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rf803_mcstudy_addons2.C
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1/// \file
2/// \ingroup tutorial_roofit
3/// \notebook -js
4/// 'VALIDATION AND MC STUDIES' RooFit tutorial macro #803
5///
6/// RooMCStudy: Using the randomizer and profile likelihood add-on models
7///
8/// \macro_image
9/// \macro_output
10/// \macro_code
11/// \author 07/2008 - Wouter Verkerke
12
13
14#include "RooRealVar.h"
15#include "RooDataSet.h"
16#include "RooGaussian.h"
17#include "RooConstVar.h"
18#include "RooChebychev.h"
19#include "RooAddPdf.h"
20#include "RooMCStudy.h"
23#include "RooPlot.h"
24#include "TCanvas.h"
25#include "TAxis.h"
26#include "TH1.h"
27#include "TDirectory.h"
28
29using namespace RooFit ;
30
31
32void rf803_mcstudy_addons2()
33{
34 // C r e a t e m o d e l
35 // -----------------------
36
37 // Simulation of signal and background of top quark decaying into
38 // 3 jets with background
39
40 // Observable
41 RooRealVar mjjj("mjjj","m(3jet) (GeV)",100,85.,350.) ;
42
43 // Signal component (Gaussian)
44 RooRealVar mtop("mtop","m(top)",162) ;
45 RooRealVar wtop("wtop","m(top) resolution",15.2) ;
46 RooGaussian sig("sig","top signal",mjjj,mtop,wtop) ;
47
48 // Background component (Chebychev)
49 RooRealVar c0("c0","Chebychev coefficient 0",-0.846,-1.,1.) ;
50 RooRealVar c1("c1","Chebychev coefficient 1", 0.112,-1.,1.) ;
51 RooRealVar c2("c2","Chebychev coefficient 2", 0.076,-1.,1.) ;
52 RooChebychev bkg("bkg","combinatorial background",mjjj,RooArgList(c0,c1,c2)) ;
53
54 // Composite model
55 RooRealVar nsig("nsig","number of signal events",53,0,1e3) ;
56 RooRealVar nbkg("nbkg","number of background events",103,0,5e3) ;
57 RooAddPdf model("model","model",RooArgList(sig,bkg),RooArgList(nsig,nbkg)) ;
58
59
60
61 // C r e a t e m a n a g e r
62 // ---------------------------
63
64 // Configure manager to perform binned extended likelihood fits (Binned(),Extended()) on data generated
65 // with a Poisson fluctuation on Nobs (Extended())
68
69
70
71 // C u s t o m i z e m a n a g e r
72 // ---------------------------------
73
74 // Add module that randomizes the summed value of nsig+nbkg
75 // sampling from a uniform distribution between 0 and 1000
76 //
77 // In general one can randomize a single parameter, or a
78 // sum of N parameters, using either a uniform or a Gaussian
79 // distribution. Multiple randomization can be executed
80 // by a single randomizer module
81
83 randModule.sampleSumUniform(RooArgSet(nsig,nbkg),50,500) ;
84 mcs->addModule(randModule) ;
85
86
87 // Add profile likelihood calculation of significance. Redo each
88 // fit while keeping parameter nsig fixed to zero. For each toy,
89 // the difference in -log(L) of both fits is stored, as well
90 // a simple significance interpretation of the delta(-logL)
91 // using Dnll = 0.5 sigma^2
92
93 RooDLLSignificanceMCSModule sigModule(nsig,0) ;
94 mcs->addModule(sigModule) ;
95
96
97
98 // R u n m a n a g e r , m a k e p l o t s
99 // ---------------------------------------------
100
101 // Run 1000 experiments. This configuration will generate a fair number
102 // of (harmless) MINUIT warnings due to the instability of the Chebychev polynomial fit
103 // at low statistics.
104 mcs->generateAndFit(500) ;
105
106 // Make some plots
107 TH1* dll_vs_ngen = mcs->fitParDataSet().createHistogram("ngen,dll_nullhypo_nsig",-40,-40) ;
108 TH1* z_vs_ngen = mcs->fitParDataSet().createHistogram("ngen,significance_nullhypo_nsig",-40,-40) ;
109 TH1* errnsig_vs_ngen = mcs->fitParDataSet().createHistogram("ngen,nsigerr",-40,-40) ;
110 TH1* errnsig_vs_nsig = mcs->fitParDataSet().createHistogram("nsig,nsigerr",-40,-40) ;
111
112
113 // Draw plots on canvas
114 TCanvas* c = new TCanvas("rf803_mcstudy_addons2","rf802_mcstudy_addons2",800,800) ;
115 c->Divide(2,2) ;
116 c->cd(1) ; gPad->SetLeftMargin(0.15) ; dll_vs_ngen->GetYaxis()->SetTitleOffset(1.6) ; dll_vs_ngen->Draw("box") ;
117 c->cd(2) ; gPad->SetLeftMargin(0.15) ; z_vs_ngen->GetYaxis()->SetTitleOffset(1.6) ; z_vs_ngen->Draw("box") ;
118 c->cd(3) ; gPad->SetLeftMargin(0.15) ; errnsig_vs_ngen->GetYaxis()->SetTitleOffset(1.6) ; errnsig_vs_ngen->Draw("box") ;
119 c->cd(4) ; gPad->SetLeftMargin(0.15) ; errnsig_vs_nsig->GetYaxis()->SetTitleOffset(1.6) ; errnsig_vs_nsig->Draw("box") ;
120
121
122 // Make RooMCStudy object available on command line after
123 // macro finishes
124 gDirectory->Add(mcs) ;
125
126}
127
128
129
130
#define c(i)
Definition: RSha256.hxx:101
const Bool_t kTRUE
Definition: RtypesCore.h:87
#define gDirectory
Definition: TDirectory.h:213
#define gPad
Definition: TVirtualPad.h:286
RooAddPdf is an efficient implementation of a sum of PDFs of the form.
Definition: RooAddPdf.h:29
RooArgSet is a container object that can hold multiple RooAbsArg objects.
Definition: RooArgSet.h:28
Chebychev polynomial p.d.f.
Definition: RooChebychev.h:25
RooDLLSignificanceMCSModule is an add-on modules to RooMCStudy that calculates the significance of a ...
TH2F * createHistogram(const RooAbsRealLValue &var1, const RooAbsRealLValue &var2, const char *cuts="", const char *name="hist") const
Create a TH2F histogram of the distribution of the specified variable using this dataset.
Plain Gaussian p.d.f.
Definition: RooGaussian.h:25
RooMCStudy is a help class to facilitate Monte Carlo studies such as 'goodness-of-fit' studies,...
Definition: RooMCStudy.h:32
const RooDataSet & fitParDataSet()
Return a RooDataSet the resulting fit parameters of each toy cycle.
Definition: RooMCStudy.cxx:949
Bool_t generateAndFit(Int_t nSamples, Int_t nEvtPerSample=0, Bool_t keepGenData=kFALSE, const char *asciiFilePat=0)
Generate and fit 'nSamples' samples of 'nEvtPerSample' events.
Definition: RooMCStudy.cxx:646
void addModule(RooAbsMCStudyModule &module)
Insert given RooMCStudy add-on module to the processing chain of this MCStudy object.
Definition: RooMCStudy.cxx:431
RooRandomizeParamMCSModule is an add-on modules to RooMCStudy that allows you to randomize input gene...
void sampleSumUniform(const RooArgSet &paramSet, Double_t lo, Double_t hi)
Request uniform smearing of sum of parameters in paramSet uniform smearing in range [lo,...
RooRealVar represents a fundamental (non-derived) real valued object.
Definition: RooRealVar.h:36
virtual void SetTitleOffset(Float_t offset=1)
Set distance between the axis and the axis title Offset is a correction factor with respect to the "s...
Definition: TAttAxis.cxx:294
The Canvas class.
Definition: TCanvas.h:31
The TH1 histogram class.
Definition: TH1.h:56
TAxis * GetYaxis()
Definition: TH1.h:317
virtual void Draw(Option_t *option="")
Draw this histogram with options.
Definition: TH1.cxx:2974
return c1
Definition: legend1.C:41
return c2
Definition: legend2.C:14
RooCmdArg Binned(Bool_t flag=kTRUE)
RooCmdArg Extended(Bool_t flag=kTRUE)
RooCmdArg PrintEvalErrors(Int_t numErrors)
RooCmdArg Silence(Bool_t flag=kTRUE)
RooCmdArg FitOptions(const char *opts)