English

Boosting $H\to b\bar b$ with Machine Learning

High Energy Physics - Phenomenology 2018-11-05 v3 High Energy Physics - Experiment

Abstract

High pTp_T Higgs production at hadron colliders provides a direct probe of the internal structure of the ggHgg \to H loop with the HbbˉH \to b\bar{b} decay offering the most statistics due to the large branching ratio. Despite the overwhelming QCD background, recent advances in jet substructure have put the observation of the ggHbbˉgg\to H \to b\bar{b} channel at the LHC within the realm of possibility. In order to enhance the sensitivity to this process, we develop a two stream convolutional neural network, with one stream acting on jet information and one using global event properties. The neural network significantly increases the discovery potential of a Higgs signal, both for high pTp_T Standard Model production as well for possible beyond the Standard Model contributions. Unlike most studies for boosted hadronically decaying massive particles, the boosted Higgs search is unique because double bb-tagging rejects nearly all background processes that do not have two hard prongs. In this context --- which goes beyond state-of-the-art two-prong tagging --- the network is studied to identify the origin of the additional information leading to the increased significance. The procedures described here are also applicable to related final states where they can be used to identify additional sources of discrimination power that are not being exploited by current techniques.

Keywords

Cite

@article{arxiv.1807.10768,
  title  = {Boosting $H\to b\bar b$ with Machine Learning},
  author = {Joshua Lin and Marat Freytsis and Ian Moult and Benjamin Nachman},
  journal= {arXiv preprint arXiv:1807.10768},
  year   = {2018}
}

Comments

26 pages, 12 figures. v3: Updated to journal version

R2 v1 2026-06-23T03:17:27.462Z