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A search for Lorentz-boosted Higgs bosons decaying to charm quarks in the CMS experiment using deep neural networks

Measurement of the decay of the Higgs boson to charm quarks provides a direct probe of the Higgs coupling to second-generation quarks. Therefore, it is crucial for understanding the structure of Yukawa couplings. In this thesis, a search for the Higgs boson decaying to charm quarks with the CMS expe...

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Autor principal: Qu, Huilin
Lenguaje:eng
Publicado: 2019
Materias:
Acceso en línea:http://cds.cern.ch/record/2693594
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author Qu, Huilin
author_facet Qu, Huilin
author_sort Qu, Huilin
collection CERN
description Measurement of the decay of the Higgs boson to charm quarks provides a direct probe of the Higgs coupling to second-generation quarks. Therefore, it is crucial for understanding the structure of Yukawa couplings. In this thesis, a search for the Higgs boson decaying to charm quarks with the CMS experiment is presented. The search is designed for Lorentz-boosted Higgs bosons produced in association with vector (V) bosons (W or Z bosons). A novel approach that reconstructs both quarks from the Higgs boson decay with a single large-radius jet is adopted. The charm quark pair is identified with an advanced deep learning–based algorithm. This approach leads to a highly competitive result: Using proton-proton collision data corresponding to an integrated luminosity of35.9 fb$^{−1}$ , an observed (expected) upper limit on σ(VH) × B(H → c$\bar{c})$ of 71 (49) times the standard model expectation at 95% confidence level is obtained.A detailed description of the deep learning–based boosted object identification algorithm is also presented in this thesis. It is a versatile algorithm designed to identify and classify hadronic decays of highly Lorentz-boosted top quarks and W, Z, Higgs bosons. Using deep neural networks to directly access and process the raw information of all constituent particle-flow candidates of a jet, this advanced algorithm has achieved significant performance improvements compared to traditional approaches.
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spelling cern-26935942019-10-15T18:30:51Zhttp://cds.cern.ch/record/2693594engQu, HuilinA search for Lorentz-boosted Higgs bosons decaying to charm quarks in the CMS experiment using deep neural networksDetectors and Experimental TechniquesMeasurement of the decay of the Higgs boson to charm quarks provides a direct probe of the Higgs coupling to second-generation quarks. Therefore, it is crucial for understanding the structure of Yukawa couplings. In this thesis, a search for the Higgs boson decaying to charm quarks with the CMS experiment is presented. The search is designed for Lorentz-boosted Higgs bosons produced in association with vector (V) bosons (W or Z bosons). A novel approach that reconstructs both quarks from the Higgs boson decay with a single large-radius jet is adopted. The charm quark pair is identified with an advanced deep learning–based algorithm. This approach leads to a highly competitive result: Using proton-proton collision data corresponding to an integrated luminosity of35.9 fb$^{−1}$ , an observed (expected) upper limit on σ(VH) × B(H → c$\bar{c})$ of 71 (49) times the standard model expectation at 95% confidence level is obtained.A detailed description of the deep learning–based boosted object identification algorithm is also presented in this thesis. It is a versatile algorithm designed to identify and classify hadronic decays of highly Lorentz-boosted top quarks and W, Z, Higgs bosons. Using deep neural networks to directly access and process the raw information of all constituent particle-flow candidates of a jet, this advanced algorithm has achieved significant performance improvements compared to traditional approaches.CERN-THESIS-2019-165CMS-TS-2019-017oai:cds.cern.ch:26935942019
spellingShingle Detectors and Experimental Techniques
Qu, Huilin
A search for Lorentz-boosted Higgs bosons decaying to charm quarks in the CMS experiment using deep neural networks
title A search for Lorentz-boosted Higgs bosons decaying to charm quarks in the CMS experiment using deep neural networks
title_full A search for Lorentz-boosted Higgs bosons decaying to charm quarks in the CMS experiment using deep neural networks
title_fullStr A search for Lorentz-boosted Higgs bosons decaying to charm quarks in the CMS experiment using deep neural networks
title_full_unstemmed A search for Lorentz-boosted Higgs bosons decaying to charm quarks in the CMS experiment using deep neural networks
title_short A search for Lorentz-boosted Higgs bosons decaying to charm quarks in the CMS experiment using deep neural networks
title_sort search for lorentz-boosted higgs bosons decaying to charm quarks in the cms experiment using deep neural networks
topic Detectors and Experimental Techniques
url http://cds.cern.ch/record/2693594
work_keys_str_mv AT quhuilin asearchforlorentzboostedhiggsbosonsdecayingtocharmquarksinthecmsexperimentusingdeepneuralnetworks
AT quhuilin searchforlorentzboostedhiggsbosonsdecayingtocharmquarksinthecmsexperimentusingdeepneuralnetworks