Exemplo n.º 1
0
 def cross_validate(self, nfolds, outputfile):
     '''Run cross validation with the given number of folds.'''
     crossval = TMVA.CrossValidation(self.dataloader.dataloader)
     crossval.SetNumFolds(nfolds)
     methods = self.book_methods(crossval, self.dataloader.dataloader)
     crossval.Evaluate()
     results = crossval.GetResults()
     return crossval, results
Exemplo n.º 2
0
signal = f1.Get('NOMINAL')
background = f2.Get('NOMINAL')

# In[5]:

loader.AddSignalTree(signal, 1.0)
loader.AddBackgroundTree(background, 1.0)
loader.PrepareTrainingAndTestTree(
    TCut(""),
    "nTrain_Signal=86203 :nTrain_Background=412573 :SplitMode=Random:NormMode=NumEvents:!V"
)

# In[6]:

cv = TMVA.CrossValidation(
    "TMVACrossValidation", loader, outputFile,
    "!V:!Silent:ModelPersistence:AnalysisType=Classification:NumFolds=3:SplitExpr="
)

# In[7]:

cv.BookMethod(
    TMVA.Types.kMLP, "MLP",
    "H:!V:NeuronType=tanh:VarTransform=N:NCycles=600:HiddenLayers=N+1:TestRate=5:!UseRegulator"
)

# In[8]:

cv.Evaluate()

# In[9]: