Master Python/R tmva Methods#86
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-> Support the methods PyAdaBoost, PyRandomForest and Gradient Tree Boosting from Scikit-learn for two class classification -> Support Model persistence using Pickle -> Tested using python 2.x
-> Support the methods C50(Boosted Trees/Model Based package), RSVM(Support VectorMachine), RSNNS/RMLP(Neurnal Network/MultiLayer Perceptron) and XGB(eXtreme Gradient Boost) for two class classification -> Support model persistence using R serialization
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Hi dears ROOTers,
This is a pull request for new TMVA methods based on R and Python(Scikitlearn)
You can find more information in http://oproject.org/RMVA and http://oproject.org/PyMVA
Best Regards
Omar.