their supervised counterparts. Our findings are a step towards exploring and considering simpler and unbiased taggers.

Keywords

Cite

@article{arxiv.2212.13583,
  title  = {Exploring unsupervised top tagging using Bayesian inference},
  author = {Ezequiel Alvarez and Manuel Szewc and Alejandro Szynkman and Santiago A. Tanco and Tatiana Tarutina},
  journal= {arXiv preprint arXiv:2212.13583},
  year   = {2023}
}

Comments

15 pages, 6 figures; Published version

R2 v1 2026-06-28T07:54:12.800Z