Probing Higgs exotic decay at the LHC with machine learning
Sunghoon Jung,
Zhen Liu,
Lian-Tao Wang
et al.
Abstract:We study the tagging of Higgs exotic decay signals using different types of deep neural networks (DNNs), focusing on the W ± h associated production channel followed by Higgs decaying into n b-quarks with n = 4, 6 and 8. All the Higgs decay products are collected into a fat-jet, to which we apply further selection using the DNNs. Three kinds of DNNs are considered, namely convolutional neural network (CNN), recursive neural network (RecNN) and particle flow network (PFN). The PFN can achieve the best performan… Show more
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