arXiv Analytics

Sign in

arXiv:2404.01071 [hep-ex]AbstractReferencesReviewsResources

Machine Learning in High Energy Physics: A review of heavy-flavor jet tagging at the LHC

Spandan Mondal, Luca Mastrolorenzo

Published 2024-04-01Version 1

The application of machine learning (ML) in high energy physics (HEP), specifically in heavy-flavor jet tagging at Large Hadron Collider (LHC) experiments, has experienced remarkable growth and innovation in the past decade. This review provides a detailed examination of current and past ML techniques in this domain. It starts by exploring various data representation methods and ML architectures, encompassing traditional ML algorithms and advanced deep learning techniques. Subsequent sections discuss specific instances of successful ML applications in jet flavor tagging in the ATLAS and CMS experiments at the LHC, ranging from basic fully-connected layers to graph neural networks employing attention mechanisms. To systematically categorize the advancements over the LHC's three runs, the paper classifies jet tagging algorithms into three generations, each characterized by specific data representation techniques and ML architectures. This classification aims to provide an overview of the chronological evolution in this field. Finally, a brief discussion about anticipated future developments and potential research directions in the field is presented.

Related articles: Most relevant | Search more
arXiv:1712.09114 [hep-ex] (Published 2017-12-25)
HEPDrone: a toolkit for the mass application of machine learning in High Energy Physics
arXiv:1101.3186 [hep-ex] (Published 2011-01-17)
Data Preservation in High Energy Physics
arXiv:1009.3763 [hep-ex] (Published 2010-09-20)
Data Preservation in High Energy Physics - why, how and when?