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Autori principali: Richter-Was, E., Yerniyazov, T., Was, Z.
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2411.06216
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author Richter-Was, E.
Yerniyazov, T.
Was, Z.
author_facet Richter-Was, E.
Yerniyazov, T.
Was, Z.
contents The consecutive steps of H to tau tau cascade can be useful for the measurement of Higgs couplings and parity. The analysis methos of ATLAS and CMS Collaborations was to fit a one-dimensional distribution of the phi* angle, phi*, which is sensitive to transverse spin correlations and, hence, to the CP mixing angle, phi^CP. Machine Learning techniques (ML) offer opportunities to manage complex multidimensional signatures. The 4-momenta of the tau decay products can be used as input to the machine learning and to predict the CP-sensitive pseudo-observables and/or provide discrimination between different CP hypotheses. We show that the classification or regression methods can be used to train an ML model to predict the spin weight sensitive to the CP state of the decaying Higgs boson, parameters of the functional form of the spin weight, or the most preferred CP mixing angle of the analysed sample. The one-dimensional distribution of the predicted spin weight or the most preferred CP mixing angle of the experimental data can be examined further, with the statistical methods, to derive the measurement of the CP mixing state of the Higgs signal events. This paper extends our previous studies, with more details for the features and how proposed pseudo-observables can be used in the measurement.
format Preprint
id arxiv_https___arxiv_org_abs_2411_06216
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Pseudo-observables and Deep Neural Network for mixed CP -- H to tau tau decays at LHC
Richter-Was, E.
Yerniyazov, T.
Was, Z.
High Energy Physics - Phenomenology
The consecutive steps of H to tau tau cascade can be useful for the measurement of Higgs couplings and parity. The analysis methos of ATLAS and CMS Collaborations was to fit a one-dimensional distribution of the phi* angle, phi*, which is sensitive to transverse spin correlations and, hence, to the CP mixing angle, phi^CP. Machine Learning techniques (ML) offer opportunities to manage complex multidimensional signatures. The 4-momenta of the tau decay products can be used as input to the machine learning and to predict the CP-sensitive pseudo-observables and/or provide discrimination between different CP hypotheses. We show that the classification or regression methods can be used to train an ML model to predict the spin weight sensitive to the CP state of the decaying Higgs boson, parameters of the functional form of the spin weight, or the most preferred CP mixing angle of the analysed sample. The one-dimensional distribution of the predicted spin weight or the most preferred CP mixing angle of the experimental data can be examined further, with the statistical methods, to derive the measurement of the CP mixing state of the Higgs signal events. This paper extends our previous studies, with more details for the features and how proposed pseudo-observables can be used in the measurement.
title Pseudo-observables and Deep Neural Network for mixed CP -- H to tau tau decays at LHC
topic High Energy Physics - Phenomenology
url https://arxiv.org/abs/2411.06216