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Learning to discover: machine learning in high-energy physics

<!--HTML-->In this talk we will survey some of the latest developments in machine learning research through the optics of potential applications in high-energy physics. We will then describe three ongoing projects in detail. The main subject of the talk is the data challenge we are organizing...

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Autor principal: Kégl, Balázs
Lenguaje:eng
Publicado: 2014
Materias:
Acceso en línea:http://cds.cern.ch/record/1702668
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author Kégl, Balázs
author_facet Kégl, Balázs
author_sort Kégl, Balázs
collection CERN
description <!--HTML-->In this talk we will survey some of the latest developments in machine learning research through the optics of potential applications in high-energy physics. We will then describe three ongoing projects in detail. The main subject of the talk is the data challenge we are organizing with ATLAS on optimizing the discovery significance for the Higgs to tau-tau channel. Second, we describe our collaboration with the LHCb experiment on designing and optimizing fast multi-variate techniques that can be implemented as online classifiers in triggers. Finally, we will sketch a relatively young project with the ILC (Calice) group in which we are attempting to apply deep learning techniques for inference on imaging calorimeter data.
id cern-1702668
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2014
record_format invenio
spelling cern-17026682022-11-02T22:31:30Zhttp://cds.cern.ch/record/1702668engKégl, BalázsLearning to discover: machine learning in high-energy physicsLearning to discover: machine learning in high-energy physicsEP Seminar<!--HTML-->In this talk we will survey some of the latest developments in machine learning research through the optics of potential applications in high-energy physics. We will then describe three ongoing projects in detail. The main subject of the talk is the data challenge we are organizing with ATLAS on optimizing the discovery significance for the Higgs to tau-tau channel. Second, we describe our collaboration with the LHCb experiment on designing and optimizing fast multi-variate techniques that can be implemented as online classifiers in triggers. Finally, we will sketch a relatively young project with the ILC (Calice) group in which we are attempting to apply deep learning techniques for inference on imaging calorimeter data. oai:cds.cern.ch:17026682014
spellingShingle EP Seminar
Kégl, Balázs
Learning to discover: machine learning in high-energy physics
title Learning to discover: machine learning in high-energy physics
title_full Learning to discover: machine learning in high-energy physics
title_fullStr Learning to discover: machine learning in high-energy physics
title_full_unstemmed Learning to discover: machine learning in high-energy physics
title_short Learning to discover: machine learning in high-energy physics
title_sort learning to discover: machine learning in high-energy physics
topic EP Seminar
url http://cds.cern.ch/record/1702668
work_keys_str_mv AT keglbalazs learningtodiscovermachinelearninginhighenergyphysics