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Machine learning techniques for cross-section measurements for the vector-boson-fusion production of the Higgs boson in the $H\rightarrow WW^\ast\rightarrow e\nu\mu\nu$ decay channel with the ATLAS detector.

This talk reports on the measurements of the fiducial and differential production cross section of Higgs bosons with an electron, a muon, and two energetic neutrinos from the decay of W bosons in the final state. The understanding of the fundamental properties of the Higgs boson is one of the main g...

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Autor principal: Addepalli, Sagar
Lenguaje:eng
Publicado: 2023
Materias:
Acceso en línea:http://cds.cern.ch/record/2855372
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author Addepalli, Sagar
author_facet Addepalli, Sagar
author_sort Addepalli, Sagar
collection CERN
description This talk reports on the measurements of the fiducial and differential production cross section of Higgs bosons with an electron, a muon, and two energetic neutrinos from the decay of W bosons in the final state. The understanding of the fundamental properties of the Higgs boson is one of the main goals of the physics programme of the Large Hadron Collider. The analysis of 139 fb$^{-1}$ of proton–proton collision data at a centre-of-mass energy of $\sqrt(s)$ = 13 TeV recorded by the ATLAS experiment unlocks the study of the Higgs boson’s properties with unprecedented precision. While the first differential and fiducial production cross section measurements had been reported in the di-photon and four-lepton final states, the exploration of secondary production mechanisms in extreme kinematic regions has been heavily anticipated. Cutting-edge machine-learning-based methodologies are exploited for maximising the signal sensitivity while minimising the model-dependency of the results. The results are compared with state-of-the-art theoretical predictions. Furthermore, the measurements are used to constrain the presence of new phenomena in the framework of Effective Field Theories.
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institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2023
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spelling cern-28553722023-04-03T19:01:41Zhttp://cds.cern.ch/record/2855372engAddepalli, SagarMachine learning techniques for cross-section measurements for the vector-boson-fusion production of the Higgs boson in the $H\rightarrow WW^\ast\rightarrow e\nu\mu\nu$ decay channel with the ATLAS detector.Particle Physics - ExperimentThis talk reports on the measurements of the fiducial and differential production cross section of Higgs bosons with an electron, a muon, and two energetic neutrinos from the decay of W bosons in the final state. The understanding of the fundamental properties of the Higgs boson is one of the main goals of the physics programme of the Large Hadron Collider. The analysis of 139 fb$^{-1}$ of proton–proton collision data at a centre-of-mass energy of $\sqrt(s)$ = 13 TeV recorded by the ATLAS experiment unlocks the study of the Higgs boson’s properties with unprecedented precision. While the first differential and fiducial production cross section measurements had been reported in the di-photon and four-lepton final states, the exploration of secondary production mechanisms in extreme kinematic regions has been heavily anticipated. Cutting-edge machine-learning-based methodologies are exploited for maximising the signal sensitivity while minimising the model-dependency of the results. The results are compared with state-of-the-art theoretical predictions. Furthermore, the measurements are used to constrain the presence of new phenomena in the framework of Effective Field Theories.ATL-PHYS-SLIDE-2023-052oai:cds.cern.ch:28553722023-04-03
spellingShingle Particle Physics - Experiment
Addepalli, Sagar
Machine learning techniques for cross-section measurements for the vector-boson-fusion production of the Higgs boson in the $H\rightarrow WW^\ast\rightarrow e\nu\mu\nu$ decay channel with the ATLAS detector.
title Machine learning techniques for cross-section measurements for the vector-boson-fusion production of the Higgs boson in the $H\rightarrow WW^\ast\rightarrow e\nu\mu\nu$ decay channel with the ATLAS detector.
title_full Machine learning techniques for cross-section measurements for the vector-boson-fusion production of the Higgs boson in the $H\rightarrow WW^\ast\rightarrow e\nu\mu\nu$ decay channel with the ATLAS detector.
title_fullStr Machine learning techniques for cross-section measurements for the vector-boson-fusion production of the Higgs boson in the $H\rightarrow WW^\ast\rightarrow e\nu\mu\nu$ decay channel with the ATLAS detector.
title_full_unstemmed Machine learning techniques for cross-section measurements for the vector-boson-fusion production of the Higgs boson in the $H\rightarrow WW^\ast\rightarrow e\nu\mu\nu$ decay channel with the ATLAS detector.
title_short Machine learning techniques for cross-section measurements for the vector-boson-fusion production of the Higgs boson in the $H\rightarrow WW^\ast\rightarrow e\nu\mu\nu$ decay channel with the ATLAS detector.
title_sort machine learning techniques for cross-section measurements for the vector-boson-fusion production of the higgs boson in the $h\rightarrow ww^\ast\rightarrow e\nu\mu\nu$ decay channel with the atlas detector.
topic Particle Physics - Experiment
url http://cds.cern.ch/record/2855372
work_keys_str_mv AT addepallisagar machinelearningtechniquesforcrosssectionmeasurementsforthevectorbosonfusionproductionofthehiggsbosoninthehrightarrowwwastrightarrowenumunudecaychannelwiththeatlasdetector