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Deep Neural Network application: Higgs boson CP state mixing angle in $H \to \tau \tau$ decay and at LHC

The consecutive steps of cascade decay initiated by H→ττ can be useful for the measurement of Higgs couplings and in particular of the Higgs boson parity. In the previous papers we have found that multidimensional signatures of the τ±→π±π0ν and τ±→3π±ν decays can be used to distinguish between scala...

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Detalles Bibliográficos
Autores principales: Lasocha, K., Richter-Was, E., Sadowski, M., Was, Z.
Lenguaje:eng
Publicado: 2020
Materias:
Acceso en línea:https://dx.doi.org/10.1103/PhysRevD.103.036003
http://cds.cern.ch/record/2707100
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author Lasocha, K.
Richter-Was, E.
Sadowski, M.
Was, Z.
author_facet Lasocha, K.
Richter-Was, E.
Sadowski, M.
Was, Z.
author_sort Lasocha, K.
collection CERN
description The consecutive steps of cascade decay initiated by H→ττ can be useful for the measurement of Higgs couplings and in particular of the Higgs boson parity. In the previous papers we have found that multidimensional signatures of the τ±→π±π0ν and τ±→3π±ν decays can be used to distinguish between scalar and pseudoscalar Higgs state. The machine learning techniques (ML) of binary classification, offered break-through opportunities to manage such complex multidimensional signatures. The classification between two possible CP states: scalar and pseudoscalar, is now extended to the measurement of the hypothetical mixing angle of Higgs boson parity states. The functional dependence of H→ττ matrix element on the mixing angle is predicted by theory. The potential to determine preferred mixing angle of the Higgs boson events sample including τ-decays is studied using deep neural network. The problem is addressed as classification or regression with the aim to determine the per-event: (a) probability distribution (spin weight) of the mixing angle; (b) parameters of the functional form of the spin weight; (c) the most preferred mixing angle. Performance of proposed methods is evaluated and compared.
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institution Organización Europea para la Investigación Nuclear
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spelling cern-27071002021-02-27T04:51:53Zdoi:10.1103/PhysRevD.103.036003http://cds.cern.ch/record/2707100engLasocha, K.Richter-Was, E.Sadowski, M.Was, Z.Deep Neural Network application: Higgs boson CP state mixing angle in $H \to \tau \tau$ decay and at LHChep-phParticle Physics - PhenomenologyThe consecutive steps of cascade decay initiated by H→ττ can be useful for the measurement of Higgs couplings and in particular of the Higgs boson parity. In the previous papers we have found that multidimensional signatures of the τ±→π±π0ν and τ±→3π±ν decays can be used to distinguish between scalar and pseudoscalar Higgs state. The machine learning techniques (ML) of binary classification, offered break-through opportunities to manage such complex multidimensional signatures. The classification between two possible CP states: scalar and pseudoscalar, is now extended to the measurement of the hypothetical mixing angle of Higgs boson parity states. The functional dependence of H→ττ matrix element on the mixing angle is predicted by theory. The potential to determine preferred mixing angle of the Higgs boson events sample including τ-decays is studied using deep neural network. The problem is addressed as classification or regression with the aim to determine the per-event: (a) probability distribution (spin weight) of the mixing angle; (b) parameters of the functional form of the spin weight; (c) the most preferred mixing angle. Performance of proposed methods is evaluated and compared.The consecutive steps of cascade decay initiated by H to tau tau can be useful for the measurement of Higgs couplings and in particular of the Higgs boson parity. In the previous papers we have found, that multi-dimensional signatures of the tau^pm to pi^pm pi^0 nu and tau^pm to 3pi^pm nu decays can be used to distinguish between scalar and pseudoscalar Higgs state. The Machine Learning techniques (ML) of binary classification, offered break-through opportunities to manage such complex multidimensional signatures. The classification between two possible CP states: scalar and pseudoscalar, is now extended to the measurement of the hypothetical mixing angle of Higgs boson parity states. The functional dependence of H to tau tau matrix element on the mixing angle is predicted by theory. The potential to determine preferred mixing angle of the Higgs boson events sample including $\tau$-decays is studied using Deep Neural Network. The problem is adressed as classification or regression with the aim to determine the per-event: a) probability distribution (spin weight) of the mixing angle; b) parameters of the functional form of the spin weight; c) the most preferred mixing angle. Performance of methods are evaluated and compared. Numerical results are collected.arXiv:2001.00455IFJPAN-IV-2019-19IFJPAN-IV-2019-19 (JUL. 2020)oai:cds.cern.ch:27071002020-01-02
spellingShingle hep-ph
Particle Physics - Phenomenology
Lasocha, K.
Richter-Was, E.
Sadowski, M.
Was, Z.
Deep Neural Network application: Higgs boson CP state mixing angle in $H \to \tau \tau$ decay and at LHC
title Deep Neural Network application: Higgs boson CP state mixing angle in $H \to \tau \tau$ decay and at LHC
title_full Deep Neural Network application: Higgs boson CP state mixing angle in $H \to \tau \tau$ decay and at LHC
title_fullStr Deep Neural Network application: Higgs boson CP state mixing angle in $H \to \tau \tau$ decay and at LHC
title_full_unstemmed Deep Neural Network application: Higgs boson CP state mixing angle in $H \to \tau \tau$ decay and at LHC
title_short Deep Neural Network application: Higgs boson CP state mixing angle in $H \to \tau \tau$ decay and at LHC
title_sort deep neural network application: higgs boson cp state mixing angle in $h \to \tau \tau$ decay and at lhc
topic hep-ph
Particle Physics - Phenomenology
url https://dx.doi.org/10.1103/PhysRevD.103.036003
http://cds.cern.ch/record/2707100
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AT richterwase deepneuralnetworkapplicationhiggsbosoncpstatemixingangleinhtotautaudecayandatlhc
AT sadowskim deepneuralnetworkapplicationhiggsbosoncpstatemixingangleinhtotautaudecayandatlhc
AT wasz deepneuralnetworkapplicationhiggsbosoncpstatemixingangleinhtotautaudecayandatlhc