Signal mixture estimation for degenerate heavy Higgses using a deep neural network

If a new signal is established in future LHC data, a next question will be to determine the signal composition, in particular whether the signal is due to multiple near-degenerate states. We investigate the performance of a deep learning approach to signal mixture estimation for the challenging scen...

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Vydáno v:The European physical journal. C, Particles and fields Ročník 78; číslo 12; s. 1 - 11
Hlavní autoři: Kvellestad, Anders, Maeland, Steffen, Strümke, Inga
Médium: Journal Article
Jazyk:angličtina
Vydáno: Berlin/Heidelberg Springer Berlin Heidelberg 01.12.2018
Springer
Springer Nature B.V
SpringerOpen
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ISSN:1434-6044, 1434-6052
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Shrnutí:If a new signal is established in future LHC data, a next question will be to determine the signal composition, in particular whether the signal is due to multiple near-degenerate states. We investigate the performance of a deep learning approach to signal mixture estimation for the challenging scenario of a ditau signal coming from a pair of degenerate Higgs bosons of opposite CP charge. This constitutes a parameter estimation problem for a mixture model with highly overlapping features. We use an unbinned maximum likelihood fit to a neural network output, and compare the results to mixture estimation via a fit to a single kinematic variable. For our benchmark scenarios we find a ∼ 20 % improvement in the estimate uncertainty.
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ISSN:1434-6044
1434-6052
DOI:10.1140/epjc/s10052-018-6455-z