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csander |
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#include "TROOT.h"
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#include "TSystem.h"
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#include "TF1.h"
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#include "TH1.h"
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#include "TH2.h"
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#include "TProfile.h"
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#include "TCanvas.h"
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#include "TRandom.h"
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#include "TStyle.h"
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#include "TObjArray.h"
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#include "TGraph.h"
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#include "TMath.h"
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#include "TSpline.h"
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#include <iostream>
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#include <vector>
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#include <string>
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#include "external.h"
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using namespace::std;
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////////////////////////////////////////////////////////////
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class TDataPoint{
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private:
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double weight;
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double weight_orig;
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double truth;
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double meas;
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double error;
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public:
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double GetTruth(){return truth;};
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double GetMeas(){return meas;};
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double GetError(){return error;};
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double GetWeight(){return weight;};
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double GetWeight_orig(){return weight_orig;};
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void SetWeight(double w){weight=w;};
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void SetWeight_orig(double w){weight_orig=w;};
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//constructor
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TDataPoint(double t, double m, double e, double w){
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weight = w;
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weight_orig = w;
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truth = t;
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meas = m;
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error = e;
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};
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//destructor
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~TDataPoint(){};
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};
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////////////////////////////////////////////////////////////
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////////////////////////////////////////////////////////////
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class TData{
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private:
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int Nevts;
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double minX, maxX;
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double minY, maxY;
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double dY;
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vector<TDataPoint> data;
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vector<double> sp;
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//----------------------------------------------------------
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double chi2(vector<double>* PAR){
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TGraph cgr(sp.size(), &sp.front(), &PAR->front());
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TSpline3 *cspl = new TSpline3("cspl",&cgr);
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double x2 = 0.;
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for (vector<TDataPoint>::iterator i = data.begin(); i < data.end(); ++i){
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double mess=i->GetMeas();
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double truth=i->GetTruth();
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/*
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double c = calib(mess,cspl);
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double dc = dcalib(mess,cspl);
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double d = c * mess - truth;
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double e = dc * i->GetError();
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*/
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/*
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double c = calib(truth,cspl);
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double d = c * mess - truth;
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double e = c * i->GetError();
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*/
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double cmess = calib(mess,cspl);
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double cold = 1;
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double cinv = calibinv(truth,cmess,cold,cspl);
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double d = mess - truth/cinv;
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double e = i->GetError();
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x2 += i->GetWeight()*pow(d/e, 2);
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}
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return x2;
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}
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//----------------------------------------------------------
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//----------------------------------------------------------
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double calib(double &x, TSpline3* calibSpline){
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return calibSpline->Eval(x);
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}
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//----------------------------------------------------------
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//----------------------------------------------------------
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//might be usefull if calibration constant is defined as function of truth
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double calibinv(double& x, double &cmess, double &cold, TSpline3* calibSpline){
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double cinv = calibSpline->Eval(x/cmess);
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//cout<<"cold: "<<cold<<" cnew: "<<cinv<<endl;
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double delta = fabs((cinv-cold)/cold);
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if (delta<1.e-4){
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return cinv;
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} else {
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return calibSpline->Eval(x/calibinv(x,cmess,cinv,calibSpline));
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}
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}
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//----------------------------------------------------------
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//----------------------------------------------------------
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double dcalib(double &mess, TSpline3* calibSpline){
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double eps=1.;
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double dc=((mess+eps)*calibSpline->Eval(mess+eps)-
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(mess-eps)*calibSpline->Eval(mess-eps))/2./eps;
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return dc;
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}
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//----------------------------------------------------------
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//----------------------------------------------------------
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//error parametrization, width of measured distribution
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double error(double x){
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double error = -1;
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if ( x >= 0 ) error = 1.25*sqrt(x);
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return error;
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}
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//----------------------------------------------------------
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//----------------------------------------------------------
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//reweight events to have flat truth distribution
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void FlattenSpectra(){
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TH1F* hist1 = new TH1F("truth non weighted","True distribution of measurement", 50, 0, 1000);
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TH1F* hist2 = new TH1F("truth weighted","Weighted true distribution of measurement", 50, 0, 1000);
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TH1F* weights = new TH1F("weights","Weights to flatten distribution", 50, 0, 1000);
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for (vector<TDataPoint>::iterator i=data.begin(); i<data.end(); ++i){
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hist1->Fill(i->GetTruth(),i->GetWeight());
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}
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double Integral1=hist1->Integral();
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for (int i=0; i<hist1->GetNbinsX(); ++i){
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weights->SetBinContent(i,1./hist1->GetBinContent(i));
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}
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for (vector<TDataPoint>::iterator i=data.begin(); i<data.end(); ++i){
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double w=weights->GetBinContent(hist1->FindBin(i->GetTruth()));
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hist2->Fill(i->GetTruth(),w);
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}
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double Integral2=hist2->Integral();
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for (vector<TDataPoint>::iterator i=data.begin(); i<data.end(); ++i){
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double w=weights->GetBinContent(hist1->FindBin(i->GetTruth()));
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w*=i->GetWeight();
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w*=Integral1/Integral2;
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i->SetWeight(w);
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i->SetWeight_orig(w);
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}
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}
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//----------------------------------------------------------
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//----------------------------------------------------------
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//reweight spectra to correct for energy dependent resolution
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void ResolutionReweight(bool logscale = false, bool outlier=false, int sigmamax=3){
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cout<<"Events at start of ResolutionReweight: "<<data.size()<<endl;
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int Nbins=49;
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int minEntries=200;
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vector<TDataPoint> dataCut;
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vector<double> mean;
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vector<double> sigma;
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double d;
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if (logscale){
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d=(log(maxY)-log(minY))/Nbins;
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} else {
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d=(maxY-minY)/Nbins;
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}
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//book histos
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TH1F* hist[Nbins];
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TF1* f[Nbins];
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for (int n=0; n<Nbins; ++n){
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char hname[100];
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sprintf(hname,"hr%i",n);
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hist[n] = new TH1F(hname,"Truth for MeasBin", 1000, minX, maxX);
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hist[n]->Sumw2();
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}
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//Fill histos
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for (vector<TDataPoint>::iterator i=data.begin(); i<data.end(); ++i){
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int n;
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if (logscale){
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n=(int)(Nbins*(log(i->GetMeas())-log(minY))/(log(maxY)-log(minY)));
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if (n>=Nbins) n=Nbins-1;
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} else {
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n=(int)(Nbins*(i->GetMeas()-minY)/d);
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if (n>=Nbins) n=Nbins-1;
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};
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hist[n]->Fill(i->GetTruth(),i->GetWeight());
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}
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//Fit histos
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for (int n=0; n<Nbins; ++n){
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cout<<n<<" of "<<Nbins<<endl;
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if (hist[n]->GetEntries()<minEntries){
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mean.push_back(0);
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sigma.push_back(0);
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continue;
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}
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char fname[100];
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sprintf(fname,"fr%i",n);
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f[n] = new TF1(fname,"gausn",minX,maxX);
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//use a guess for starting values
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f[n]->SetParameters(hist[n]->Integral("width"),hist[n]->GetMean(),hist[n]->GetRMS());
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hist[n]->Fit(fname,"ILLRQN");
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double Mean=f[n]->GetParameter(1);
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double Sigma=f[n]->GetParameter(2);
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mean.push_back(Mean);
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sigma.push_back(Sigma);
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}
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for (vector<TDataPoint>::iterator i=data.begin(); i<data.end(); ++i){
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int n;
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if (logscale){
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n=(int)(Nbins*(log(i->GetMeas())-log(minY))/(log(maxY)-log(minY)));
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if (n>=Nbins) n=Nbins-1;
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} else {
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n=(int)(Nbins*(i->GetMeas()-minY)/d);
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if (n>=Nbins) n=Nbins-1;
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};
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double delta = mean.at(n) - i->GetTruth();
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//Use only events with truth value in 3 sigma of mean truth... ???
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if (outlier && fabs(delta/sigma.at(n))>3.) continue;
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double A, B;
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double ERR = error(i->GetTruth()+2*delta);
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if (ERR > 0){
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A = 1./sqrt(2*TMath::Pi())/i->GetError()*exp(-pow(delta,2)/2./pow(i->GetError(),2));
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B = 1./sqrt(2*TMath::Pi())/ERR*exp(-pow(delta,2)/2./pow(ERR,2));
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double newweight = 2*B/(A+B);
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i->SetWeight(i->GetWeight_orig()*newweight);
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}
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dataCut.push_back(*i);
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}
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data.clear();
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data.assign(dataCut.begin(),dataCut.end());
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cout<<"Events at end of ResolutionReweight: "<<data.size()<<endl;
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minY=99999.;
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maxY=0;
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minX=99999.;
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maxX=0;
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for (vector<TDataPoint>::iterator i=data.begin(); i<data.end(); ++i){
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if (i->GetMeas() < minY) minY=i->GetMeas();
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if (i->GetMeas() > maxY) maxY=i->GetMeas();
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if (i->GetTruth() < minX) minX=i->GetTruth();
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if (i->GetTruth() > maxX) maxX=i->GetTruth();
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}
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}
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//----------------------------------------------------------
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//----------------------------------------------------------
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//symmetrize truth distribution for one measurement
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void CorrectCutoff(bool logscale = false){
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cout<<"Events at start of CorrectCutoff: "<<data.size()<<endl;
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int Nbins=49;
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int minEntries=200;
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vector<TDataPoint> dataCut;
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vector<double> mean;
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vector<double> dmean;
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TCanvas *c1 = new TCanvas("c1","Correct for cut off",0,0,1000,1000);
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c1->Divide(7,7);
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double d;
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if (logscale){
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d=(log(maxY)-log(minY))/Nbins;
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} else {
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d=(maxY-minY)/Nbins;
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}
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//book histos
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TH1F* hist[Nbins];
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TF1* f[Nbins];
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for (int n=0; n<Nbins; ++n){
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char hname[100];
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sprintf(hname,"hc%i",n);
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hist[n] = new TH1F(hname,"Truth for MeasBin", 1000, minX, maxX);
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hist[n]->Sumw2();
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}
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//Fill histos
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for (vector<TDataPoint>::iterator i=data.begin(); i<data.end(); ++i){
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int n;
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if (logscale){
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n=(int)(Nbins*(log(i->GetMeas())-log(minY))/(log(maxY)-log(minY)));
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if (n>=Nbins) n=Nbins-1;
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} else {
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n=(int)(Nbins*(i->GetMeas()-minY)/d);
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if (n>=Nbins) n=Nbins-1;
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};
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308 |
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hist[n]->Fill(i->GetTruth(),i->GetWeight());
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}
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310 |
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311 |
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//Fit histos
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312 |
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for (int n=0; n<Nbins; ++n){
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cout<<n<<" of "<<Nbins<<endl;
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314 |
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if (hist[n]->GetEntries()<minEntries){
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mean.push_back(0);
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316 |
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dmean.push_back(0);
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317 |
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continue;
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318 |
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}
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319 |
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char fname[100];
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320 |
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sprintf(fname,"fc%i",n);
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321 |
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f[n] = new TF1(fname,"gausn",minX,maxX);
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322 |
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//use a guess for starting values
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f[n]->SetParameters(hist[n]->Integral("width"),hist[n]->GetMean(),hist[n]->GetRMS());
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324 |
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c1->cd(n+1);
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325 |
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hist[n]->SetLineWidth(0);
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326 |
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hist[n]->Draw();
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327 |
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f[n]->SetLineWidth(0);
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328 |
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f[n]->SetLineColor(2);
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329 |
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hist[n]->Fit(fname,"ILLRQ");
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330 |
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double Mean=f[n]->GetParameter(1);
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331 |
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mean.push_back(Mean);
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332 |
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double dMean=0;
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333 |
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if (Mean<minX || Mean>maxX){
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334 |
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dMean=0;
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335 |
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} else {
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336 |
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double dMeanMin=fabs(Mean-minX);
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337 |
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double dMeanMax=fabs(Mean-maxX);
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338 |
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dMeanMin<dMeanMax?dMean=dMeanMin:dMean=dMeanMax;
|
339 |
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}
|
340 |
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dmean.push_back(dMean);
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341 |
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}
|
342 |
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c1->SaveAs("cut_LVMini.eps");
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343 |
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|
344 |
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//symmetrize distributions
|
345 |
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for (vector<TDataPoint>::iterator i=data.begin(); i<data.end(); ++i){
|
346 |
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int n;
|
347 |
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if (logscale){
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348 |
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|
n=(int)(Nbins*(log(i->GetMeas())-log(minY))/(log(maxY)-log(minY)));
|
349 |
|
|
if (n>=Nbins) n=Nbins-1;
|
350 |
|
|
} else {
|
351 |
|
|
n=(int)(Nbins*(i->GetMeas()-minY)/d);
|
352 |
|
|
if (n>=Nbins) n=Nbins-1;
|
353 |
|
|
};
|
354 |
|
|
double delta = fabs(mean.at(n) - i->GetTruth());
|
355 |
|
|
if (delta>dmean.at(n)) continue;
|
356 |
|
|
dataCut.push_back(*i);
|
357 |
|
|
}
|
358 |
|
|
|
359 |
|
|
data.clear();
|
360 |
|
|
data.assign(dataCut.begin(),dataCut.end());
|
361 |
|
|
cout<<"Events at end of CorrectCutoff: "<<data.size()<<endl;
|
362 |
|
|
|
363 |
|
|
minY=99999.;
|
364 |
|
|
maxY=0;
|
365 |
|
|
minX=99999.;
|
366 |
|
|
maxX=0;
|
367 |
|
|
for (vector<TDataPoint>::iterator i=data.begin(); i<data.end(); ++i){
|
368 |
|
|
if (i->GetMeas() < minY) minY=i->GetMeas();
|
369 |
|
|
if (i->GetMeas() > maxY) maxY=i->GetMeas();
|
370 |
|
|
if (i->GetTruth() < minX) minX=i->GetTruth();
|
371 |
|
|
if (i->GetTruth() > maxX) maxX=i->GetTruth();
|
372 |
|
|
}
|
373 |
|
|
|
374 |
|
|
}
|
375 |
|
|
//----------------------------------------------------------
|
376 |
|
|
|
377 |
|
|
public:
|
378 |
|
|
|
379 |
|
|
vector<TDataPoint>* GetDataRef(){return &data;};
|
380 |
|
|
|
381 |
|
|
//----------------------------------------------------------
|
382 |
|
|
void DrawTruth(){
|
383 |
|
|
TH1F* hist = new TH1F("truth","True distribution of measurement", 100, 0, maxX);
|
384 |
|
|
hist->Sumw2();
|
385 |
|
|
for (vector<TDataPoint>::iterator i=data.begin(); i<data.end(); ++i){
|
386 |
|
|
hist->Fill(i->GetTruth(),i->GetWeight());
|
387 |
|
|
}
|
388 |
|
|
TCanvas *c1 = new TCanvas("c1","Truth",0,0,600,600);
|
389 |
|
|
c1->Divide(1,1);
|
390 |
|
|
c1->cd(1);
|
391 |
|
|
c1->cd(1)->SetLogy();
|
392 |
|
|
hist->SetXTitle("Truth");
|
393 |
|
|
hist->Draw();
|
394 |
|
|
c1->SaveAs("truth_LVMini.eps");
|
395 |
|
|
};
|
396 |
|
|
//----------------------------------------------------------
|
397 |
|
|
|
398 |
|
|
//----------------------------------------------------------
|
399 |
|
|
void DrawMeas(){
|
400 |
|
|
TH1F* hist = new TH1F("meas","Measured distribution of measurement", 100, 0, maxY);
|
401 |
|
|
hist->Sumw2();
|
402 |
|
|
for (vector<TDataPoint>::iterator i=data.begin(); i<data.end(); ++i){
|
403 |
|
|
hist->Fill(i->GetMeas(),i->GetWeight());
|
404 |
|
|
}
|
405 |
|
|
TCanvas *c1 = new TCanvas("c2","Measurement",0,0,600,600);
|
406 |
|
|
c1->Divide(1,1);
|
407 |
|
|
c1->cd(1);
|
408 |
|
|
c1->cd(1)->SetLogy();
|
409 |
|
|
hist->SetXTitle("Measurement");
|
410 |
|
|
hist->Draw();
|
411 |
|
|
c1->SaveAs("meas_LVMini.eps");
|
412 |
|
|
};
|
413 |
|
|
//----------------------------------------------------------
|
414 |
|
|
|
415 |
|
|
//----------------------------------------------------------
|
416 |
|
|
void DrawCalibConst(vector<double> p){
|
417 |
|
|
TGraph cgr(sp.size(), &sp.front(), &p.front());
|
418 |
|
|
TSpline3 *cspl = new TSpline3("cspl",&cgr);
|
419 |
|
|
vector<double> vx, vy;
|
420 |
|
|
int Nbins = 100;
|
421 |
|
|
for (int i=0; i<=Nbins; ++i){
|
422 |
|
|
double x=minY+i*(maxY-minY)/Nbins;
|
423 |
|
|
vx.push_back(double(x));
|
424 |
|
|
double c=calib(x,cspl);
|
425 |
|
|
vy.push_back(c);
|
426 |
|
|
}
|
427 |
|
|
TGraph* CalibConst = new TGraph(vx.size(), &vx.front(), &vy.front());
|
428 |
|
|
TCanvas *c1 = new TCanvas("c3","Calibration Constant vs. Measurement",0,0,600,600);
|
429 |
|
|
c1->Divide(1,1);
|
430 |
|
|
c1->cd(1);
|
431 |
|
|
CalibConst->SetLineColor(2);
|
432 |
|
|
CalibConst->SetLineWidth(4);
|
433 |
|
|
CalibConst->SetTitle("Calibration Constant");
|
434 |
|
|
CalibConst->GetXaxis()->SetTitle("Truth");
|
435 |
|
|
CalibConst->GetYaxis()->SetTitle("C");
|
436 |
|
|
CalibConst->SetMinimum(0.9);
|
437 |
|
|
CalibConst->SetMaximum(1.3);
|
438 |
|
|
CalibConst->Draw("ACP");
|
439 |
|
|
//CalibConst->Draw("L");
|
440 |
|
|
c1->SaveAs("calibconst_LVMini.eps");
|
441 |
|
|
};
|
442 |
|
|
//----------------------------------------------------------
|
443 |
|
|
|
444 |
|
|
//----------------------------------------------------------
|
445 |
|
|
void DrawRatio(vector<double> p){
|
446 |
|
|
TGraph cgr(sp.size(), &sp.front(), &p.front());
|
447 |
|
|
TSpline3 *cspl = new TSpline3("cspl",&cgr);
|
448 |
|
|
TH2F* hist1 = new TH2F("r1","Measurement/Truth vs. Truth", 100, 0, 1000, 100, 0.0, 2.0);
|
449 |
|
|
TH2F* hist2 = new TH2F("r2","Measurement/Truth vs. Measurement", 100, 0, 1000, 100, 0.0, 2.0);
|
450 |
|
|
TH2F* hist3 = new TH2F("r3","Measurement/Truth vs. CalibMeasurement", 100, 0, 1000, 100, 0.0, 2.0);
|
451 |
|
|
TH2F* hist4 = new TH2F("r4","CalibMeasurement/Truth vs. Truth", 100, 0, 1000, 100, 0.0, 2.0);
|
452 |
|
|
TH2F* hist5 = new TH2F("r5","CalibMeasurement/Truth vs. Measurement", 100, 0, 1000, 100, 0.0, 2.0);
|
453 |
|
|
TH2F* hist6 = new TH2F("r6","CalibMeasurement/Truth vs. CalibMeasurement", 100, 0, 1000, 100, 0.0, 2.0);
|
454 |
|
|
hist1->Sumw2();
|
455 |
|
|
hist2->Sumw2();
|
456 |
|
|
hist3->Sumw2();
|
457 |
|
|
hist4->Sumw2();
|
458 |
|
|
hist5->Sumw2();
|
459 |
|
|
hist6->Sumw2();
|
460 |
|
|
hist1->SetTitleOffset(1.2,"Y");
|
461 |
|
|
hist2->SetTitleOffset(1.2,"Y");
|
462 |
|
|
hist3->SetTitleOffset(1.2,"Y");
|
463 |
|
|
hist4->SetTitleOffset(1.2,"Y");
|
464 |
|
|
hist5->SetTitleOffset(1.2,"Y");
|
465 |
|
|
hist6->SetTitleOffset(1.2,"Y");
|
466 |
|
|
hist1->SetTitleOffset(1.2,"Y");
|
467 |
|
|
hist1->SetYTitle("k=Meas/Truth");
|
468 |
|
|
hist2->SetYTitle("k=Meas/Truth");
|
469 |
|
|
hist3->SetYTitle("k=Meas/Truth");
|
470 |
|
|
hist4->SetYTitle("k=calibMeas/Truth");
|
471 |
|
|
hist5->SetYTitle("k=calibMeas/Truth");
|
472 |
|
|
hist6->SetYTitle("k=calibMeas/Truth");
|
473 |
|
|
hist1->SetXTitle("Truth");
|
474 |
|
|
hist4->SetXTitle("Truth");
|
475 |
|
|
hist2->SetXTitle("Measurement");
|
476 |
|
|
hist5->SetXTitle("Measurement");
|
477 |
|
|
hist3->SetXTitle("calib. Measurement");
|
478 |
|
|
hist6->SetXTitle("calib. Measurement");
|
479 |
|
|
for (vector<TDataPoint>::iterator i=data.begin(); i<data.end(); ++i){
|
480 |
|
|
double mess=i->GetMeas();
|
481 |
|
|
double truth=i->GetTruth();
|
482 |
|
|
double c=calib(mess,cspl);
|
483 |
|
|
hist1->Fill(truth, mess/truth, i->GetWeight());
|
484 |
|
|
hist2->Fill(mess, mess/truth, i->GetWeight());
|
485 |
|
|
hist3->Fill(c*mess, mess/truth, i->GetWeight());
|
486 |
|
|
hist4->Fill(truth, (c*mess)/truth, i->GetWeight());
|
487 |
|
|
hist5->Fill(mess, (c*mess)/truth, i->GetWeight());
|
488 |
|
|
hist6->Fill(c*mess, (c*mess)/truth, i->GetWeight());
|
489 |
|
|
}
|
490 |
|
|
gROOT->SetStyle("Plain");
|
491 |
|
|
gStyle->SetPalette(51,0);
|
492 |
|
|
TCanvas *c1 = new TCanvas("c4","Ration",0,0,900,900);
|
493 |
|
|
TF1 *f = new TF1("f","gaus",minX,maxX);
|
494 |
|
|
TObjArray aSlices;
|
495 |
|
|
c1->Divide(3,3);
|
496 |
|
|
c1->cd(1);
|
497 |
|
|
gPad->SetRightMargin(0.15);
|
498 |
|
|
gPad->SetLeftMargin(0.15);
|
499 |
|
|
hist1->Draw("COLZ");
|
500 |
|
|
hist1->FitSlicesY(f, 0, -1, 0, "NQ", &aSlices);
|
501 |
|
|
TH1* hist1_1 = (TH1*)(aSlices[1]);
|
502 |
|
|
TH1* hist1_2 = (TH1*)(aSlices[2]);
|
503 |
|
|
for (int i=0; i<hist1_1->GetNbinsX(); ++i){
|
504 |
|
|
hist1_1->SetBinError(i,hist1_2->GetBinContent(i));
|
505 |
|
|
}
|
506 |
|
|
hist1_1->SetLineColor(2);
|
507 |
|
|
hist1_1->Draw("same");
|
508 |
|
|
hist1->SetLineColor(5);
|
509 |
|
|
hist1->ProfileX()->Draw("same");
|
510 |
|
|
|
511 |
|
|
c1->cd(2);
|
512 |
|
|
gPad->SetRightMargin(0.12);
|
513 |
|
|
hist2->Draw("COLZ");
|
514 |
|
|
hist2->FitSlicesY(f, 0, -1, 0, "NQ", &aSlices);
|
515 |
|
|
TH1* hist2_1 = (TH1*)(aSlices[1]);
|
516 |
|
|
TH1* hist2_2 = (TH1*)(aSlices[2]);
|
517 |
|
|
for (int i=0; i<hist2_1->GetNbinsX(); ++i){
|
518 |
|
|
hist2_1->SetBinError(i,hist2_2->GetBinContent(i));
|
519 |
|
|
}
|
520 |
|
|
hist2_1->SetLineColor(2);
|
521 |
|
|
hist2_1->Draw("same");
|
522 |
|
|
hist2->SetLineColor(5);
|
523 |
|
|
hist2->ProfileX()->Draw("same");
|
524 |
|
|
|
525 |
|
|
c1->cd(3);
|
526 |
|
|
gPad->SetRightMargin(0.12);
|
527 |
|
|
hist3->Draw("COLZ");
|
528 |
|
|
hist3->FitSlicesY(f, 0, -1, 0, "NQ", &aSlices);
|
529 |
|
|
TH1* hist3_1 = (TH1*)(aSlices[1]);
|
530 |
|
|
TH1* hist3_2 = (TH1*)(aSlices[2]);
|
531 |
|
|
for (int i=0; i<hist3_1->GetNbinsX(); ++i){
|
532 |
|
|
hist3_1->SetBinError(i,hist3_2->GetBinContent(i));
|
533 |
|
|
}
|
534 |
|
|
hist3_1->SetLineColor(2);
|
535 |
|
|
hist3_1->Draw("same");
|
536 |
|
|
hist3->SetLineColor(5);
|
537 |
|
|
hist3->ProfileX()->Draw("same");
|
538 |
|
|
|
539 |
|
|
c1->cd(4);
|
540 |
|
|
gPad->SetRightMargin(0.12);
|
541 |
|
|
hist4->Draw("COLZ");
|
542 |
|
|
hist4->FitSlicesY(f, 0, -1, 0, "NQ", &aSlices);
|
543 |
|
|
TH1* hist4_1 = (TH1*)(aSlices[1]);
|
544 |
|
|
TH1* hist4_2 = (TH1*)(aSlices[2]);
|
545 |
|
|
for (int i=0; i<hist4_1->GetNbinsX(); ++i){
|
546 |
|
|
hist4_1->SetBinError(i,hist4_2->GetBinContent(i));
|
547 |
|
|
}
|
548 |
|
|
hist4_1->SetLineColor(2);
|
549 |
|
|
hist4_1->Draw("same");
|
550 |
|
|
hist4->SetLineColor(5);
|
551 |
|
|
hist4->ProfileX()->Draw("same");
|
552 |
|
|
|
553 |
|
|
c1->cd(5);
|
554 |
|
|
gPad->SetRightMargin(0.12);
|
555 |
|
|
hist5->Draw("COLZ");
|
556 |
|
|
hist5->FitSlicesY(f, 0, -1, 0, "NQ", &aSlices);
|
557 |
|
|
TH1* hist5_1 = (TH1*)(aSlices[1]);
|
558 |
|
|
TH1* hist5_2 = (TH1*)(aSlices[2]);
|
559 |
|
|
for (int i=0; i<hist5_1->GetNbinsX(); ++i){
|
560 |
|
|
hist5_1->SetBinError(i,hist5_2->GetBinContent(i));
|
561 |
|
|
}
|
562 |
|
|
hist5_1->SetLineColor(2);
|
563 |
|
|
hist5_1->Draw("same");
|
564 |
|
|
hist5->SetLineColor(5);
|
565 |
|
|
hist5->ProfileX()->Draw("same");
|
566 |
|
|
|
567 |
|
|
c1->cd(6);
|
568 |
|
|
gPad->SetRightMargin(0.12);
|
569 |
|
|
hist6->Draw("COLZ");
|
570 |
|
|
hist6->FitSlicesY(f, 0, -1, 0, "NQ", &aSlices);
|
571 |
|
|
TH1* hist6_1 = (TH1*)(aSlices[1]);
|
572 |
|
|
TH1* hist6_2 = (TH1*)(aSlices[2]);
|
573 |
|
|
for (int i=0; i<hist6_1->GetNbinsX(); ++i){
|
574 |
|
|
hist6_1->SetBinError(i,hist6_2->GetBinContent(i));
|
575 |
|
|
}
|
576 |
|
|
hist6_1->SetLineColor(2);
|
577 |
|
|
hist6_1->Draw("same");
|
578 |
|
|
hist6->SetLineColor(5);
|
579 |
|
|
hist6->ProfileX()->Draw("same");
|
580 |
|
|
|
581 |
|
|
c1->cd(7);
|
582 |
|
|
hist4_1->SetTitleOffset(1.2,"Y");
|
583 |
|
|
hist4_1->SetXTitle("Truth");
|
584 |
|
|
hist4_1->SetYTitle("k");
|
585 |
|
|
hist4_1->SetLineWidth(0);
|
586 |
|
|
hist4_1->SetLineColor(2);
|
587 |
|
|
hist4_1->SetMinimum(0.95);
|
588 |
|
|
hist4_1->SetMaximum(1.05);
|
589 |
|
|
hist4_1->Draw();
|
590 |
|
|
|
591 |
|
|
c1->cd(8);
|
592 |
|
|
hist5_1->SetTitleOffset(1.2,"Y");
|
593 |
|
|
hist5_1->SetXTitle("Measurement");
|
594 |
|
|
hist5_1->SetYTitle("k");
|
595 |
|
|
hist5_1->SetLineWidth(0);
|
596 |
|
|
hist5_1->SetLineColor(2);
|
597 |
|
|
hist5_1->SetMinimum(0.95);
|
598 |
|
|
hist5_1->SetMaximum(1.05);
|
599 |
|
|
hist5_1->Draw();
|
600 |
|
|
|
601 |
|
|
c1->cd(9);
|
602 |
|
|
hist6_1->SetTitleOffset(1.2,"Y");
|
603 |
|
|
hist6_1->SetXTitle("calib. Measurement");
|
604 |
|
|
hist6_1->SetYTitle("k");
|
605 |
|
|
hist6_1->SetLineWidth(0);
|
606 |
|
|
hist6_1->SetLineColor(2);
|
607 |
|
|
hist6_1->SetMinimum(0.95);
|
608 |
|
|
hist6_1->SetMaximum(1.05);
|
609 |
|
|
hist6_1->Draw();
|
610 |
|
|
|
611 |
|
|
c1->SaveAs("ratio_LVMini.eps");
|
612 |
|
|
};
|
613 |
|
|
//----------------------------------------------------------
|
614 |
|
|
|
615 |
|
|
//----------------------------------------------------------
|
616 |
|
|
//constructor
|
617 |
|
|
TData(int N=100, double min=300., double max=700., int npar=10,
|
618 |
|
|
bool flat=false,
|
619 |
|
|
bool cutoff=false, bool cutofflog=false,
|
620 |
|
|
bool reweight=false, bool reweightlog=false,
|
621 |
|
|
bool reco=false){
|
622 |
|
|
Nevts = N;
|
623 |
|
|
minX=99999;
|
624 |
|
|
maxX=0;
|
625 |
|
|
minY=99990;
|
626 |
|
|
maxY=0;
|
627 |
|
|
int Nnegative=0;
|
628 |
|
|
TF1 *recoeff = new TF1("f","pow(x/30.,2)/(1.+pow(x/30.,2))");
|
629 |
|
|
for (int i=0;i<Nevts;i++) {
|
630 |
|
|
double x = gRandom->Rndm(i);
|
631 |
|
|
//double truth = min+(max-min)*x;
|
632 |
|
|
double truth = gRandom->Exp(150);
|
633 |
|
|
double width = error(truth);
|
634 |
|
|
double meas = gRandom->Gaus(0.9*truth,width);
|
635 |
|
|
double pr = gRandom->Rndm(i);
|
636 |
|
|
//double pr = -9999.;
|
637 |
|
|
if (meas<0 && truth>min){
|
638 |
|
|
++Nnegative;
|
639 |
|
|
cout<<"WARNING: negative measurement (truth="<<truth<<",meas="<<meas<<") no. "<<Nnegative<<endl;
|
640 |
|
|
}
|
641 |
|
|
if (meas>0 && truth>min && pr<(*recoeff)(truth)){
|
642 |
|
|
if (meas<minY) minY=meas;
|
643 |
|
|
if (meas>maxY) maxY=meas;
|
644 |
|
|
if (truth<minX) minX=truth;
|
645 |
|
|
if (truth>maxX) maxX=truth;
|
646 |
|
|
double error = width;
|
647 |
|
|
double weight=1.;
|
648 |
|
|
//reco eff correction
|
649 |
|
|
if (reco) weight = 1./(*recoeff)(truth);
|
650 |
|
|
TDataPoint d(truth, meas, error, weight);
|
651 |
|
|
data.push_back(d);
|
652 |
|
|
}
|
653 |
|
|
}
|
654 |
|
|
sp.clear();
|
655 |
|
|
|
656 |
|
|
if (flat) FlattenSpectra();
|
657 |
|
|
if (reweight){
|
658 |
|
|
bool outlier=true;
|
659 |
|
|
ResolutionReweight(reweightlog, outlier, 5);
|
660 |
|
|
ResolutionReweight(reweightlog, outlier, 4);
|
661 |
|
|
ResolutionReweight(reweightlog, outlier, 3);
|
662 |
|
|
}
|
663 |
|
|
if (cutoff) CorrectCutoff(cutofflog);
|
664 |
|
|
|
665 |
|
|
dY=(maxY-minY)/(npar-3);
|
666 |
|
|
for (int i=0; i<npar; ++i){
|
667 |
|
|
sp.push_back(minY+(i-1)*dY);
|
668 |
|
|
}
|
669 |
|
|
|
670 |
|
|
};
|
671 |
|
|
//----------------------------------------------------------
|
672 |
|
|
|
673 |
|
|
//----------------------------------------------------------
|
674 |
|
|
void evalF(int &NPAR, vector<double>* GRAD, double &FSUM, vector<double>* PAR){
|
675 |
|
|
|
676 |
|
|
FSUM = chi2(PAR);
|
677 |
|
|
// gradients
|
678 |
|
|
double eps=1.e-5;
|
679 |
|
|
for (int i=0; i<NPAR; ++i){
|
680 |
|
|
vector<double> PAR1 = *PAR;
|
681 |
|
|
vector<double> PAR2 = *PAR;
|
682 |
|
|
PAR1.at(i) += eps;
|
683 |
|
|
PAR2.at(i) -= eps;
|
684 |
|
|
GRAD->at(i) = (chi2(&PAR1)-chi2(&PAR2))/2./eps;
|
685 |
|
|
PAR1.at(i) += eps;
|
686 |
|
|
PAR2.at(i) -= eps;
|
687 |
|
|
GRAD->at(i+NPAR) = (chi2(&PAR1)-2*FSUM+chi2(&PAR2))/4./eps/eps;
|
688 |
|
|
}
|
689 |
|
|
}
|
690 |
|
|
//----------------------------------------------------------
|
691 |
|
|
|
692 |
|
|
//destructor
|
693 |
|
|
~TData(){};
|
694 |
|
|
|
695 |
|
|
};
|
696 |
|
|
////////////////////////////////////////////////////////////
|
697 |
|
|
|
698 |
|
|
////////////////////////////////////////////////////////////
|
699 |
|
|
int main(){
|
700 |
|
|
|
701 |
|
|
int NPAR=11;
|
702 |
|
|
|
703 |
|
|
TROOT simple("simple","Some calibration toyMC tests");
|
704 |
|
|
bool flat = true;
|
705 |
|
|
bool cutoff = true;
|
706 |
|
|
bool cutofflog = true;
|
707 |
|
|
bool reweight = true;
|
708 |
|
|
bool reweightlog = true;
|
709 |
|
|
bool reco = true;
|
710 |
|
|
TData* toy= new TData(1000000,20,99999,NPAR,flat,cutoff,cutofflog,reweight,reweightlog,reco);
|
711 |
|
|
toy->DrawTruth();
|
712 |
|
|
toy->DrawMeas();
|
713 |
|
|
|
714 |
|
|
////// LVMINI //////
|
715 |
|
|
int NITER = 500;
|
716 |
|
|
int MVEC;
|
717 |
|
|
NPAR<29?MVEC=NPAR:MVEC=29;
|
718 |
|
|
int NAUX = 10000;
|
719 |
|
|
|
720 |
|
|
vector<double> AUX(NAUX, 0.);
|
721 |
|
|
vector<double> parameter;
|
722 |
|
|
double FSUM;
|
723 |
|
|
double FOPT, FEDM, DUMMY;
|
724 |
|
|
|
725 |
|
|
for (int i=0; i<NPAR; ++i){
|
726 |
|
|
parameter.push_back(1./0.9);
|
727 |
|
|
}
|
728 |
|
|
float eps =float(1.E-3);
|
729 |
|
|
float wlf1=1.E-4;
|
730 |
|
|
float wlf2=0.9;
|
731 |
|
|
//default values
|
732 |
|
|
//double wlf1=-1.;
|
733 |
|
|
//double wlf2=-1.;
|
734 |
|
|
|
735 |
|
|
lvmeps_(eps,wlf1,wlf2);
|
736 |
|
|
|
737 |
|
|
int NPARNEG = -fabs(NPAR);
|
738 |
|
|
if(lvmdim_(NPAR, MVEC) > NAUX)
|
739 |
|
|
cout<<"Aux field too small: "<<NAUX<<"<"<<lvmdim_(NPAR, MVEC)<<" needed entries"<<endl;
|
740 |
|
|
lvmini_(NPARNEG, MVEC, NITER, &AUX.front());
|
741 |
|
|
int IFLAG;
|
742 |
|
|
int IRET = 0;
|
743 |
|
|
int ITER = 0;
|
744 |
|
|
do {
|
745 |
|
|
++ITER;
|
746 |
|
|
toy->evalF(NPAR, &AUX, FSUM, ¶meter);
|
747 |
|
|
lvmfun_(¶meter.front(), FSUM, IRET, &AUX.front());
|
748 |
|
|
lvmprt_(2, &AUX.front(), 2); //print out
|
749 |
|
|
/*
|
750 |
|
|
if (ITER%10==0){
|
751 |
|
|
toy->DrawRatio(parameter);
|
752 |
|
|
toy->DrawCalibConst(parameter);
|
753 |
|
|
}
|
754 |
|
|
*/
|
755 |
|
|
} while (IRET<0);
|
756 |
|
|
int error_index=2;
|
757 |
|
|
error_index = lvmind_(error_index);
|
758 |
|
|
|
759 |
|
|
toy->DrawRatio(parameter);
|
760 |
|
|
toy->DrawCalibConst(parameter);
|
761 |
|
|
|
762 |
|
|
return 0;
|
763 |
|
|
|
764 |
|
|
}
|
765 |
|
|
////////////////////////////////////////////////////////////
|
766 |
|
|
|