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New machine learning developments in ROOT/TMVA

The Toolkit for Multivariate Analysis, TMVA, the machine learning package integrated into the ROOT data analysis framework, has recently seen improvements to its deep learning module, parallelisation of multivariate methods and cross validation. Performance benchmarks on datasets from high-energy ph...

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Autores principales: Albertsson, Kim, Gleyzer, Sergei, Huwiler, Marc, Ilievski, Vladimir, Moneta, Lorenzo, Shekar, Saurav, Estrade, Victor, Vashistha, Akshay, Wunsch, Stefan, Zapata Mesa, Omar Andres
Lenguaje:eng
Publicado: 2019
Materias:
Acceso en línea:https://dx.doi.org/10.1051/epjconf/201921406014
http://cds.cern.ch/record/2699584
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author Albertsson, Kim
Gleyzer, Sergei
Huwiler, Marc
Ilievski, Vladimir
Moneta, Lorenzo
Shekar, Saurav
Estrade, Victor
Vashistha, Akshay
Wunsch, Stefan
Zapata Mesa, Omar Andres
author_facet Albertsson, Kim
Gleyzer, Sergei
Huwiler, Marc
Ilievski, Vladimir
Moneta, Lorenzo
Shekar, Saurav
Estrade, Victor
Vashistha, Akshay
Wunsch, Stefan
Zapata Mesa, Omar Andres
author_sort Albertsson, Kim
collection CERN
description The Toolkit for Multivariate Analysis, TMVA, the machine learning package integrated into the ROOT data analysis framework, has recently seen improvements to its deep learning module, parallelisation of multivariate methods and cross validation. Performance benchmarks on datasets from high-energy physics are presented with a particular focus on the new deep learning module which contains robust fully-connected, convolutional and recurrent deep neural networks implemented on CPU and GPU architectures. Both dense and convolutional layers are shown to be competitive on small-scale networks suitable for high-level physics analyses in both training and in single-event evaluation. Parallelisation efforts show an asymptotical 3-fold reduction in boosted decision tree training time while the cross validation implementation shows significant speed up with parallel fold evaluation.
id oai-inspirehep.net-1761279
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2019
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spelling oai-inspirehep.net-17612792022-08-10T12:21:26Zdoi:10.1051/epjconf/201921406014http://cds.cern.ch/record/2699584engAlbertsson, KimGleyzer, SergeiHuwiler, MarcIlievski, VladimirMoneta, LorenzoShekar, SauravEstrade, VictorVashistha, AkshayWunsch, StefanZapata Mesa, Omar AndresNew machine learning developments in ROOT/TMVAComputing and ComputersThe Toolkit for Multivariate Analysis, TMVA, the machine learning package integrated into the ROOT data analysis framework, has recently seen improvements to its deep learning module, parallelisation of multivariate methods and cross validation. Performance benchmarks on datasets from high-energy physics are presented with a particular focus on the new deep learning module which contains robust fully-connected, convolutional and recurrent deep neural networks implemented on CPU and GPU architectures. Both dense and convolutional layers are shown to be competitive on small-scale networks suitable for high-level physics analyses in both training and in single-event evaluation. Parallelisation efforts show an asymptotical 3-fold reduction in boosted decision tree training time while the cross validation implementation shows significant speed up with parallel fold evaluation.oai:inspirehep.net:17612792019
spellingShingle Computing and Computers
Albertsson, Kim
Gleyzer, Sergei
Huwiler, Marc
Ilievski, Vladimir
Moneta, Lorenzo
Shekar, Saurav
Estrade, Victor
Vashistha, Akshay
Wunsch, Stefan
Zapata Mesa, Omar Andres
New machine learning developments in ROOT/TMVA
title New machine learning developments in ROOT/TMVA
title_full New machine learning developments in ROOT/TMVA
title_fullStr New machine learning developments in ROOT/TMVA
title_full_unstemmed New machine learning developments in ROOT/TMVA
title_short New machine learning developments in ROOT/TMVA
title_sort new machine learning developments in root/tmva
topic Computing and Computers
url https://dx.doi.org/10.1051/epjconf/201921406014
http://cds.cern.ch/record/2699584
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