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TMVA - Toolkit for Multivariate Data Analysis with ROOT: Users guide

Multivariate machine learning techniques for the classification of data from high-energy physics (HEP) experiments have become standard tools in most HEP analyses. The multivariate classifiers themselves have significantly evolved in recent years, also driven by developments in other areas inside an...

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Detalles Bibliográficos
Autores principales: Hocker, Andreas, Speckmayer, Peter, Stelzer, Jorg, Therhaag, Jan, von Toerne, Eckhard, Voss, Helge, Backes, Moritz, Carli, Tancredi, Cohen, Or, Christov, Asen, Dannheim, Domikik, Danielowski, Krzysztof, Henrot-Versille, S., Jachowski, M., Kraszewski, Kamil, Krasznahorkay, A., Jr., Kruk, Maciej, Mahalalel, Y., Ospanov, Rustem, Prudent, X., Robert, Arnaud, Schouten, Doug, Tegenfeldt, F., Voight, Alexander, Voss, K., Wolter, Marcin, Zemla, Andrzej
Lenguaje:eng
Publicado: 2007
Materias:
Acceso en línea:http://cds.cern.ch/record/1019880
Descripción
Sumario:Multivariate machine learning techniques for the classification of data from high-energy physics (HEP) experiments have become standard tools in most HEP analyses. The multivariate classifiers themselves have significantly evolved in recent years, also driven by developments in other areas inside and outside science. TMVA is a toolkit integrated in ROOT which hosts a large variety of multivariate classification algorithms. They range from rectangular cut optimisation (using a genetic algorithm) and likelihood estimators, over linear and non-linear discriminants (neural networks), to sophisticated recent developments like boosted decision trees and rule ensemble fitting. TMVA organises the simultaneous training, testing, and performance evaluation of all these classifiers with a user-friendly interface, and expedites the application of the trained classifiers to the analysis of data sets with unknown sample composition.