Please use this identifier to cite or link to this item: http://bura.brunel.ac.uk/handle/2438/25474
Title: Identification of hadronic tau lepton decays using a deep neural network
Authors: Tumasyan, A
Adam, W
Andrejkovic, JW
Bergauer, T
Chatterjee, S
Dragicevic, M
Escalante Del Valle, A
Frühwirth, R
Jeitler, M
Krammer, N
Lechner, L
Popov, A
Postiau, N
Starling, E
Thomas, L
Vanden Bemden, M
Vander Velde, C
Vanlaer, P
Wezenbeek, L
Cornelis, T
Dobur, D
Knolle, J
Lambrecht, L
Mestdach, G
Niedziela, M
Roskas, C
Samalan, A
Skovpen, K
Tytgat, M
Vermassen, B
Vit, M
Benecke, A
Bethani, A
Bruno, G
Bury, F
Caputo, C
David, P
Delaere, C
Zahid, S
Donertas, IS
Giammanco, A
Jaffel, K
Jain, S
Lemaitre, V
Teodorescu, L
Mondal, K
Prisciandaro, J
Taliercio, A
Teklishyn, M
Reid, ID
Tran, TT
Vischia, P
Wertz, S
Kyberd, P
Alves, GA
Hensel, C
Khan, A
Moraes, A
Cole, JE
Coldham, K
Liko, D
Mikulec, I
Paulitsch, P
Pitters, FM
Schieck, J
Schöfbeck, R
Schwarz, D
Templ, S
Waltenberger, W
Wulz, CE
Chekhovsky, V
Litomin, A
Makarenko, V
Darwish, MR
De Wolf, EA
Janssen, T
Kello, T
Lelek, A
Rejeb Sfar, H
Van Mechelen, P
Van Putte, S
Van Remortel, N
Blekman, F
Bols, ES
D'Hondt, J
Delcourt, M
El Faham, H
Lowette, S
Moortgat, S
Morton, A
Müller, D
Sahasransu, AR
Tavernier, S
Van Doninck, W
Van Mulders, P
Beghin, D
Bilin, B
Clerbaux, B
De Lentdecker, G
Favart, L
Grebenyuk, A
Kalsi, AK
Lee, K
Mahdavikhorrami, M
Makarenko, I
Moureaux, L
Pétré, L
Keywords: large detector systems for particle and astroparticle physics;particle identification methods;pattern recognition;cluster finding;calibration and fitting methods
Issue Date: 13-Jul-2022
Publisher: IOP Publishing Ltd on behalf of Sissa Medialab
Citation: Tumasyan, A. et al. (2022) 'Identification of hadronic tau lepton decays using a deep neural network', Journal of Instrumentation, 17 (7), pp. 1-51. doi: 10.1088/1748-0221/17/07/P07023.
Abstract: Copyright © 2022 CERN. A new algorithm is presented to discriminate reconstructed hadronic decays of tau leptons (τ h) that originate from genuine tau leptons in the CMS detector against τ h candidates that originate from quark or gluon jets, electrons, or muons. The algorithm inputs information from all reconstructed particles in the vicinity of a τ h candidate and employs a deep neural network with convolutional layers to efficiently process the inputs. This algorithm leads to a significantly improved performance compared with the previously used one. For example, the efficiency for a genuine τ h to pass the discriminator against jets increases by 10-30% for a given efficiency for quark and gluon jets. Furthermore, a more efficient τ h reconstruction is introduced that incorporates additional hadronic decay modes. The superior performance of the new algorithm to discriminate against jets, electrons, and muons and the improved τ h reconstruction method are validated with LHC proton-proton collision data at s = 13 TeV.
URI: https://bura.brunel.ac.uk/handle/2438/25474
DOI: https://doi.org/10.1088/1748-0221/17/07/P07023
Other Identifiers: ORCiD IDs: J.E. Cole: https://orcid.org/0000-0001-5638-7599; A Khan: https://orcid.org/0000-0002-4597-4402; P Kyberd: https://orcid.org/0000-0002-7353-7090; I.D. Reid: https://orcid.org/0000-0002-9235-779X; L. Teodorescu: https://orcid.org/0000-0002-6974-6201.
Appears in Collections:Dept of Electronic and Electrical Engineering Research Papers

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