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buchmann |
1.1 |
/****
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Off peak status (RestrictToMassPeak) :
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x Necessary adaptations identified
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x Started working on necessary adaptations
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x Necessary adaptations implemented
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x Necessary adaptations tested
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DONE!
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****/
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#include <iostream>
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#include <vector>
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#include <sys/stat.h>
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#include <fstream>
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#include <TCut.h>
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#include <TROOT.h>
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#include <TCanvas.h>
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#include <TMath.h>
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#include <TColor.h>
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#include <TPaveText.h>
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#include <TRandom.h>
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#include <TH1.h>
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#include <TH2.h>
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#include <TF1.h>
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#include <TSQLResult.h>
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#include <TProfile.h>
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#include <TSystem.h>
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#include "LimitDroplet.C"
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//#include "TTbar_stuff.C"
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using namespace std;
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using namespace PlottingSetup;
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void rediscover_the_top(string mcjzb, string datajzb) {
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dout << "Hi! today we are going to (try to) rediscover the top!" << endl;
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TCanvas *c3 = new TCanvas("c3","c3");
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c3->SetLogy(1);
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vector<float> binning;
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//binning=allsamples.get_optimal_binsize(mcjzb,cutmass&&cutOSSF&&cutnJets,20,50,800);
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/*
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binning.push_back(50);
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binning.push_back(100);
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binning.push_back(150);
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binning.push_back(200);
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binning.push_back(500);
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TH1F *dataprediction = allsamples.Draw("dataprediction", "-"+datajzb, binning, "JZB [GeV]", "events", cutmass&&cutOSSF&&cutnJets,data, luminosity);
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TH1F *puresignal = allsamples.Draw("puresignal", datajzb, binning, "JZB [GeV]", "events", cutmass&&cutOSOF&&cutnJets,data, luminosity);
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// TH1F *puresignal = allsamples.Draw("puresignal", mcjzb, binning, "JZB [GeV]", "events", cutmass&&cutOSSF&&cutnJets,mc, luminosity,allsamples.FindSample("TTJets"));
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TH1F *observed = allsamples.Draw("observed", datajzb,binning, "JZB [GeV]", "events", cutmass&&cutOSSF&&cutnJets,data,luminosity);
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/*
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ofstream myfile;
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TH1F *ratio = (TH1F*)observed->Clone();
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ratio->Divide(dataprediction);
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ratio->GetYaxis()->SetTitle("Ratio obs/pred");
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ratio->Draw();
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c3->SaveAs("testratio.png");
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myfile.open ("ShapeFit_log.txt");
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establish_upper_limits(observed,dataprediction,puresignal,"LM4",myfile);
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myfile.close();
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*/
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int nbins=100;
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float low=0;
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float hi=500;
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TCanvas *c4 = new TCanvas("c4","c4",900,900);
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c4->Divide(2,2);
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c4->cd(1);
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c4->cd(1)->SetLogy(1);
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TH1F *datapredictiont = allsamples.Draw("datapredictiont", "-"+datajzb, nbins,low,hi, "JZB [GeV]", "events", cutmass&&cutOSSF&&cutnJets,data, luminosity);
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TH1F *datapredictiono = allsamples.Draw("datapredictiono", "-"+datajzb, nbins,low,hi, "JZB [GeV]", "events", cutmass&&cutOSOF&&cutnJets,data, luminosity);
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datapredictiont->Add(datapredictiono,-1);
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dout << "Second way of doing this !!!! Analytical shape to the left :-D" << endl;
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vector<TF1*> functions = do_cb_fit_to_plot(datapredictiont,10);
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datapredictiont->SetMarkerColor(kRed);
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datapredictiont->SetLineColor(kRed);
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datapredictiont->Draw();
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functions[1]->Draw("same");
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TText *title1 = write_title("Top Background Prediction (JZB<0, with osof subtr)");
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title1->Draw();
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c4->cd(2);
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c4->cd(2)->SetLogy(1);
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TH1F *observedt = allsamples.Draw("observedt", datajzb, nbins,low,hi, "JZB [GeV]", "events", cutmass&&cutOSSF&&cutnJets,data, luminosity);
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observedt->Draw();
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datapredictiont->Draw("histo,same");
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functions[1]->Draw("same");
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TText *title2 = write_title("Observed and predicted background");
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title2->Draw();
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c4->cd(3);
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c4->cd(3)->SetLogy(1);
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// TH1F *ratio = (TH1F*)observedt->Clone();
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TH1F *analytical_background_prediction= new TH1F("analytical_background_prediction","",nbins,low,hi);
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for(int i=0;i<=nbins;i++) {
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analytical_background_prediction->SetBinContent(i+1,functions[1]->Eval(((hi-low)/((float)nbins))*(i+0.5)));
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analytical_background_prediction->SetBinError(i+1,TMath::Sqrt(functions[1]->Eval(((hi-low)/((float)nbins))*(i+0.5))));
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}
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analytical_background_prediction->GetYaxis()->SetTitle("JZB [GeV]");
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analytical_background_prediction->GetYaxis()->CenterTitle();
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TH1F *analyticaldrawonly = (TH1F*)analytical_background_prediction->Clone();
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analytical_background_prediction->SetFillColor(TColor::GetColor("#3399FF"));
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analytical_background_prediction->SetMarkerSize(0);
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analytical_background_prediction->Draw("e5");
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analyticaldrawonly->Draw("histo,same");
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functions[1]->Draw("same");
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TText *title3 = write_title("Analytical bg pred histo");
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title3->Draw();
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c4->cd(4);
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// c4->cd(4)->SetLogy(1);
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vector<float> ratio_binning;
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ratio_binning.push_back(0);
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ratio_binning.push_back(5);
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ratio_binning.push_back(10);
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ratio_binning.push_back(20);
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ratio_binning.push_back(50);
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// ratio_binning.push_back(60);
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/*
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ratio_binning.push_back(51);
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ratio_binning.push_back(52);
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ratio_binning.push_back(53);
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ratio_binning.push_back(54);
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ratio_binning.push_back(55);
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ratio_binning.push_back(56);
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ratio_binning.push_back(57);
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ratio_binning.push_back(58);
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ratio_binning.push_back(59);
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ratio_binning.push_back(60);
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// ratio_binning.push_back(70);*/
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// ratio_binning.push_back(80);
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// ratio_binning.push_back(90);
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ratio_binning.push_back(80);
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// ratio_binning.push_back(110);
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ratio_binning.push_back(500);
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TH1F *observedtb = allsamples.Draw("observedtb", datajzb, ratio_binning, "JZB [GeV]", "events", cutmass&&cutOSSF&&cutnJets,data, luminosity);
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TH1F *datapredictiontb = allsamples.Draw("datapredictiontb", "-"+datajzb, ratio_binning, "JZB [GeV]", "events", cutmass&&cutOSSF&&cutnJets,data, luminosity);
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TH1F *datapredictiontbo = allsamples.Draw("datapredictiontbo", "-"+datajzb, ratio_binning, "JZB [GeV]", "events", cutmass&&cutOSOF&&cutnJets,data, luminosity);
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datapredictiontb->Add(datapredictiontbo,-1);
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TH1F *analytical_background_predictionb = allsamples.Draw("analytical_background_predictionb",datajzb, ratio_binning, "JZB [GeV]", "events", cutmass&&cutOSSF&&cutnJets&&"mll<2",data, luminosity);
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for(int i=0;i<=ratio_binning.size();i++) {
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analytical_background_predictionb->SetBinContent(i+1,functions[1]->Eval(analytical_background_predictionb->GetBinCenter(i)));
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analytical_background_predictionb->SetBinError(i+1,TMath::Sqrt(functions[1]->Eval(analytical_background_predictionb->GetBinCenter(i))));
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}
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TH1F *ratio = (TH1F*) observedtb->Clone();
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ratio->Divide(datapredictiontb);
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for (int i=0;i<=ratio_binning.size();i++) {
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dout << observedtb->GetBinLowEdge(i+1) << ";"<<observedtb->GetBinContent(i+1) << ";" << datapredictiontb->GetBinContent(i+1) << " --> " << ratio->GetBinContent(i+1) << "+/-" << ratio->GetBinError(i+1) << endl;
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}
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// ratio->Divide(datapredictiontb);
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// ratio->Divide(analytical_background_predictionb);
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// TGraphAsymmErrors *JZBratio= histRatio(observedtb,analytical_background_predictionb,data,ratio_binning);
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// ratio->Divide(analytical_background_prediction);
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// ratio->Divide(datapredictiont);
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// ratio->GetYaxis()->SetTitle("obs/pred");
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// JZBratio->Draw("AP");
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ratio->GetYaxis()->SetRangeUser(0,10);
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ratio->Draw();
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//analytical_background_predictionb->Draw();
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// JZBratio->SetTitle("");
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TText *title4 = write_title("Ratio of observed to predicted");
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title4->Draw();
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// CompleteSave(c4,"test/ttbar_discovery_dataprediction___analytical_function");
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CompleteSave(c4,"test/ttbar_discovery_dataprediction__analytical__new_binning_one_huge_bin_from_80");
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}
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buchmann |
1.2 |
vector<float> compute_one_upper_limit(float mceff,float mcefferr, int ibin, string mcjzb, string plotfilename, bool doexpected, int flipped, bool doasymptotic=false) {
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buchmann |
1.1 |
float sigma95=-9.9,sigma95A=-9.9;
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/*
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USAGE OF ROOSTATS_CL95
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" Double_t limit = roostats_cl95(ilum, slum, eff, seff, bck, sbck, n, gauss = false, nuisanceModel, method, plotFileName, seed); \n"
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" LimitResult expected_limit = roostats_clm(ilum, slum, eff, seff, bck, sbck, ntoys, nuisanceModel, method, seed); \n"
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" Double_t average_limit = roostats_cla(ilum, slum, eff, seff, bck, sbck, nuisanceModel, method, seed); \n"
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" \n"
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"
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" Double_t obs_limit = limit.GetObservedLimit(); \n"
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" Double_t exp_limit = limit.GetExpectedLimit(); \n"
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" Double_t exp_up = limit.GetOneSigmaHighRange(); \n"
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" Double_t exp_down = limit.GetOneSigmaLowRange(); \n"
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" Double_t exp_2up = limit.GetTwoSigmaHighRange(); \n"
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" Double_t exp_2down = limit.GetTwoSigmaLowRange(); \n"
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*/
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if(mceff<=0) {
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write_warning(__FUNCTION__,"Cannot compute upper limit in this configuration as the efficiency is negative:");
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dout << "mc efficiency=" << mceff << " +/- " << mcefferr;
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vector<float> sigmas;
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sigmas.push_back(-1);
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sigmas.push_back(-1);
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return sigmas;
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} else {
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int nlimittoysused=1;
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///------------------------------------------ < NEW > ----------------------------------------------------------
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int secondssince1970=time(NULL);
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stringstream repname;
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repname << PlottingSetup::cbafbasedir << "/exchange/report_" << secondssince1970 << "_"<<plotfilename<< "__"<< ".txt";
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/* - report filename [1]
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- luminosity [2]
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- lumi uncert [3]
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- MC efficiency [4]
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- MC efficiency error [5]
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- Npred [6]
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- Nprederr [7]
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- Nobs [8]
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- JZB cut [9]
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- plot name [10]*/
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if(flipped==0) dout << "Calling limit capsule instead of calling : CL95(" << luminosity << "," << lumiuncert*luminosity << "," << mceff << "," << mcefferr << "," << Npred[ibin] << "," << Nprederr[ibin] << "," << Nobs[ibin] << "," << false << "," << nuisancemodel<< ") " << endl;
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if(flipped>0) dout << "Calling limit capsule instead of calling : CL95(" << luminosity << "," << lumiuncert*luminosity << "," << mceff << "," << mcefferr << "," << flippedNpred[ibin] << "," << flippedNprederr[ibin] << "," << flippedNobs[ibin] << "," << false << "," << nuisancemodel<< ") " << endl;
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stringstream command;
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233 |
buchmann |
1.2 |
if(flipped==0) command << PlottingSetup::cbafbasedir << "/DistributedModelCalculations/Limits/TimedLimitCapsule.exec " << repname.str() << " " << luminosity << " " << luminosity*lumiuncert << " " << mceff << " " << mcefferr << " " << Npred[ibin] << " " << Nprederr[ibin] << " " << Nobs[ibin] << " " << -1 << " " << PlottingSetup::basedirectory << "/" << plotfilename << " " << doexpected << " " << doasymptotic;
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if(flipped>0) command << PlottingSetup::cbafbasedir << "/DistributedModelCalculations/Limits/TimedLimitCapsule.exec " << repname.str() << " " << luminosity << " " << luminosity*lumiuncert << " " << mceff << " " << mcefferr << " " << flippedNpred[ibin] << " " << flippedNprederr[ibin] << " " << flippedNobs[ibin] << " " << -1 << " " << PlottingSetup::basedirectory << "/" << plotfilename << " " << doexpected<< " " << doasymptotic;
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buchmann |
1.1 |
dout << command.str() << endl;
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int retval = 256;
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int attempts=0;
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while(!(retval==0||attempts>=3)) {//try up to 3 times
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attempts++;
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dout << "Starting limit calculation (TimedLimitCapsule) now : Attempt " << attempts << endl;
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retval=gSystem->Exec(command.str().c_str());
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}
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char hostname[1023];
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gethostname(hostname,1023);
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if((!((Contains(hostname,"t3ui")||Contains(hostname,"t3wn"))))&&retval==256) {
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//running via CRAB and encountered the same problem too often: place a problem file to mark this problem!
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stringstream markproblem;
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markproblem << "touch " << PlottingSetup::basedirectory << "/exchange/problemswhilesettinglimits.txt";
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gSystem->Exec(markproblem.str().c_str());
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}
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252 |
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LimitDroplet limres;
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limres.readDroplet(repname.str());
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dout << limres << endl;
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remove(repname.str().c_str());
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256 |
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sigma95=limres.observed;
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///------------------------------------------ < /NEW > ----------------------------------------------------------
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vector<float> sigmas;
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sigmas.push_back(sigma95);
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if(doexpected) {
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sigmas.push_back(limres.expected);
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sigmas.push_back(limres.upper68);
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sigmas.push_back(limres.lower68);
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sigmas.push_back(limres.upper95);
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sigmas.push_back(limres.lower95);
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}
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270 |
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return sigmas;
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}//end of mc efficiency is ok
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}
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275 |
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276 |
buchmann |
1.2 |
vector<float> compute_upper_limits_from_counting_experiment(vector<vector<float> > uncertainties,vector<float> jzbcuts, string mcjzb, bool doexpected, int flipped) {
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277 |
buchmann |
1.1 |
dout << "Doing counting experiment ... " << endl;
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278 |
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vector<vector<string> > limits;
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279 |
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vector<vector<float> > vlimits;
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280 |
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281 |
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282 |
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for(int isample=0;isample<signalsamples.collection.size();isample++) {
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283 |
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vector<string> rows;
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284 |
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vector<float> vrows;
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285 |
|
|
dout << "Considering sample " << signalsamples.collection[isample].samplename << endl;
|
286 |
|
|
rows.push_back(signalsamples.collection[isample].samplename);
|
287 |
|
|
for(int ibin=0;ibin<jzbcuts.size();ibin++) {
|
288 |
|
|
dout << "_________________________________________________________________________________" << endl;
|
289 |
|
|
float JZBcutat=uncertainties[isample*jzbcuts.size()+ibin][0];
|
290 |
|
|
float mceff=uncertainties[isample*jzbcuts.size()+ibin][1];
|
291 |
|
|
float staterr=uncertainties[isample*jzbcuts.size()+ibin][2];
|
292 |
|
|
float systerr=uncertainties[isample*jzbcuts.size()+ibin][3];
|
293 |
|
|
float toterr =uncertainties[isample*jzbcuts.size()+ibin][4];
|
294 |
|
|
float observed,observederr,null,result;
|
295 |
|
|
|
296 |
|
|
string plotfilename=(string)(TString(signalsamples.collection[isample].samplename)+TString("___JZB_geq_")+TString(any2string(JZBcutat))+TString(".png"));
|
297 |
|
|
dout << "Sample: " << signalsamples.collection[isample].samplename << ", JZB>"<<JZBcutat<< " : " << mceff << " +/- " << staterr << " (stat) +/- " << systerr << " (syst) --> toterr = " << toterr << endl;
|
298 |
|
|
vector<float> sigmas = compute_one_upper_limit(mceff,toterr,ibin,mcjzb,plotfilename,doexpected,flipped);
|
299 |
|
|
|
300 |
|
|
tripple LibraryUpperLimits;
|
301 |
|
|
LibraryUpperLimits.name=signalsamples.collection[isample].samplename;
|
302 |
|
|
LibraryUpperLimits.first=mceff*signalsamples.collection[isample].xs * PlottingSetup::luminosity;
|
303 |
|
|
LibraryUpperLimits.second=staterr*signalsamples.collection[isample].xs * PlottingSetup::luminosity;
|
304 |
|
|
int resultindex=PlottingSetup::allresults.Find(jzbcuts[ibin]);
|
305 |
|
|
(allresults.predictions[resultindex]).SignalYield.push_back(LibraryUpperLimits);
|
306 |
|
|
|
307 |
|
|
if(doexpected) {
|
308 |
|
|
rows.push_back(any2string(sigmas[0])+";"+any2string(sigmas[1])+";"+"("+any2string(signalsamples.collection[isample].xs)+")");
|
309 |
|
|
vrows.push_back(sigmas[0]);
|
310 |
|
|
vrows.push_back(sigmas[1]);
|
311 |
|
|
vrows.push_back(signalsamples.collection[isample].xs);
|
312 |
|
|
}
|
313 |
|
|
else {
|
314 |
|
|
rows.push_back(any2string(sigmas[0]));
|
315 |
|
|
vrows.push_back(sigmas[0]);
|
316 |
|
|
vrows.push_back(signalsamples.collection[isample].xs);
|
317 |
|
|
}
|
318 |
|
|
}//end of bin loop
|
319 |
|
|
limits.push_back(rows);
|
320 |
|
|
vlimits.push_back(vrows);
|
321 |
|
|
}//end of sample loop
|
322 |
|
|
|
323 |
|
|
dout << endl << endl << "_______________________________________________________________________________________" << endl;
|
324 |
|
|
dout << "Going to store upper limit on event yield in result library: " << endl;
|
325 |
|
|
for(int ibin=0;ibin<jzbcuts.size();ibin++) {
|
326 |
|
|
int resultindex=PlottingSetup::allresults.Find(jzbcuts[ibin]);
|
327 |
|
|
vector<float> Normsigmas = compute_one_upper_limit(1.0,0.0, resultindex, mcjzb, "UPPERLIMIT", false, 0);
|
328 |
|
|
(allresults.predictions[resultindex]).UpperLimit=Normsigmas[0]*PlottingSetup::luminosity;
|
329 |
|
|
}
|
330 |
|
|
dout << endl << "_______________________________________________________________________________________" << endl;
|
331 |
|
|
|
332 |
|
|
dout << endl << endl << endl << "_________________________________________________________________________________________________" << endl << endl;
|
333 |
|
|
dout << endl << endl << "PAS table 3: (notation: limit [95%CL])" << endl << endl;
|
334 |
|
|
dout << "\t";
|
335 |
|
|
for (int irow=0;irow<jzbcuts.size();irow++) {
|
336 |
|
|
dout << jzbcuts[irow] << "\t";
|
337 |
|
|
}
|
338 |
|
|
dout << endl;
|
339 |
|
|
for(int irow=0;irow<limits.size();irow++) {
|
340 |
|
|
for(int ientry=0;ientry<limits[irow].size();ientry++) {
|
341 |
|
|
if (limits[irow][ientry]>0) dout << limits[irow][ientry] << "\t";
|
342 |
|
|
else dout << " (N/A) \t";
|
343 |
|
|
}
|
344 |
|
|
dout << endl;
|
345 |
|
|
}
|
346 |
|
|
|
347 |
|
|
if(!doexpected) {
|
348 |
|
|
dout << endl << endl << "LIMITS: (Tex)" << endl;
|
349 |
|
|
tout << "\\begin{table}[hbtp]" << endl;
|
350 |
|
|
tout << "\\renewcommand{\\arraystretch}{1.3}" << endl;
|
351 |
|
|
tout << "\\begin{center}" << endl;
|
352 |
|
|
tout << "\\caption{Observed upper limits on the cross section of different LM benchmark points " << (ConsiderSignalContaminationForLimits?" (accounting for signal contamination)":" (not accounting for signal contamination)") << "}\\label{tab:lmresults}" << endl;
|
353 |
|
|
tout << "" << endl;
|
354 |
|
|
tout << "\\begin{tabular}{ | l | ";
|
355 |
|
|
for (int irow=0;irow<jzbcuts.size();irow++) tout << " l |";
|
356 |
|
|
tout << "} " << endl << " \\hline " << endl << "& \t ";
|
357 |
|
|
for (int irow=0;irow<jzbcuts.size();irow++) {
|
358 |
|
|
tout << "JZB $>$ " << jzbcuts[irow] << " GeV & \t ";
|
359 |
|
|
}
|
360 |
|
|
tout << " \\\\ \\hline " << endl;
|
361 |
|
|
for(int irow=0;irow<limits.size();irow++) {
|
362 |
|
|
tout << limits[irow][0] << " \t";
|
363 |
|
|
for(int ientry=0;ientry<jzbcuts.size();ientry++) {
|
364 |
|
|
if(vlimits[irow][2*ientry]>0) tout << " & " << Round(vlimits[irow][2*ientry],2) << " \t (" << Round(vlimits[irow][2*ientry] / vlimits[irow][2*ientry+1],3)<< "x \\sigma ) \t";
|
365 |
|
|
else tout << " & ( N / A ) \t";
|
366 |
|
|
// dout << Round(vlimits[irow][2*ientry],3) << " / " << Round(vlimits[irow][2*ientry+1],3)<< "\t";
|
367 |
|
|
}
|
368 |
|
|
tout << " \\\\ \\hline " << endl;
|
369 |
|
|
}
|
370 |
|
|
tout << "\\end{tabular}" << endl;
|
371 |
|
|
tout << " \\end{tabular}"<< endl;
|
372 |
|
|
tout << "\\end{center}"<< endl;
|
373 |
|
|
tout << "\\end{table} "<< endl;
|
374 |
|
|
|
375 |
|
|
}//do observed
|
376 |
|
|
|
377 |
|
|
dout << endl << endl << "Final selection efficiencies with total statistical and systematic errors, and corresponding observed and expected upper limits (UL) on ($\\sigma\\times$ BR $\\times$ acceptance) for the LM4 and LM8 scenarios, in the different regions. The last column contains the predicted ($\\sigma \\times $BR$\\times$ acceptance) at NLO obtained from Monte Carlo simulation." << endl;
|
378 |
|
|
dout << "Scenario \t Efficiency [%] \t Upper limits [pb] \t \\sigma [pb]" << endl;
|
379 |
|
|
for(int icut=0;icut<jzbcuts.size();icut++) {
|
380 |
|
|
dout << "Region with JZB>" << jzbcuts[icut] << (ConsiderSignalContaminationForLimits?" (accounting for signal contamination)":" (not accounting for signal contamination)") << endl;
|
381 |
|
|
for(int isample=0;isample<signalsamples.collection.size();isample++) {
|
382 |
|
|
dout << limits[isample][0] << "\t" << Round(100*uncertainties[isample*jzbcuts.size()+icut][1],3) << "+/-" << Round(100*uncertainties[isample*jzbcuts.size()+icut][2],3) << " (stat) +/- " << Round(100*uncertainties[isample*jzbcuts.size()+icut][3],3) << " (syst) \t" << Round((vlimits[isample][2*icut]),3) << "\t" << Round(vlimits[isample][2*icut+1],3) << endl;
|
383 |
|
|
}
|
384 |
|
|
dout << endl;
|
385 |
|
|
}
|
386 |
|
|
allresults.Print();
|
387 |
|
|
|
388 |
buchmann |
1.2 |
//---------------------------------------------
|
389 |
buchmann |
1.1 |
|
390 |
buchmann |
1.2 |
vector<float> lowestULs;
|
391 |
|
|
for(int isample=0;isample<signalsamples.collection.size();isample++) {
|
392 |
|
|
float lowestUL=-1;
|
393 |
|
|
for(int icut=0;icut<jzbcuts.size();icut++) {
|
394 |
|
|
float currUL=Round((vlimits[isample][2*icut]),3);
|
395 |
|
|
if(currUL>0) {
|
396 |
|
|
if(lowestUL<0) lowestUL=currUL;
|
397 |
|
|
if(currUL<lowestUL) lowestUL=currUL;
|
398 |
|
|
}
|
399 |
|
|
lowestULs.push_back(lowestUL);
|
400 |
|
|
}
|
401 |
|
|
}
|
402 |
|
|
|
403 |
|
|
//---------------------------------------------
|
404 |
|
|
return lowestULs;
|
405 |
buchmann |
1.1 |
}
|
406 |
|
|
|
407 |
|
|
|
408 |
|
|
|
409 |
|
|
/********************************************************************** new : Limits using SHAPES ***********************************
|
410 |
|
|
|
411 |
|
|
|
412 |
|
|
SSSSSSSSSSSSSSS hhhhhhh
|
413 |
|
|
SS:::::::::::::::Sh:::::h
|
414 |
|
|
S:::::SSSSSS::::::Sh:::::h
|
415 |
|
|
S:::::S SSSSSSSh:::::h
|
416 |
|
|
S:::::S h::::h hhhhh aaaaaaaaaaaaa ppppp ppppppppp eeeeeeeeeeee ssssssssss
|
417 |
|
|
S:::::S h::::hh:::::hhh a::::::::::::a p::::ppp:::::::::p ee::::::::::::ee ss::::::::::s
|
418 |
|
|
S::::SSSS h::::::::::::::hh aaaaaaaaa:::::ap:::::::::::::::::p e::::::eeeee:::::eess:::::::::::::s
|
419 |
|
|
SS::::::SSSSS h:::::::hhh::::::h a::::app::::::ppppp::::::pe::::::e e:::::es::::::ssss:::::s
|
420 |
|
|
SSS::::::::SS h::::::h h::::::h aaaaaaa:::::a p:::::p p:::::pe:::::::eeeee::::::e s:::::s ssssss
|
421 |
|
|
SSSSSS::::S h:::::h h:::::h aa::::::::::::a p:::::p p:::::pe:::::::::::::::::e s::::::s
|
422 |
|
|
S:::::S h:::::h h:::::h a::::aaaa::::::a p:::::p p:::::pe::::::eeeeeeeeeee s::::::s
|
423 |
|
|
S:::::S h:::::h h:::::ha::::a a:::::a p:::::p p::::::pe:::::::e ssssss s:::::s
|
424 |
|
|
SSSSSSS S:::::S h:::::h h:::::ha::::a a:::::a p:::::ppppp:::::::pe::::::::e s:::::ssss::::::s
|
425 |
|
|
S::::::SSSSSS:::::S h:::::h h:::::ha:::::aaaa::::::a p::::::::::::::::p e::::::::eeeeeeee s::::::::::::::s
|
426 |
|
|
S:::::::::::::::SS h:::::h h:::::h a::::::::::aa:::ap::::::::::::::pp ee:::::::::::::e s:::::::::::ss
|
427 |
|
|
SSSSSSSSSSSSSSS hhhhhhh hhhhhhh aaaaaaaaaa aaaap::::::pppppppp eeeeeeeeeeeeee sssssssssss
|
428 |
|
|
p:::::p
|
429 |
|
|
p:::::p
|
430 |
|
|
p:::::::p
|
431 |
|
|
p:::::::p
|
432 |
|
|
p:::::::p
|
433 |
|
|
ppppppppp
|
434 |
|
|
|
435 |
|
|
|
436 |
|
|
*********************************************************************** new : Limits using SHAPES ***********************************/
|
437 |
|
|
|
438 |
|
|
|
439 |
|
|
void limit_shapes_for_systematic_effect(TFile *limfile, string identifier, string mcjzb, string datajzb, int JES,vector<float> binning, TCanvas *limcan) {
|
440 |
|
|
dout << "Creatig shape templates ... ";
|
441 |
|
|
if(identifier!="") dout << "for systematic called "<<identifier;
|
442 |
|
|
dout << endl;
|
443 |
|
|
int dataormc=mcwithsignal;//this is only for tests - for real life you want dataormc=data !!!
|
444 |
|
|
if(dataormc!=data) write_warning(__FUNCTION__,"WATCH OUT! Not using data for limits!!!! this is ok for tests, but not ok for anything official!");
|
445 |
|
|
|
446 |
|
|
TCut limitnJetcut;
|
447 |
|
|
if(JES==noJES) limitnJetcut=cutnJets;
|
448 |
|
|
else {
|
449 |
|
|
if(JES==JESdown) limitnJetcut=cutnJetsJESdown;
|
450 |
|
|
if(JES==JESup) limitnJetcut=cutnJetsJESup;
|
451 |
|
|
}
|
452 |
|
|
TH1F *ZOSSFP = allsamples.Draw("ZOSSFP",datajzb,binning, "JZB4limits", "events",cutmass&&cutOSSF&&limitnJetcut&&basiccut,dataormc,luminosity);
|
453 |
|
|
TH1F *ZOSOFP = allsamples.Draw("ZOSOFP",datajzb,binning, "JZB4limits", "events",cutmass&&cutOSOF&&limitnJetcut&&basiccut,dataormc,luminosity);
|
454 |
|
|
TH1F *ZOSSFN = allsamples.Draw("ZOSSFN","-"+datajzb,binning, "JZB4limits", "events",cutmass&&cutOSSF&&limitnJetcut&&basiccut,dataormc,luminosity);
|
455 |
|
|
TH1F *ZOSOFN = allsamples.Draw("ZOSOFN","-"+datajzb,binning, "JZB4limits", "events",cutmass&&cutOSOF&&limitnJetcut&&basiccut,dataormc,luminosity);
|
456 |
|
|
|
457 |
|
|
TH1F *SBOSSFP;
|
458 |
|
|
TH1F *SBOSOFP;
|
459 |
|
|
TH1F *SBOSSFN;
|
460 |
|
|
TH1F *SBOSOFN;
|
461 |
|
|
|
462 |
|
|
TH1F *LZOSSFP = allsamples.Draw("LZOSSFP",mcjzb,binning, "JZB4limits", "events",cutmass&&cutOSSF&&limitnJetcut&&basiccut,mc,luminosity,allsamples.FindSample("LM4"));
|
463 |
|
|
TH1F *LZOSOFP = allsamples.Draw("LZOSOFP",mcjzb,binning, "JZB4limits", "events",cutmass&&cutOSOF&&limitnJetcut&&basiccut,mc,luminosity,allsamples.FindSample("LM4"));
|
464 |
|
|
TH1F *LZOSSFN = allsamples.Draw("LZOSSFN","-"+mcjzb,binning, "JZB4limits", "events",cutmass&&cutOSSF&&limitnJetcut&&basiccut,mc,luminosity,allsamples.FindSample("LM4"));
|
465 |
|
|
TH1F *LZOSOFN = allsamples.Draw("LZOSOFN","-"+mcjzb,binning, "JZB4limits", "events",cutmass&&cutOSOF&&limitnJetcut&&basiccut,mc,luminosity,allsamples.FindSample("LM4"));
|
466 |
|
|
|
467 |
|
|
TH1F *LSBOSSFP;
|
468 |
|
|
TH1F *LSBOSOFP;
|
469 |
|
|
TH1F *LSBOSSFN;
|
470 |
|
|
TH1F *LSBOSOFN;
|
471 |
|
|
|
472 |
|
|
flag_this_change(__FUNCTION__,__LINE__,false);//PlottingSetup::RestrictToMassPeak
|
473 |
|
|
if(PlottingSetup::RestrictToMassPeak) {
|
474 |
|
|
SBOSSFP = allsamples.Draw("SBOSSFP",datajzb,binning, "JZB4limits", "events",cutOSSF&&limitnJetcut&&basiccut&&sidebandcut,dataormc,luminosity);
|
475 |
|
|
SBOSOFP = allsamples.Draw("SBOSOFP",datajzb,binning, "JZB4limits", "events",cutOSOF&&limitnJetcut&&basiccut&&sidebandcut,dataormc,luminosity);
|
476 |
|
|
SBOSSFN = allsamples.Draw("SBOSSFN","-"+datajzb,binning, "JZB4limits", "events",cutOSSF&&limitnJetcut&&basiccut&&sidebandcut,dataormc,luminosity);
|
477 |
|
|
SBOSOFN = allsamples.Draw("SBOSOFN","-"+datajzb,binning, "JZB4limits", "events",cutOSOF&&limitnJetcut&&basiccut&&sidebandcut,dataormc,luminosity);
|
478 |
|
|
|
479 |
|
|
LSBOSSFP = allsamples.Draw("LSBOSSFP",mcjzb,binning, "JZB4limits", "events",cutOSSF&&limitnJetcut&&basiccut&&sidebandcut,mc,luminosity,allsamples.FindSample("LM4"));
|
480 |
|
|
LSBOSOFP = allsamples.Draw("LSBOSOFP",mcjzb,binning, "JZB4limits", "events",cutOSOF&&limitnJetcut&&basiccut&&sidebandcut,mc,luminosity,allsamples.FindSample("LM4"));
|
481 |
|
|
LSBOSSFN = allsamples.Draw("LSBOSSFN","-"+mcjzb,binning, "JZB4limits", "events",cutOSSF&&limitnJetcut&&basiccut&&sidebandcut,mc,luminosity,allsamples.FindSample("LM4"));
|
482 |
|
|
LSBOSOFN = allsamples.Draw("LSBOSOFN","-"+mcjzb,binning, "JZB4limits", "events",cutOSOF&&limitnJetcut&&basiccut&&sidebandcut,mc,luminosity,allsamples.FindSample("LM4"));
|
483 |
|
|
}
|
484 |
|
|
|
485 |
|
|
string obsname="data_obs";
|
486 |
|
|
string predname="background";
|
487 |
|
|
string signalname="signal";
|
488 |
|
|
if(identifier!="") {
|
489 |
|
|
obsname=("data_"+identifier);
|
490 |
|
|
predname=("background_"+identifier);
|
491 |
|
|
signalname="signal_"+identifier;
|
492 |
|
|
}
|
493 |
|
|
|
494 |
|
|
TH1F *obs = (TH1F*)ZOSSFP->Clone("observation");
|
495 |
|
|
obs->SetName(obsname.c_str());
|
496 |
|
|
obs->Write();
|
497 |
|
|
TH1F *pred = (TH1F*)ZOSSFN->Clone("prediction");
|
498 |
|
|
flag_this_change(__FUNCTION__,__LINE__,false);//PlottingSetup::RestrictToMassPeak
|
499 |
|
|
if(PlottingSetup::RestrictToMassPeak) {
|
500 |
|
|
pred->Add(ZOSOFP,1.0/3);
|
501 |
|
|
pred->Add(ZOSOFN,-1.0/3);
|
502 |
|
|
pred->Add(SBOSSFP,1.0/3);
|
503 |
|
|
pred->Add(SBOSSFN,-1.0/3);
|
504 |
|
|
pred->Add(SBOSOFP,1.0/3);
|
505 |
|
|
pred->Add(SBOSOFN,-1.0/3);
|
506 |
|
|
} else {
|
507 |
|
|
pred->Add(ZOSOFP,1.0);
|
508 |
|
|
pred->Add(ZOSOFN,-1.0);
|
509 |
|
|
}
|
510 |
|
|
|
511 |
|
|
pred->SetName(predname.c_str());
|
512 |
|
|
pred->Write();
|
513 |
|
|
|
514 |
|
|
// TH1F *Lobs = (TH1F*)LZOSSFP->Clone();
|
515 |
|
|
// TH1F *Lpred = (TH1F*)LZOSSFN->Clone();
|
516 |
|
|
|
517 |
|
|
TH1F *Lobs = new TH1F("Lobs","Lobs",binning.size()-1,&binning[0]);
|
518 |
|
|
TH1F *Lpred = new TH1F("Lpred","Lpred",binning.size()-1,&binning[0]);
|
519 |
|
|
Lobs->Add(LZOSSFP);
|
520 |
|
|
Lpred->Add(LZOSSFN);
|
521 |
|
|
flag_this_change(__FUNCTION__,__LINE__,false);//PlottingSetup::RestrictToMassPeak
|
522 |
|
|
if(PlottingSetup::RestrictToMassPeak) {
|
523 |
|
|
Lpred->Add(LZOSOFP,1.0/3);
|
524 |
|
|
Lpred->Add(LZOSOFN,-1.0/3);
|
525 |
|
|
Lpred->Add(LSBOSSFP,1.0/3);
|
526 |
|
|
Lpred->Add(LSBOSSFN,-1.0/3);
|
527 |
|
|
Lpred->Add(LSBOSOFP,1.0/3);
|
528 |
|
|
Lpred->Add(LSBOSOFN,-1.0/3);
|
529 |
|
|
} else {
|
530 |
|
|
Lpred->Add(LZOSOFP,1.0);
|
531 |
|
|
Lpred->Add(LZOSOFN,-1.0);
|
532 |
|
|
}
|
533 |
|
|
|
534 |
|
|
TH1F *signal = (TH1F*)Lobs->Clone();
|
535 |
|
|
signal->Add(Lpred,-1);
|
536 |
|
|
signal->SetName(signalname.c_str());
|
537 |
|
|
signal->Write();
|
538 |
|
|
|
539 |
|
|
delete Lobs;
|
540 |
|
|
delete Lpred;
|
541 |
|
|
|
542 |
|
|
delete ZOSSFP;
|
543 |
|
|
delete ZOSOFP;
|
544 |
|
|
delete ZOSSFN;
|
545 |
|
|
delete ZOSOFN;
|
546 |
|
|
|
547 |
|
|
if(PlottingSetup::RestrictToMassPeak) {
|
548 |
|
|
delete SBOSSFP;
|
549 |
|
|
delete SBOSOFP;
|
550 |
|
|
delete SBOSSFN;
|
551 |
|
|
delete SBOSOFN;
|
552 |
|
|
}
|
553 |
|
|
|
554 |
|
|
delete LZOSSFP;
|
555 |
|
|
delete LZOSOFP;
|
556 |
|
|
delete LZOSSFN;
|
557 |
|
|
delete LZOSOFN;
|
558 |
|
|
|
559 |
|
|
if(PlottingSetup::RestrictToMassPeak) {
|
560 |
|
|
delete LSBOSSFP;
|
561 |
|
|
delete LSBOSOFP;
|
562 |
|
|
delete LSBOSSFN;
|
563 |
|
|
delete LSBOSOFN;
|
564 |
|
|
}
|
565 |
|
|
|
566 |
|
|
}
|
567 |
|
|
|
568 |
|
|
void prepare_datacard(TFile *f) {
|
569 |
|
|
TH1F *dataob = (TH1F*)f->Get("data_obs");
|
570 |
|
|
TH1F *signal = (TH1F*)f->Get("signal");
|
571 |
|
|
TH1F *background = (TH1F*)f->Get("background");
|
572 |
|
|
|
573 |
|
|
ofstream datacard;
|
574 |
|
|
ensure_directory_exists(get_directory()+"/limits");
|
575 |
|
|
datacard.open ((get_directory()+"/limits/susydatacard.txt").c_str());
|
576 |
|
|
datacard << "Writing this to a file.\n";
|
577 |
|
|
datacard << "imax 1\n";
|
578 |
|
|
datacard << "jmax 1\n";
|
579 |
|
|
datacard << "kmax *\n";
|
580 |
|
|
datacard << "---------------\n";
|
581 |
|
|
datacard << "shapes * * limitfile.root $PROCESS $PROCESS_$SYSTEMATIC\n";
|
582 |
|
|
datacard << "---------------\n";
|
583 |
|
|
datacard << "bin 1\n";
|
584 |
|
|
datacard << "observation "<<dataob->Integral()<<"\n";
|
585 |
|
|
datacard << "------------------------------\n";
|
586 |
|
|
datacard << "bin 1 1\n";
|
587 |
|
|
datacard << "process signal background\n";
|
588 |
|
|
datacard << "process 0 1\n";
|
589 |
|
|
datacard << "rate "<<signal->Integral()<<" "<<background->Integral()<<"\n";
|
590 |
|
|
datacard << "--------------------------------\n";
|
591 |
|
|
datacard << "lumi lnN 1.10 1.0\n";
|
592 |
|
|
datacard << "bgnorm lnN 1.00 1.4 uncertainty on our prediction (40%)\n";
|
593 |
|
|
datacard << "JES shape 1 1 uncertainty on background shape and normalization\n";
|
594 |
|
|
datacard << "peak shape 1 1 uncertainty on signal resolution. Assume the histogram is a 2 sigma shift, \n";
|
595 |
|
|
datacard << "# so divide the unit gaussian by 2 before doing the interpolation\n";
|
596 |
|
|
datacard.close();
|
597 |
|
|
}
|
598 |
|
|
|
599 |
|
|
|
600 |
|
|
void prepare_limits(string mcjzb, string datajzb, float jzbpeakerrordata, float jzbpeakerrormc, vector<float> jzbbins) {
|
601 |
|
|
ensure_directory_exists(get_directory()+"/limits");
|
602 |
|
|
TFile *limfile = new TFile((get_directory()+"/limits/limitfile.root").c_str(),"RECREATE");
|
603 |
|
|
TCanvas *limcan = new TCanvas("limcan","Canvas for calculating limits");
|
604 |
|
|
limit_shapes_for_systematic_effect(limfile,"",mcjzb,datajzb,noJES,jzbbins,limcan);
|
605 |
|
|
limit_shapes_for_systematic_effect(limfile,"peakUp",newjzbexpression(mcjzb,jzbpeakerrormc),newjzbexpression(datajzb,jzbpeakerrordata),noJES,jzbbins,limcan);
|
606 |
|
|
limit_shapes_for_systematic_effect(limfile,"peakDown",newjzbexpression(mcjzb,-jzbpeakerrormc),newjzbexpression(datajzb,-jzbpeakerrordata),noJES,jzbbins,limcan);
|
607 |
|
|
limit_shapes_for_systematic_effect(limfile,"JESUp",mcjzb,datajzb,JESup,jzbbins,limcan);
|
608 |
|
|
limit_shapes_for_systematic_effect(limfile,"JESDown",mcjzb,datajzb,JESdown,jzbbins,limcan);
|
609 |
|
|
|
610 |
|
|
prepare_datacard(limfile);
|
611 |
|
|
limfile->Close();
|
612 |
|
|
write_info("prepare_limits","limitfile.root and datacard.txt have been generated. You can now use them to calculate limits!");
|
613 |
|
|
|
614 |
|
|
}
|