28#ifndef ROOT_TMVA_MCFitter 
   29#define ROOT_TMVA_MCFitter 
#define ClassDef(name, id)
 
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Base class for TMVA fitters.
 
Double_t Run()
estimator function interface for fitting
 
Interface for a fitter 'target'.
 
Fitter using Monte Carlo sampling of parameters.
 
UInt_t fSeed
Seed for the random generator (0 takes random seeds)
 
void SetParameters(Int_t cycles)
set MC fitter configuration parameters
 
Double_t fSigma
new samples are generated randomly with a gaussian probability with fSigma around the current best va...
 
MCFitter(IFitterTarget &target, const TString &name, const std::vector< TMVA::Interval * > &ranges, const TString &theOption)
constructor
 
void DeclareOptions()
Declare MCFitter options.
 
Int_t fSamples
number of MC samples
 
create variable transformations