//////////////////////////////////////////////////////////////////////////
//
// 'MULTIDIMENSIONAL MODELS' RooFit tutorial macro #314
// 
// Working with parameterized ranges in a fit. This an example of a
// fit with an acceptance that changes per-event 
//
//  pdf = exp(-t/tau) with t[tmin,5]
//
//  where t and tmin are both observables in the dataset
//
// 07/2008 - Wouter Verkerke 
// 
/////////////////////////////////////////////////////////////////////////

#ifndef __CINT__
#include "RooGlobalFunc.h"
#endif
#include "RooRealVar.h"
#include "RooDataSet.h"
#include "RooGaussian.h"
#include "RooExponential.h"
#include "TCanvas.h"
#include "RooPlot.h"
#include "RooFitResult.h"

using namespace RooFit ;


void rf314_paramfitrange()
{

  // D e f i n e   o b s e r v a b l e s   a n d   d e c a y   p d f 
  // ---------------------------------------------------------------

  // Declare observables
  RooRealVar t("t","t",0,5) ;
  RooRealVar tmin("tmin","tmin",0,0,5) ;

  // Make parameterized range in t : [tmin,5]
  t.setRange(tmin,RooConst(t.getMax())) ;

  // Make pdf
  RooRealVar tau("tau","tau",-1.54,-10,-0.1) ;
  RooExponential model("model","model",t,tau) ;



  // C r e a t e   i n p u t   d a t a 
  // ------------------------------------

  // Generate complete dataset without acceptance cuts (for reference)
  RooDataSet* dall = model.generate(t,10000) ;

  // Generate a (fake) prototype dataset for acceptance limit values
  RooDataSet* tmp = RooGaussian("gmin","gmin",tmin,RooConst(0),RooConst(0.5)).generate(tmin,5000) ;

  // Generate dataset with t values that observe (t>tmin)
  RooDataSet* dacc = model.generate(t,ProtoData(*tmp)) ;



  // F i t   p d f   t o   d a t a   i n   a c c e p t a n c e   r e g i o n
  // -----------------------------------------------------------------------

  RooFitResult* r = model.fitTo(*dacc,Save()) ;


 
  // P l o t   f i t t e d   p d f   o n   f u l l   a n d   a c c e p t e d   d a t a 
  // ---------------------------------------------------------------------------------

  // Make plot frame, add datasets and overlay model
  RooPlot* frame = t.frame(Title("Fit to data with per-event acceptance")) ;
  dall->plotOn(frame,MarkerColor(kRed),LineColor(kRed)) ;
  model.plotOn(frame) ;
  dacc->plotOn(frame) ;

  // Print fit results to demonstrate absence of bias
  r->Print("v") ;


  new TCanvas("rf314_paramranges","rf314_paramranges",600,600) ;
  frame->Draw() ;

  return ;
}

Last change: Wed Dec 17 10:56:33 2008
Last generated: 2008-12-17 10:56

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