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Higgs Machine Learning Challenge 2014

High Energy Physics (HEP) has been using Machine Learning (ML) techniques such as boosted decision trees (paper) and neural nets since the 90s. These techniques are now routinely used for difficult tasks such as the Higgs boson search. Nevertheless, formal connections between the two research fields...

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Detalles Bibliográficos
Autores principales: Olivier, A-P, Rousseau, D ; LAL / Orsay, Bourdarios, C ; LAL / Orsay, Goldfarb, S ; University of Michigan
Lenguaje:eng
Publicado: 2014
Acceso en línea:http://cds.cern.ch/record/1702404
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author Olivier, A-P
Rousseau, D ; LAL / Orsay
Bourdarios, C ; LAL / Orsay
Goldfarb, S ; University of Michigan
author_facet Olivier, A-P
Rousseau, D ; LAL / Orsay
Bourdarios, C ; LAL / Orsay
Goldfarb, S ; University of Michigan
author_sort Olivier, A-P
collection CERN
description High Energy Physics (HEP) has been using Machine Learning (ML) techniques such as boosted decision trees (paper) and neural nets since the 90s. These techniques are now routinely used for difficult tasks such as the Higgs boson search. Nevertheless, formal connections between the two research fields are rather scarce, with some exceptions such as the AppStat group at LAL, founded in 2006. In collaboration with INRIA, AppStat promotes interdisciplinary research on machine learning, computational statistics, and high-energy particle and astroparticle physics. We are now exploring new ways to improve the cross-fertilization of the two fields by setting up a data challenge, following the footsteps of, among others, the astrophysics community (dark matter and galaxy zoo challenges) and neurobiology (connectomics and decoding the human brain). The organization committee consists of ATLAS physicists and machine learning researchers. The Challenge will run from Monday 12th to September 2014.
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institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2014
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spelling cern-17024042019-09-30T06:29:59Zhttp://cds.cern.ch/record/1702404engOlivier, A-PRousseau, D ; LAL / OrsayBourdarios, C ; LAL / OrsayGoldfarb, S ; University of MichiganHiggs Machine Learning Challenge 2014High Energy Physics (HEP) has been using Machine Learning (ML) techniques such as boosted decision trees (paper) and neural nets since the 90s. These techniques are now routinely used for difficult tasks such as the Higgs boson search. Nevertheless, formal connections between the two research fields are rather scarce, with some exceptions such as the AppStat group at LAL, founded in 2006. In collaboration with INRIA, AppStat promotes interdisciplinary research on machine learning, computational statistics, and high-energy particle and astroparticle physics. We are now exploring new ways to improve the cross-fertilization of the two fields by setting up a data challenge, following the footsteps of, among others, the astrophysics community (dark matter and galaxy zoo challenges) and neurobiology (connectomics and decoding the human brain). The organization committee consists of ATLAS physicists and machine learning researchers. The Challenge will run from Monday 12th to September 2014. Poster-2014-426oai:cds.cern.ch:17024042014-05-01
spellingShingle Olivier, A-P
Rousseau, D ; LAL / Orsay
Bourdarios, C ; LAL / Orsay
Goldfarb, S ; University of Michigan
Higgs Machine Learning Challenge 2014
title Higgs Machine Learning Challenge 2014
title_full Higgs Machine Learning Challenge 2014
title_fullStr Higgs Machine Learning Challenge 2014
title_full_unstemmed Higgs Machine Learning Challenge 2014
title_short Higgs Machine Learning Challenge 2014
title_sort higgs machine learning challenge 2014
url http://cds.cern.ch/record/1702404
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AT rousseaudlalorsay higgsmachinelearningchallenge2014
AT bourdariosclalorsay higgsmachinelearningchallenge2014
AT goldfarbsuniversityofmichigan higgsmachinelearningchallenge2014