def plot_training_phoeres_with_shape_and_fit(): """Plot the nominal MC photon energy smearing overlayed with the pdf shape and fit.""" canvases.next('TrainingPhoEResWithShapeAndFit') plot = phoERes.frame(roo.Range(-7.5, 5)) plot.SetTitle("Photon energy smearing overlayed with PDF shape (blue) " "and it's parametrized fit (dashed red)") data.plotOn(plot) ## Define model for the photon energy smearing function Ereco/Etrue - 1. phoEResPdf = ParametrizedKeysPdf('phoEResPdf', 'phoEResPdf', phoERes, phoScale, phoRes, data, ROOT.RooKeysPdf.NoMirror, 1.5) ## PDF shape phoEResPdf.shape.plotOn(plot) ## Parametrized fit of the PDF shape phoEResPdf.fitTo(data, roo.Range(-50, 50), roo.PrintLevel(-1)) phoEResPdf.plotOn(plot, roo.LineColor(ROOT.kRed), roo.LineStyle(ROOT.kDashed)) plot.Draw() Latex([ 's_{shape}: %.3f %%' % phoEResPdf.shapemode, 's_{fit}: %.3f #pm %.3f %%' % (phoScale.getVal(), phoScale.getError()), 's_{fit} - s_{shape}: %.4f #pm %.4f %%' % (phoScale.getVal() - phoEResPdf.shapemode, phoScale.getError()), 'r_{shape}: %.3f %%' % phoEResPdf.shapewidth, 'r_{fit}: %.3f #pm %.3f %%' % (phoRes.getVal(), phoRes.getError()), 'r_{fit} - r_{shape}: %.4f #pm %.4f %%' % (phoRes.getVal() - phoEResPdf.shapewidth, phoRes.getError()), 'r_{fit}/r_{shape}: %.4f #pm %.4f' % (phoRes.getVal() / phoEResPdf.shapewidth, phoRes.getError() / phoEResPdf.shapewidth), ], position=(0.2, 0.8)).draw()
def make_resolution_plots(): ''' Makes canvases with resolution plots. ''' global plotters #========================================================================== for cfg in get_resolution_configs()[:]: ## MC, EB, 2011A+B, 1 of 4 statistically independent tests xtitle = 'E_{T}^{#gamma} (GeV)' ytitle = 'E^{#gamma} Resolution (%)' plotter = FitResultPlotter(cfg.sources1, cfg.getters1, xtitle, ytitle, title = 'MC Truth') plotter.getdata() plotter.makegraph() plotter.sources = cfg.sources2 plotter.getters = cfg.getters2 plotter.title = 'MC Fit' plotter.getdata() plotter.makegraph() plotter.sources = cfg.sources3 plotter.getters = cfg.getters3 plotter.title = 'Data Fit' plotter.getdata() plotter.makegraph() canvases.next('c_' + cfg.name).SetGrid() plotter.plotall(title = cfg.title, styles = [20, 25, 26], colors = [ROOT.kBlack, ROOT.kBlue, ROOT.kRed]) plotters.append(plotter)
def plot_nominal_mmgmass_with_shape_and_fit(): """Plot the nominal MC mmg mass data overlayed with the pdf shape and fit.""" canvases.next('NominalMmgMassWithShapeAndFit') plot = mmgMass.frame(roo.Range(75, 105)) plot.SetTitle("m(#mu#mu#gamma) overlayed with PDF shape (blue) " "and it's parametrized fit (dashed red)") data.plotOn(plot) ## Define the mmg mass model. mmgMassPdf = ParametrizedKeysPdf('mmgMassPdf', 'mmgMassPdf', mmgMass, massPeak, massWidth, data, ROOT.RooKeysPdf.NoMirror, 1.5) ## PDF shape mmgMassPdf.shape.plotOn(plot) ## Parametrized fit of the PDF shape mmgMassPdf.fitTo(data, roo.Range(60, 120), roo.PrintLevel(-1)) mmgMassPdf.plotOn(plot, roo.LineColor(ROOT.kRed), roo.LineStyle(ROOT.kDashed)) plot.Draw() sshape = 100 * (mmgMassPdf.shapemode / mZ.getVal() - 1) rshape = 100 * mmgMassPdf.shapewidth / mmgMassPdf.shapemode Latex([ 's_{shape}: %.3f %%' % sshape, 's_{fit}: %.3f #pm %.3f %%' % (massScale.getVal(), massScale.getError()), 's_{fit} - s_{shape}: %.4f #pm %.4f %%' % (massScale.getVal() - sshape, massScale.getError()), 'r_{shape}: %.3f %%' % rshape, 'r_{fit}: %.3f #pm %.3f %%' % (massRes.getVal(), massRes.getError()), 'r_{fit} - r_{shape}: %.4f #pm %.4f %%' % (massRes.getVal() - rshape, massRes.getError()), 'r_{fit}/r_{shape}: %.4f #pm %.4f' % (massRes.getVal() / rshape, massRes.getError() / rshape), ], position=(0.2, 0.8)).draw()
def plot_nominal_and_smeared_mmgmass(): canvases.next('SmearedMMGMass').SetGrid() plot = mmgMass.frame(roo.Range(75, 105)) plot.SetTitle("Nominal and smeared m_{#mu#mu#gamma}") data.plotOn(plot) mmgMassPdf.plotOn(plot, roo.LineColor(ROOT.kBlack)) sdata.plotOn(plot, roo.MarkerColor(ROOT.kRed), roo.LineColor(ROOT.kRed)) # mmgMassSmearPdf.fitTo(sdata) mmgMassSmearPdf.plotOn(plot, roo.LineColor(ROOT.kRed)) plot.Draw() Latex(['s_{0}^{#gamma}: %.2g %%' % phoScaleRef, 'r_{0}^{#gamma}: %.2g %%' % phoResRef, '#mu_{0}: %.3f #pm %.3f GeV' % ( mmgMassPeak.getVal(), mmgMassPeak.getError() ), '#sigma_{0}^{eff}: %.3f #pm %.3f GeV' % ( mmgMassWidth.getVal(), mmgMassWidth.getError() )], position = (0.2, 0.8)).draw() Latex(['s^{#gamma}: %.2g %%' % targets, 'r^{#gamma}: %.2g %%' % targetr, '#mu: %.3f #pm %.3f GeV' % ( mmgMassSmearPeak.getVal(), mmgMassSmearPeak.getError() ), '#sigma^{eff}: %.3f #pm %.3f GeV' % ( mmgMassSmearWidth.getVal(), mmgMassSmearWidth.getError() )], position = (0.65, 0.8), color = ROOT.kRed).draw()
def plot_shape_and_fit(): # Extract the MC truth scale and resolution from MC phoEResPdf.fitTo(data, roo.PrintLevel(-1), roo.SumW2Error(False)) phoScaleRef = phoScale.getVal() phoResRef = phoScale.getVal() # mmgMassPhoSmearE = w.factory('mmgMassPhoSmearE[40, 140]') # phoEResSmear = w.factory('phoEResSmear[-80, 110]') #------------------------------------------------------------------------------ # Plot the nominal MC data overlayed with the pdf shape and fit canvases.next('pkeyspdf_fit') phoERes.setUnit("%") plot = phoERes.frame(roo.Range(-5, 5)) plot.SetTitle('') data.plotOn(plot) phoEResPdf.shape.plotOn(plot) phoEResPdf.plotOn(plot, roo.LineColor(ROOT.kRed), roo.LineStyle(ROOT.kDashed)) plot.Draw() Latex([ 's_{0} = %.3f %%' % phoEResPdf.shapemode, 's_{fit} = %.3f #pm %.3f %%' % (phoScale.getVal(), phoScale.getError()), 's_{fit} - s_{0} = %.3f #pm %.3f %%' % ( phoScale.getVal() - phoEResPdf.shapemode, phoScale.getError() ), 'r_{0} = %.3f %%' % phoEResPdf.shapewidth, 'r_{fit} = %.3f #pm %.3f %%' % (phoRes.getVal(), phoRes.getError()), 'r_{fit}/r_{0} = %.3f #pm %.3f' % ( phoRes.getVal() / phoEResPdf.shapewidth, phoRes.getError() / phoEResPdf.shapewidth), ], position=(0.675, 0.82)).draw()
def plot_training_phoeres_with_shape_and_fit(): """Plot the nominal MC data overlayed with the pdf shape and fit.""" canvases.next('TrainingSampleWithShapeAndFit') plot = phoERes.frame(roo.Range(-7.5, 5)) plot.SetTitle("MC overlayed with PDF shape (blue) and it's parametrized fit" "(dashed red)") data.plotOn(plot) calibrator.w.loadSnapshot('sr0_mctruth') phoScale.setVal(calibrator.s0.getVal()) phoRes.setVal(calibrator.r0.getVal()) phoEResPdf.shape.plotOn(plot) phoEResPdf.plotOn(plot, roo.LineColor(ROOT.kRed), roo.LineStyle(ROOT.kDashed)) plot.Draw() Latex([ 's_{shape}: %.3f %%' % phoEResPdf.shapemode, 's_{fit}: %.3f #pm %.3f %%' % (calibrator.s.getVal(), phoScale.getError()), 's_{fit} - s_{shape}: %.4f #pm %.4f %%' % ( phoScale.getVal() - phoEResPdf.shapemode, phoScale.getError() ), 'r_{shape}: %.3f %%' % phoEResPdf.shapewidth, 'r_{fit}: %.3f #pm %.3f %%' % (phoRes.getVal(), phoRes.getError()), 'r_{fit} - r_{shape}: %.4f #pm %.4f %%' % ( phoRes.getVal() - phoEResPdf.shapewidth, phoRes.getError()), 'r_{fit}/r_{shape}: %.4f #pm %.4f' % ( phoRes.getVal() / phoEResPdf.shapewidth, phoRes.getError() / phoEResPdf.shapewidth), ], position=(0.2, 0.8)).draw()
def make_plot(self): ''' Creates a canvas and draws the histogram on it. ''' canvases.next(self.GetName()) self.DrawCopy() canvases.update()
def make_scale_dependence_plot(): ## Plot the phoEResPdf for various values of the scale canvases.next('ShapeScaleScan').SetGrid() phoRes.setVal(1) plot = phoERes.frame(roo.Range(-6, 8)) latexlabels = [] for i, color in enumerate(colors): scale = -4 + 2*i phoScale.setVal(scale) phoEResPdf.plotOn(plot, roo.LineColor(color), roo.Precision(1e-4)) label = Latex(['s = %d %%' % scale,], position=(0.8, 0.75 - (i+1) * 0.055), textsize=24) label.SetTextColor(color) latexlabels.append(label) # plot.SetTitle('Dependence on Scale') plot.SetTitle('') plot.GetYaxis().SetTitle('Probability Density f(x|s,r) (1/%)') plot.Draw() #Latex(cutlabels, position=(0.2, 0.75)).draw() Latex(['r = 1 %',], position=(0.8, 0.8), textsize=24).draw() for l in latexlabels: l.draw()
def plot_smeared_phoeres_with_fit(): phoEResPdf.fitTo(sdata, roo.PrintLevel(-1), roo.SumW2Error(False), roo.Range(-50, 50)) canvases.next('SmearedSampleWithFit') savtitle = phoERes.GetTitle() phoERes.SetTitle('smeared E_{reco}^{#gamma}/E_{gen}^{#gamma} - 1') plot = phoERes.frame(roo.Range(-30, 30)) phoERes.SetTitle(savtitle) plot.SetTitle("Smeared MC with paremetrized fit") sdata.plotOn(plot) phoEResPdf.plotOn(plot) # phoEResPdf.paramOn(plot) plot.Draw() Latex([ 's_{target}: %.3g %%' % targets, 's_{fit}: %.3g #pm %.3g %%' % (phoScale.getVal(), phoScale.getError()), 's_{fit} - s_{target}: %.3g #pm %.3g %%' % ( phoScale.getVal() - targets, phoScale.getError() ), 'r_{target}: %.3g %%' % targetr, 'r_{fit}: %.3g #pm %.3g %%' % (phoRes.getVal(), phoRes.getError()), 'r_{fit} - r_{target}: %.3g #pm %.3g %%' % ( phoRes.getVal() - targetr, phoRes.getError() ), 'r_{fit}/r_{target}: %.3g #pm %.3g %%' % ( phoRes.getVal() / targetr, phoRes.getError() / targetr ), ], position=(0.2, 0.75)).draw()
def plot_fit_to_real_data(label): """ Plot fit to real data for a dataset specified by the label: "data" (full 2011A+B), "2011A" or "2011B". """ # mmgMass.setRange('plot', 70, 110) mmgMass.setBins(80) plot = mmgMass.frame(roo.Range("plot")) if label == "data": title_start = "2011A+B" else: title_start = label plot.SetTitle("%s, %s" % (title_start, latex_title)) data[label].plotOn(plot) pm.plotOn(plot, roo.Range("plot"), roo.NormRange("plot")) if use_exp_bkg: pm.plotOn( plot, roo.Range("plot"), roo.NormRange("plot"), roo.Components("*zj*,*exp*"), roo.LineStyle(ROOT.kDashed) ) else: pm.plotOn(plot, roo.Range("plot"), roo.NormRange("plot"), roo.Components("*zj*"), roo.LineStyle(ROOT.kDotted)) # pm.plotOn(plot, roo.Range('plot'), roo.NormRange('plot'), # roo.Components('bkg*'), roo.LineStyle(ROOT.kDotted)) canvases.next(name + "_" + label).SetGrid() plot.Draw()
def make_resolution_scan_plot(): ## Plot the phoEResPdf for various values of the effective sigma canvases.next('ShapeWidthScan').SetGrid() plot = phoERes.frame(roo.Range(-7, 8)) phoScale.setVal(0) latexlabels = [] for i, color in enumerate(colors): res = 1./(1. + 0.25*(2-i)) phoRes.setVal(res) phoEResPdf.plotOn(plot, roo.LineColor(color), roo.Precision(1e-4)) label = Latex(['r = %.2g %%' % res,], position=(0.75, 0.75 - (i+1) * 0.055), textsize=24) label.SetTextColor(color) latexlabels.append(label) phoScale.setVal(-4) for res, color in zip([1./(1. + 0.25*(2-i)) for i in range(5)], colors): phoRes.setVal(res) phoEResPdf.plotOn(plot, roo.LineColor(color)) phoScale.setVal(2) for res, color in zip([1./(1. + 0.25*(2-i)) for i in range(5)], colors): phoRes.setVal(res) phoEResPdf.plotOn(plot, roo.LineColor(color)) #plot.SetTitle('Dependence on Scale and Resolution') plot.SetTitle('') plot.GetYaxis().SetTitle('Probability Density f(x|s,r) (1/%)') plot.Draw() # Latex(cutlabels, position=(0.2, 0.75)).draw() Latex(['s = -4, 0, 2 %',], position=(0.75, 0.8), textsize=24).draw() for l in latexlabels: l.draw()
def plot_t2(): ## Plot fT2(t2|s,r) fitted to training data. canvases.next('t2pdf').SetGrid() t.setRange(*t2range) t.setVal(0) t.SetTitle('log(E_{reco}^{#gamma}/E_{gen}^{#gamma})') phoScale.setVal(t2pdf.s0val) phoRes.setVal(t2pdf.r0val) t2pdf.fitTo(t2data, roo.Range(ROOT.TMath.Log(0.5), ROOT.TMath.Log(1.5)), roo.NumCPU(8), roo.SumW2Error(True)) myrange = (math.log(1 + 0.01 * (t2pdf.s0val - 5*t2pdf.r0val)), math.log(1 + 0.01 * (t2pdf.s0val + 5*t2pdf.r0val))) plot = t.frame(roo.Range(*myrange)) t2data.plotOn(plot) t2pdf.plotOn(plot) plot.Draw() Latex([ 's_{shape}: %.3f %%' % t2pdf.s0val, 's_{fit}: %.3f #pm %.3f %%' % (phoScale.getVal(), phoScale.getError()), 's_{fit} - s_{shape}: %.4f #pm %.4f %%' % ( phoScale.getVal() - t2pdf.s0val, phoScale.getError() ), 'r_{shape}: %.3f %%' % t2pdf.r0val, 'r_{fit}: %.3f #pm %.3f %%' % (phoRes.getVal(), phoRes.getError()), 'r_{fit}/r_{shape}: %.4f #pm %.4f' % ( phoRes.getVal() / t2pdf.r0val, phoRes.getError() / t2pdf.r0val), ], position=(0.2, 0.75)).draw() plots.append(plot)
def plot_xt1_proj_x(): ## Plot fXT1(x, t1) projected on x axis canvases.next('xt1_proj_x') plot = mmMass.frame() xt1data.plotOn(plot) xt1pdf.plotOn(plot) plot.Draw() plots.append(plot)
def plot_xt1_proj_t1(): ## Plot fXT1(x, t1) projected on t1 axis canvases.next('xt1_proj_t1') t.setRange(*t1range) t.SetTitle('log(m_{#mu#mu#gamma,E_{gen}^{#gamma}}^{2} - m_{#mu#mu}^{2})') plot = t.frame() xt1data.plotOn(plot) xt1pdf.plotOn(plot) plot.Draw() plots.append(plot)
def fit_and_plot(pdf): canvases.next(pdf.GetName()) plot = x.frame() data.plotOn(plot) print '+++ Fitting', pdf.GetName() w.var('m').setVal(m0) w.var('s').setVal(s0) pdf.fitTo(data, roo.Timer()) pdf.plotOn(plot) pdf.paramOn(plot) plot.Draw() check_timer('fit_' + pdf.GetName())
def make_plots(configurations): """ For each configuration in the given list, overlays the graphs of scale versus pt for all sets of measurements specified. These measurements are either from the true or the PHOSPHOR fit. """ for cfg in configurations[:]: ## Only check EE 2011AB # if (not 'EE_lowR9' in cfg.name) or (not 'AB' in cfg.name): # continue ### Only check 2011AB # if not 'AB' in cfg.name: # continue ## MC, EB, 2011A+B, 1 of 4 statistically independent tests plotter = FitResultPlotter( cfg.sources[0], cfg.getters[0], cfg.xtitle, cfg.ytitle, title=cfg.titles[0], name=cfg.name, xasymmerrors=True, yasymmerrors=True, colors=[ROOT.kBlack], ) for isources, igetters, ititle in zip(cfg.sources, cfg.getters, cfg.titles): plotter.sources = isources plotter.getters = igetters plotter.title = ititle plotter.getdata() plotter.makegraph() plotter.graph.Fit("pol1") canvases.next("c_" + cfg.name).SetGrid() plotter.graph.Draw("ap") plotter.graph.GetXaxis().SetTitle(cfg.xtitle) plotter.graph.GetYaxis().SetTitle(cfg.ytitle) # if 'EE_highR9' in cfg.name: # plotter.plotall(title = cfg.title, ##xrange = (0, 10), ##yrange = (0, 10), # legend_position = 'topright') # else: # plotter.plotall(title = cfg.title, ##xrange = (5, 55), # legend_position = 'topright') # plotter.graphs[0].Draw('p') canvases.canvases[-1].Modified() canvases.canvases[-1].Update() canvases.update() plotters.append(plotter)
def plot_nominal_and_smeared_mmgmass(): canvases.next('SmearedMMGMass').SetGrid() plot = mmgMass.frame(roo.Range(76, 106)) plot.SetTitle("Nominal (black) and smeared (red) mmg mass") data.plotOn(plot) datasmeared.plotOn(plot, roo.MarkerColor(ROOT.kRed), roo.LineColor(ROOT.kRed)) plot.Draw() Latex([ 's_{0}: %.2g %%, s: %.2g %%' % (phoScaleRef, targets), 'r_{0}: %.2g %%, r: %.2g %%' % (phoResRef, targetr) ], position=(0.2, 0.8)).draw()
def plot_smeared_phoeres_with_fit(): phoEResPdf.fitTo(datasmeared, roo.PrintLevel(-1), roo.SumW2Error(False)) canvases.next('SmearedSampleWithFit') plot = phoERes.frame(roo.Range(-30, 30)) plot.SetTitle("Smeared MC with paremetrized fit") datasmeared.plotOn(plot) phoEResPdf.plotOn(plot) phoEResPdf.paramOn(plot) plot.Draw() Latex([ 'target s: %.3g %%' % targets, 'target r: %.3g %%' % targetr, ], position=(0.2, 0.75)).draw()
def make_plots(configurations): ''' For each configuration in the given list, overlays the graphs of scale versus pt for all sets of measurements specified. These measurements are either from the true or the PHOSPHOR fit. ''' for cfg in configurations[:]: ## Only check EE 2011AB #if (not 'EE_lowR9' in cfg.name) or (not 'AB' in cfg.name): #continue ### Only check 2011AB #if not 'AB' in cfg.name: #continue ## MC, EB, 2011A+B, 1 of 4 statistically independent tests plotter = FitResultPlotter(cfg.sources[0], cfg.getters[0], cfg.xtitle, cfg.ytitle, title = cfg.titles[0], name=cfg.name, yasymmerrors=True) for isources, igetters, ititle in zip(cfg.sources, cfg.getters, cfg.titles): plotter.sources = isources plotter.getters = igetters plotter.title = ititle plotter.getdata() plotter.makegraph() plotter.plot() canvases.next('c_' + cfg.name).SetGrid() ## Check if there is a problem with the ranges # yrange = 'auto' yrange = (-10, 10) for graph in plotter.graphs: if (graph.GetHistogram().GetMaximum() - graph.GetHistogram().GetMinimum()) < 0.1: print cfg.name, graph.GetTitle(), 'min:', graph.GetMaximum(), print ', max:', graph.GetMaximum yrange = (-5, 10) plotter.plotall(title = cfg.title, xrange = (5, 55), yrange = yrange, legend_position = 'topright') #plotter.graphs[0].Draw('p') canvases.canvases[-1].Modified() canvases.canvases[-1].Update() canvases.update() plotters.append(plotter)
def get_canvas(): ''' Returns the canvas based on the name. ''' c1 = canvases.next(name, name) c1.SetTopMargin(0.1) return c1
def plot_mmgmass_with_fit_for_multiple_smearings(name, stargets, rtargets, colors, plotrange=(60, 105)): """Plot the smeared mmg mass for a number of different smearings.""" canvases.next(name).SetGrid() mmgMass.setRange('plot', *plotrange) plot = mmgMass.frame(roo.Range('plot')) plot.SetTitle("") slabels = [] rlabels = [] ## Loop over the various smearings. for starget, rtarget, color in zip(stargets, rtargets, colors): mydata = calibrator.get_smeared_data(starget, rtarget) model = ParametrizedKeysPdf('model', 'model', mmgMass, mmgMassSmearPeak, mmgMassSmearWidth, mydata, ROOT.RooKeysPdf.NoMirror, 1.5) model.fitTo(mydata, roo.PrintLevel(-1), roo.Range(60, 120), roo.SumW2Error(False)) mydata.plotOn(plot, roo.LineColor(color), roo.MarkerColor(color)) model.plotOn(plot, roo.LineColor(color), roo.Range('plot'), roo.NormRange('plot')) slabels.append([ 's\' = % 3.f %%, ' % starget + '#Delta m_{#mu#mu#gamma} = %.2f #pm %.2f %%' % ( 100 * (mmgMassSmearPeak.getVal() / 91.2 - 1.), 100 * mmgMassSmearPeak.getError() / 91.2 ), ]) rlabels.append([ 'r\' = %.1f %%, ' % rtarget + '#sigma_{eff}/#mu(m_{\mu\mu\gamma}) = % .2f #pm %.2f %%' % ( 100 * mmgMassSmearWidth.getVal() / mmgMassSmearPeak.getVal(), 100 * mmgMassSmearWidth.getError() / mmgMassSmearPeak.getVal(), ), ]) ## End of loop over the various smearings. plot.Draw() for i, (labels, color) in enumerate(zip(slabels, colors)): latex = Latex(labels, position=(0.18, 0.85 - i*0.055)) latex.SetTextColor(color) latex.draw() for i, (labels, color) in enumerate(zip(rlabels, colors)): latex = Latex(labels, position=(0.18, 0.85 - (len(slabels)+1) * 0.055 - i*0.055)) latex.SetTextColor(color) latex.draw()
def plot_xy_proj_y(): 'Plot fXY(x,y|s,r) projected on mmgMass.' c1 = canvases.next('xy_proj_y').SetGrid() plot = mmgMass.frame(roo.Range(75, 105)) # plot = mmgMass.frame() data.plotOn(plot) xypdf.plotOn(plot) plot.Draw()
def plot_xy_proj_x(): 'Plot fXY(x,y|s,r) projected on mmMass.' c1 = canvases.next('xy_proj_x').SetGrid() # plot = mmMass.frame(roo.Range(40, 90)) plot = mmMass.frame() data.plotOn(plot) xypdf.plotOn(plot) plot.Draw()
def plot_mmgmass_for_multiple_smearings(name, stargets, rtargets, colors, plotrange=(76, 106)): canvases.next(name).SetGrid() plot = mmgMass.frame(roo.Range(*plotrange)) plot.SetTitle("MC for multiple smearing scenarious") multilabels = [] ## Loop over the various smearings. for starget, rtarget, color in zip(stargets, rtargets, colors): mydata = calibrator.get_smeared_data(starget, rtarget) mydata.plotOn(plot, roo.LineColor(color), roo.MarkerColor(color)) multilabels.append(['s_{target}: %.1f %%' % starget, 'r_{target}: %.1f %%'% rtarget,]) ## End of loop over the various smearings. plot.Draw() for i, (labels, color) in enumerate(zip(multilabels, colors)): latex = Latex(labels, position=(0.2, 0.85 - i*0.11)) latex.SetTextColor(color) latex.draw()
def plotxy(pdf, xyexpr='x:y'): h_pdf = pdf.createHistogram(xyexpr) h_pdf.SetLineColor(ROOT.kBlue) xname, yname = xyexpr.split(':') for xbin in range(h_pdf.GetNbinsX() + 1): for ybin in range(h_pdf.GetNbinsY() + 1): xval = h_pdf.GetXaxis().GetBinCenter(xbin) yval = h_pdf.GetYaxis().GetBinCenter(ybin) w.var(xname).setVal(xval) w.var(yname).setVal(yval) if xval < w.var(xname).getMin() or w.var(xname).getMax() < xval: h_pdf.SetBinContent(h_pdf.GetBin(xbin, ybin), 0) if yval < w.var(yname).getMin() or w.var(yname).getMax() < yval: h_pdf.SetBinContent(h_pdf.GetBin(xbin, ybin), 0) canvases.next(h_pdf.GetName()) h_pdf.Draw('surf') canvases.next(h_pdf.GetName() + '_cont1') h_pdf.Draw('cont1')
def plotxy(pdf, xyexpr = 'x:y'): h_pdf = pdf.createHistogram(xyexpr) h_pdf.SetLineColor(ROOT.kBlue) xname, yname = xyexpr.split(':') for xbin in range(h_pdf.GetNbinsX() + 1): for ybin in range(h_pdf.GetNbinsY() + 1): xval = h_pdf.GetXaxis().GetBinCenter(xbin) yval = h_pdf.GetYaxis().GetBinCenter(ybin) w.var(xname).setVal(xval) w.var(yname).setVal(yval) if xval < w.var(xname).getMin() or w.var(xname).getMax() < xval: h_pdf.SetBinContent(h_pdf.GetBin(xbin, ybin), 0) if yval < w.var(yname).getMin() or w.var(yname).getMax() < yval: h_pdf.SetBinContent(h_pdf.GetBin(xbin, ybin), 0) canvases.next(h_pdf.GetName()) h_pdf.Draw('surf') canvases.next(h_pdf.GetName() + '_cont1') h_pdf.Draw('cont1')
def plot_xy(xname, yname, filemask, xtype='var', ytype='var'): filename = filemask % ptbinedges[0] ## Mass scale vs photon scale frp = FitResultPlotter( sources = sources(filename, wsname), getters = xygetters(xname, yname, xtype, ytype), xtitle = axistitles[xname], ytitle = axistitles[yname], title = 'Dummy Legend Entry', ) for ptrange in ptbinedges: filename = filemask % ptrange frp.sources = sources(filename, wsname) frp.title = 'E_{T}^{#gamma} #in [%d, %d] GeV' % ptrange frp.getdata() frp.makegraph() canvases.next(yname + '_vs_' + xname).SetGrid() frp.plotall(title = ptitle) frps.append(frp)
def plot_fit_to_real_data(label): ''' Plot fit to real data for a dataset specified by the label: "data" (full 2011A+B), "2011A" or "2011B". ''' # mmgMass.setRange('plot', 70, 110) mmgMass.setBins(80) plot = mmgMass.frame(roo.Range('plot')) if label == 'data': title_start = '2011A+B' else: title_start = label plot.SetTitle('%s, %s' % (title_start, latex_title)) data[label].plotOn(plot) pm.plotOn(plot, roo.Range('plot'), roo.NormRange('plot')) pm.plotOn(plot, roo.Range('plot'), roo.NormRange('plot'), roo.Components('*zj*'), roo.LineStyle(ROOT.kDashed)) canvases.next(name + '_' + label).SetGrid() plot.Draw()
def plot_xy_slice_y(): 'Plot fXY(x,y|s,r) slice at mmMass = [55, 60, 65, 70, 75] GeV.' c1 = canvases.next('xy_slice_y').SetGrid() plot = mmgMass.frame() for mval, color in zip( [45, 50, 55, 60, 65, 70, 75, 80], 'Red Yellow Orange Spring Green Magenta Blue Black'.split() ): mmMass.setVal(mval) xypdf.plotOn(plot, roo.LineColor(getattr(ROOT, 'k' + color))) plot.Draw()
def plot_xy_slice_x(): 'Plot fXY(x,y|s,r) slice at mmgMass values.' c1 = canvases.next('xy_slice_x').SetGrid() plot = mmMass.frame() for mval, color in zip( [70, 75, 80, 85, 90, 95, 100, 105], 'Red Yellow Orange Spring Green Magenta Blue Black'.split() ): mmgMass.setVal(mval) xypdf.plotOn(plot, roo.LineColor(getattr(ROOT, 'k' + color))) plot.Draw()
def make_scale_plots(configurations): ''' For each configuration in the given list, overlays the graphs of scale versus pt for all sets of measurements specified. These measurements are either from the true or the PHOSPHOR fit. ''' for cfg in configurations[:2]: ## Only check EE 2011AB #if (not 'EE_lowR9' in cfg.name) or (not 'AB' in cfg.name): #continue ### Only check 2011AB #if not 'AB' in cfg.name: #continue ## MC, EB, 2011A+B, 1 of 4 statistically independent tests plotter = FitResultPlotter(cfg.sources[1], cfg.getters_true[1], cfg.xtitle, cfg.ytitle, title = 'MC Truth 1', name=cfg.name) for i in range(1,5): plotter.sources = cfg.sources[i] plotter.getters = cfg.getters_true[i] plotter.title = 'MC Truth %d' % i plotter.getdata() plotter.makegraph() for i in range(1,5): plotter.sources = cfg.sources[i] plotter.getters = cfg.getters_fit[i] plotter.title = 'MC Fit %d' % i plotter.getdata() plotter.makegraph() canvases.next('c_' + cfg.name).SetGrid() plotter.plotall(title = cfg.title, xrange = (0, 80), legend_position = 'topright') plotter.graphs[0].Draw('p') canvases.canvases[-1].Modified() canvases.canvases[-1].Update() canvases.update() plotters.append(plotter)
def plot_sanity_checks(data): pdfname = '_'.join(['bananaPdf', data.GetName()]) pdf = ROOT.RooNDKeysPdf(pdfname, pdfname, ROOT.RooArgList(mmMass, mmgMass), data, "a", 1.5) canvases.next(pdf.GetName() + '_mmgMassProj') plot = mmgMass.frame(roo.Range(60, 120)) data.plotOn(plot) pdf.plotOn(plot) plot.Draw() canvases.next(pdf.GetName() + '_mmMassProj') plot = mmMass.frame(roo.Range(10, 120)) data.plotOn(plot) pdf.plotOn(plot) plot.Draw() canvases.next(pdf.GetName()).SetGrid() h_pdf = pdf.createHistogram('h_' + pdf.GetName(), mmMass, roo.Binning(40, 40, 80), roo.YVar(mmgMass, roo.Binning(40, 70, 110))) h_pdf.Draw("cont1") canvases.next(data.GetName()).SetGrid() h_data = data.createHistogram(mmMass, mmgMass, 130, 100, '', 'h_' + data.GetName()) h_data.GetXaxis().SetRangeUser(40, 80) h_data.GetYaxis().SetRangeUser(70, 110) h_data.Draw("cont1") canvases.next('_'.join([pdf.GetName(), 'mmgMassSlices'])) plot = mmgMass.frame(roo.Range(60, 120)) for mmmassval, color in zip([55, 60, 65, 70], 'Red Orange Green Blue'.split()): mmMass.setVal(mmmassval) color = getattr(ROOT, 'k' + color) pdf.plotOn(plot, roo.LineColor(color)) plot.Draw() canvases.update()
def plot_nominal_mmgmass_with_shape_and_fit(): """Plot the nominal MC mmg mass data overlayed with the pdf shape and fit.""" canvases.next('NominalMmgMassWithShapeAndFit') plot = mmgMass.frame(roo.Range(75, 105)) plot.SetTitle("m(#mu#mu#gamma) overlayed with PDF shape (blue) " "and it's parametrized fit (dashed red)") data.plotOn(plot) ## Define the mmg mass model. mmgMassPdf = ParametrizedKeysPdf('mmgMassPdf', 'mmgMassPdf', mmgMass, massPeak, massWidth, data, ROOT.RooKeysPdf.NoMirror, 1.5) ## PDF shape mmgMassPdf.shape.plotOn(plot) ## Parametrized fit of the PDF shape mmgMassPdf.fitTo(data, roo.Range(60, 120), roo.PrintLevel(-1)) mmgMassPdf.plotOn(plot, roo.LineColor(ROOT.kRed), roo.LineStyle(ROOT.kDashed)) plot.Draw() sshape = 100 * (mmgMassPdf.shapemode / mZ.getVal() - 1) rshape = 100 * mmgMassPdf.shapewidth / mmgMassPdf.shapemode Latex([ 's_{shape}: %.3f %%' % sshape, 's_{fit}: %.3f #pm %.3f %%' % (massScale.getVal(), massScale.getError()), 's_{fit} - s_{shape}: %.4f #pm %.4f %%' % ( massScale.getVal() - sshape, massScale.getError() ), 'r_{shape}: %.3f %%' % rshape, 'r_{fit}: %.3f #pm %.3f %%' % ( massRes.getVal(), massRes.getError() ), 'r_{fit} - r_{shape}: %.4f #pm %.4f %%' % ( massRes.getVal() - rshape, massRes.getError()), 'r_{fit}/r_{shape}: %.4f #pm %.4f' % ( massRes.getVal() / rshape, massRes.getError() / rshape), ], position=(0.2, 0.8)).draw()
def plot_phoeres_with_fit_for_multiple_smearings(name, stargets, rtargets, colors, plotrange=(-30, 30)): """Plot the smeared photon energy response for a number of different smearings.""" canvases.next(name).SetGrid() phoERes.setRange('plot', *plotrange) plot = phoERes.frame(roo.Range('plot')) #plot.SetTitle("MC with paremetrized fit for multiple smearing scenarious") plot.SetTitle("") slabels = [] rlabels = [] ## Loop over the various smearings. for starget, rtarget, color in zip(stargets, rtargets, colors): mydata = calibrator.get_smeared_data(starget, rtarget) phoEResPdf.fitTo(mydata, roo.PrintLevel(-1), roo.SumW2Error(False)) mydata.plotOn(plot, roo.LineColor(color), roo.MarkerColor(color)) phoEResPdf.plotOn(plot, roo.LineColor(color), roo.Range('plot'), roo.NormRange('plot')) slabels.append([ 's\' = % 3.f %%, #Delta s_{fit} = % .2f #pm %.2f %%' % ( starget, phoScale.getVal() - starget, phoScale.getError() ), ]) rlabels.append([ 'r\' = %3.1f %%, #Delta r_{fit} = % .2f #pm %.2f %%' % ( rtarget, phoRes.getVal() - rtarget, phoRes.getError() ), ]) ## End of loop over the various smearings. plot.Draw() for i, (labels, color) in enumerate(zip(slabels, colors)): latex = Latex(labels, position=(0.18, 0.85 - i*0.055)) latex.SetTextColor(color) latex.draw() for i, (labels, color) in enumerate(zip(rlabels, colors)): latex = Latex(labels, position=(0.18, 0.85 - (len(slabels) + 1) * 0.055 - i * 0.055)) latex.SetTextColor(color) latex.draw()
def plot_training_phoeres_with_shape_and_fit(): canvases.next('TrainingSampleWithShapeAndFit') plot = phoERes.frame(roo.Range(-7.5, 7.5)) plot.SetTitle( "MC overlayed with PDF shape (blue) and it's parametrized fit" "(dashed red)") data.plotOn(plot) phoEResPdf.shape.plotOn(plot) phoEResPdf.plotOn(plot, roo.LineColor(ROOT.kRed), roo.LineStyle(ROOT.kDashed)) plot.Draw() Latex([ 's_{shape}: %.3f %%' % phoEResPdf.shapemode, 's_{fit}: %.3f #pm %.3f %%' % (phoScale.getVal(), phoScale.getError()), 's_{fit} - s_{shape}: %.4f #pm %.4f' % (phoScale.getVal() - phoEResPdf.shapemode, phoScale.getError()), 'r_{shape}: %.3f %%' % phoEResPdf.shapewidth, 'r_{fit}: %.3f #pm %.3f %%' % (phoRes.getVal(), phoRes.getError()), 'r_{fit}/r_{shape}: %.4f #pm %.4f' % (phoRes.getVal() / phoEResPdf.shapewidth, phoRes.getError() / phoEResPdf.shapewidth), ], position=(0.2, 0.75)).draw()
def plot_multiple_models(): linestyles = [ ROOT.kDashed, ROOT.kSolid, ROOT.kDotted, #ROOT.kDashDotted, #ROOT.kSolid ] colors = [ ROOT.kRed + 1, ROOT.kBlack, ROOT.kBlue + 1, ] build_multiple_models() canvases.next('rho_scan') phoERes.setUnit("%") plot = phoERes.frame(roo.Range(-5, 5)) plot.SetTitle("") data.plotOn(plot) for i, model in enumerate(models): model.shape.plotOn(plot, roo.LineColor(colors[i]), roo.LineStyle(linestyles[i])) plot.Draw()
def plot_training_phoeres_with_shape_and_fit(): """Plot the nominal MC photon energy smearing overlayed with the pdf shape and fit.""" canvases.next('TrainingPhoEResWithShapeAndFit') plot = phoERes.frame(roo.Range(-7.5, 5)) plot.SetTitle("Photon energy smearing overlayed with PDF shape (blue) " "and it's parametrized fit (dashed red)") data.plotOn(plot) ## Define model for the photon energy smearing function Ereco/Etrue - 1. phoEResPdf = ParametrizedKeysPdf('phoEResPdf', 'phoEResPdf', phoERes, phoScale, phoRes, data, ROOT.RooKeysPdf.NoMirror, 1.5) ## PDF shape phoEResPdf.shape.plotOn(plot) ## Parametrized fit of the PDF shape phoEResPdf.fitTo(data, roo.Range(-50, 50), roo.PrintLevel(-1)) phoEResPdf.plotOn(plot, roo.LineColor(ROOT.kRed), roo.LineStyle(ROOT.kDashed)) plot.Draw() Latex([ 's_{shape}: %.3f %%' % phoEResPdf.shapemode, 's_{fit}: %.3f #pm %.3f %%' % (phoScale.getVal(), phoScale.getError()), 's_{fit} - s_{shape}: %.4f #pm %.4f %%' % ( phoScale.getVal() - phoEResPdf.shapemode, phoScale.getError() ), 'r_{shape}: %.3f %%' % phoEResPdf.shapewidth, 'r_{fit}: %.3f #pm %.3f %%' % (phoRes.getVal(), phoRes.getError()), 'r_{fit} - r_{shape}: %.4f #pm %.4f %%' % ( phoRes.getVal() - phoEResPdf.shapewidth, phoRes.getError()), 'r_{fit}/r_{shape}: %.4f #pm %.4f' % ( phoRes.getVal() / phoEResPdf.shapewidth, phoRes.getError() / phoEResPdf.shapewidth), ], position=(0.2, 0.8)).draw()
def plot_quantiles(self, granularity=100): ''' Plots the quantile curve. ''' ## Calculate the quantiles if need be if not hasattr(self, 'quantiles'): self.get_quantiles(granularity) canvas = canvases.next(self.GetName() + '_quant') canvas.SetGrid() self.quantiles.Draw('al') ## Decorate the axis self.quantiles.GetXaxis().SetTitle('Fraction of %s (%%)' % self.GetYaxis().GetTitle()) self.quantiles.GetYaxis().SetTitle(self.GetXaxis().GetTitle()) self.quantiles.GetYaxis().SetRangeUser(10., self.quantiles.Eval(95.)) canvases.update()
def draw_plot(self, frame): ## Draw the plot on a canvas #print "## Draw the plot on a canvas" canvases.wwidth = 600 canvases.wheight = 600 canvas = canvases.next(self.name) canvas.SetGrid() canvas.SetLeftMargin(0.15) canvas.SetTopMargin(0.1) frame.GetYaxis().SetTitleOffset(1.0) frame.GetYaxis().SetTitle('E_{#gamma} Resolution ' '#sigma_{eff}/E (%)') if self.yrange: frame.GetYaxis().SetRangeUser(*self.yrange) frame.Draw() canvas.RedrawAxis('g') canvases.update()
ROOT.kRed, ROOT.kBlack, ROOT.kBlue, ], ltitles=['Spring11 MC', 'Summer11 MC', 'Winter11 MC'], drawopts='e0 e0hist e0'.split(), markerstyles=[20, 21, 22], normalize_to_unit_area=True, legendkwargs=dict(position=(0.2, 0.9, 0.475, 0.7)), labels_layout=(0.2, 0.6), ) plots.append(plot) #### Meat c1 = canvases.next(plot.name) plot.draw() c1.SetGrid() c1.RedrawAxis() c1.Update() ## Plot Endcaps plot = plot.clone(name='r9_EE') plots.append(plot) plot.cuts.remove('isEB') plot.cuts.append('!isEB') plot.labels.remove('barrel') plot.labels.append('endcaps') c1 = canvases.next(plot.name) plot.draw() c1.SetGrid()
## End of main() ##------------------------------------------------------------------------------ sw = ROOT.TStopwatch() sw.Start() init() get_data() phoEResPdf = ParametrizedKeysPdf('phoEResPdf', 'phoEResPdf', phoERes, phoScale, phoRes, data, ROOT.RooKeysPdf.NoMirror, 1.5) phoEResPdf.fitTo(data, roo.Range(-50, 50)) canvases.next('phoEResPdf').SetGrid() plot = phoERes.frame(roo.Range(-10, 10)) data.plotOn(plot) phoEResPdf.plotOn(plot) phoEResPdf.paramOn(plot) plot.Draw() t = w.factory('t[0,-1,1]') t.SetTitle('log(E_{reco}^{#gamma}/E_{gen}^{#gamma})') tfunc = w.factory('expr::tfunc("log(0.01 * phoERes + 1)", {phoERes})') tfunc.SetName('t') data.addColumn(tfunc) ## Build the model for log(Ereco/Egen) ft2(t2|r,s) t2pdf = LogPhoeresKeysPdf('t2pdf', 't2pdf',
) frp.getdata() frp.makegraph() ## New Baseline frp.sources = zip(cfg.filenames, cfg.wsnames, cfg.sreco_snapshots) frp.getters = var_vs_pt('#Deltas') frp.title = 'Baseline' frp.getdata() frp.makegraph() ## True frp.sources = zip(cfg.filenames, cfg.wsnames, cfg.strue_snapshots) frp.getters = var_vs_pt('#Deltas') frp.title = 'MC Truth' frp.getdata() frp.makegraph() ## Compare New Baseline, MC PDF and MC truth scale canvases.next('s_' + cfg.name).SetGrid() frp.plotall(title=cfg.title, styles=[20, 25, 22], colors=[kBlue, kRed, kBlack]) plotters.append(frp) ## end of loop over cfgs if __name__ == '__main__': import user
## Make the pull plots defaultp = pull.frame() binp = pull.frame() medianp = pull.frame() pdgp = pull.frame() defaultp.SetTitle('Default RooFit: Any Bin Content, Interpolate Bin Center') binp.SetTitle('Bin Content > %d, Interpolate Bin Center' % minBinContent) medianp.SetTitle('Bin Content > %d, Interpolate Bin Median' % minBinContent) pdgp.SetTitle('(Almost) PDG: Bin Content > %d, Integrate over Bin' % minBinContent) ## Make the canvas canvases.wwidth = 800 canvases.wheight = 800 c1 = canvases.next('Fit_Examples') c1.Divide(2, 3) ## Display the plot with y log scale for i, p, logy in zip([1, 2, 3, 4, 5, 6], [ log_plot, lin_plot, log_plot_bins, lin_plot_bins, log_plot_medians, lin_plot_medians ], [True, False, True, False, True, False]): c1.cd(i) if logy: ROOT.gPad.SetLogy() p.Draw() c1.Update() canvases.wwidth = 800
't2pdf', phoERes, t, phoScale, phoRes, data, rho=1.5) ## Build the model for fT(t|s,r) = fT1(t1) * fT2(t2|s,r) t.setRange(5, 10) t.setBins(1000, "cache") tpdf = ROOT.RooFFTConvPdf('tpdf', 'tpdf', t, t1pdf, t2pdf) tpdf.setBufferFraction(0.1) ## Plot fT1(t1) with training data. canvases.next('t1pdf').SetGrid() t.setRange(5, 10) t.SetTitle('log(m_{#mu#mu#gamma,E_{gen}^{#gamma}}^{2} - m_{#mu#mu}^{2})') plot = t.frame(roo.Range(6, 9)) t1data.plotOn(plot) t1pdf.shape.plotOn(plot) t1pdf.plotOn(plot, roo.LineColor(ROOT.kRed), roo.LineStyle(ROOT.kDashed)) plot.Draw() Latex([ 's_{shape}: %.3f' % t1pdf.shapemode, 's_{fit}: %.3f #pm %.3f' % (t1mode.getVal(), t1mode.getError()), 's_{fit} - s_{shape}: %.4f #pm %.4f' % (t1mode.getVal() - t1pdf.shapemode, t1mode.getError()), 'r_{shape}: %.3f' % t1pdf.shapewidth, 'r_{fit}: %.3f #pm %.3f' % (t1width.getVal(), t1width.getError()), 'r_{fit} - r_{shape}: %.4f #pm %.4f' %
def test_substituting_for_mmgMassPhoGenE(): pdfname = '_'.join(['pdf_mmMass_mmgMassPhoGenE', data.GetName()]) pdf_mmMass_mmgMassPhoGenE = ROOT.RooNDKeysPdf( pdfname, pdfname, ROOT.RooArgList(mmMass, mmgMassPhoGenE), data, "a", 1.5) ## Test substituting for mmgMassPhoGenE ## This formula is approximate for s = phoERes << 1 ## 1/(1+s) - 1 ~ -s ## chachebins = ROOT.RooUniformBinning(-10, 10, 2, 'cache') ## phoERes.setBinning(chachebins) phoERes.setBins(3, 'cache') mmgMassFunc = w.factory('''expr::mmgMassFunc( "sqrt(mmgMass^2 - 0.01 * phoERes * (mmgMass^2 - mmMass^2))", {mmMass, mmgMass, phoERes} )''') ## mmgMassFunc = w.factory('''cexpr::mmgMassFunc( ## "sqrt(mmgMass*mmgMass - 0.01 * phoERes * (mmgMass*mmgMass - mmMass*mmMass))", ## {mmMass, mmgMass, phoERes} ## )''' ## ) cust = ROOT.RooCustomizer(pdf_mmMass_mmgMassPhoGenE, 'subs') cust.replaceArg(mmgMassPhoGenE, mmgMassFunc) pdf_mmMass_mmgMass = cust.build() pdf_mmMass_mmgMass.addOwnedComponents(ROOT.RooArgSet(mmgMassFunc)) pdf_mmMass_mmgMass.SetName('pdf_mmMass_mmgMass') ## WARNING: The caching related lines below cause segmentation violation! ## pdf_mmMass_mmgMass.setNormValueCaching(2) ## print '-- Before chache --' ## w.Print() ## print '-- Calculating cache ... --' ## ## Trigger the cache calculation ## pdf_mmMass_mmgMass.getVal(ROOT.RooArgSet(mmMass, mmgMass)) ## print '-- After chache --' ## w.Print() pdf = pdf_mmMass_mmgMassPhoGenE canvases.next(pdf.GetName()).SetGrid() h_pdf = pdf.createHistogram( 'h_' + pdf.GetName(), mmMass, roo.Binning(40, 40, 80), roo.YVar(mmgMassPhoGenE, roo.Binning(40, 70, 110))) h_pdf.Draw("cont1") pdf = pdf_mmMass_mmgMass phoERes.setVal(0) canvases.next(pdf.GetName() + '_s0').SetGrid() h_pdf = pdf.createHistogram('h_' + pdf.GetName() + '_s0', mmMass, roo.Binning(40, 40, 80), roo.YVar(mmgMass, roo.Binning(40, 70, 110))) h_pdf.Draw("cont1") phoERes.setVal(10) canvases.next(pdf.GetName() + '_s10').SetGrid() h_pdf = pdf.createHistogram('h_' + pdf.GetName() + '_s10', mmMass, roo.Binning(40, 40, 80), roo.YVar(mmgMass, roo.Binning(40, 70, 110))) h_pdf.Draw("cont1") phoERes.setVal(-10) canvases.next(pdf.GetName() + '_sm10').SetGrid() h_pdf = pdf.createHistogram('h_' + pdf.GetName() + '_sm10', mmMass, roo.Binning(40, 40, 80), roo.YVar(mmgMass, roo.Binning(40, 70, 110))) h_pdf.Draw("cont1")
## pdf = w.factory('''MomentMorph::{pdf}( ## phoScale, {{mmgMass}}, {{{pdflist}}}, {{{mreflist}}} ## )'''.format(pdf=pdfname, ## pdflist=','.join(spdflist), ## mreflist=','.join(sreflist))) ## w.Import(pdf) w.Print() pdf.fitTo(data, roo.Range(60, 120), roo.Minos()) tdata = calibrator.get_smeared_data(stest, rtest) tdata.SetName('tdata') pdf.fitTo(tdata, roo.Range(60, 120), roo.Minos()) calibrator.phoEResPdf.fitTo(tdata, roo.Range(-50, 50)) canvases.next('test_fit') plot = mmgMass.frame(roo.Range(70, 110)) tdata.plotOn(plot) pdf.plotOn(plot) plot.Draw() Latex( [ 's_{true}: %.3f #pm %.3f %%' % (calibrator.s.getVal(), calibrator.s.getError()), ## 's_{fit}: %.3f #pm %.3f %%' % (phoScale.getVal(), ## phoScale.getError()), 'r_{true}: %.3f #pm %.3f %%' % (calibrator.r.getVal(), calibrator.r.getError()), 'r_{fit}: %.3f ^{+%.3f}_{%.3f} %%' % (phoRes.getVal(), phoRes.getErrorHi(), phoRes.getErrorLo()), ],
t.setVal(0) t2pdf = LogPhoeresKeysPdf('t2pdf', 't2pdf', phoERes, t, phoScale, phoRes, data, rho=1.5) ## Build the model for fT(t|s,r) = fT1(t1) * fT2(t2|s,r) t.setRange(*t1range) mmMass.setRange(*mmMass_range) t.setBins(100, "cache") mmMass.setBins(20, "cache") xtpdf = ROOT.RooFFTConvPdf('tpdf', 'tpdf', t, xt1pdf, t2pdf) xtpdf.setBufferFraction(0) xtpdf.setCacheObservables(ROOT.RooArgSet(mmMass, t)) xtpdf.setNormValueCaching(2) ## Plot fXT1(x, t1) with training data. c1 = canvases.next('xt1') c1.SetWindowSize(800, 400) c1.Divide(2,1) c1.cd(1).SetGrid() t.setRange(*t1range) t.SetTitle('log(m_{#mu#mu#gamma,E_{gen}^{#gamma}}^{2} - m_{#mu#mu}^{2})') hxt1d = xt1data.createHistogram(mmMass, t, 100, 100, '', 'hxt1') hxt1d.SetTitle('Data') hxt1d.GetXaxis().SetTitle(mmMass.GetTitle() + ' (GeV)') hxt1d.GetYaxis().SetTitle(t.GetTitle()) hxt1d.GetXaxis().SetRangeUser(*mmMass_range) hxt1d.GetYaxis().SetRangeUser(*t1range) hxt1d.Draw('cont0') c1.cd(2).SetGrid() hxt1f = xt1pdf.createHistogram('hxt1f', mmMass, roo.YVar(t))
variable of a given name and x and ex are pt bins.""" return ( lambda ws, i=iter(bincenters): i.next(), # x lambda ws: ws.var(name).getVal(), # y lambda ws, i=iter(binhalfwidths): i.next(), # ex lambda ws: ws.var(name).getError(), # ey ) frp = FitResultPlotter( sources=zip(filenames, wsnames, strue_snapshots), getters=var_vs_pt('#Deltas'), xtitle='E_{T}^{#gamma} (GeV)', ytitle='s_{true} = E^{#gamma}_{reco}/E^{#gamma}_{gen} - 1 (%)') canvases.next() frp.main() print frp.ytitle frp.dump() print ## MC truth resolution # canvases.next() # frp.main(getters = var_vs_pt('#sigma'), # ytitle = '#sigma(E^{#gamma}_{reco}/E^{#gamma}_{gen})') # frp.dump() ## Scale from mmg canvases.next() frp.main(sources=zip(filenames, wsnames, sreco_snapshots), getters=var_vs_pt('#Deltas'),
ytitle='s_{gen} = E^{#gamma}_{reco}/E^{#gamma}_{gen} - 1 (%)', ) for fitrange, title in zip(['FitRange' + x for x in '65 68 71'.split()], '-3% Nominal +3%'.split()): filenames = [os.path.join(path, 'strue_%s.root' % fitrange)] * n snapshots = [ snapshot.format(f=fitrange, c=etar9.name, l=lo, h=hi) for lo, hi in binedges ] frp.sources = zip(filenames, workspaces, snapshots) frp.getters = var_vs_pt('#Deltas') frp.title = title frp.getdata() frp.makegraph() canvases.next('strue_FitRangeSystematics' + etar9.name) frp.plotall(title=etar9.title) plotters.append(frp) graph = frp.graphs[0].Clone('g_' + etar9.name) for i in range(graph.GetN()): x = graph.GetX()[i] ylo = min([g.GetY()[i] for g in frp.graphs]) yhi = max([g.GetY()[i] for g in frp.graphs]) graph.SetPoint(i, x, 0.5 * (yhi - ylo)) graph.SetPointError(i, graph.GetEX()[i], 0) plotter.graphs.append(graph) plotter.titles.append(etar9.title) canvases.next('strue_FitRangeSystematics')
## Proposal 2 frp.sources = zip(cfg.filenames2, cfg.wsnames, cfg.sreco_snapshots2) frp.getters = var_vs_pt('#Deltas') frp.title = 'm_{#mu#mu} < 90 GeV' frp.getdata() frp.makegraph() ## True frp.sources = zip(cfg.filenames2, cfg.wsnames, cfg.strue_snapshots) frp.getters = var_vs_pt('#Deltas') frp.title = 'MC Truth' frp.getdata() frp.makegraph() ## Compare Proposal 1, Baseline and MC truth scale canvases.next('s_' + cfg.name).SetGrid() frp.plotall(title = cfg.title, styles = [20, 25, 22], colors = [kBlue, kRed, kBlack]) plotters.append(frp) #------------------------------------------------------------------------------ ## S width Comparison ## Baseline ## frp = FitResultPlotter( ## sources = zip(cfg.filenames, cfg.wsnames, cfg.sreco_snapshots), ## getters = ( ## lambda ws, i = iter(bincenters): i.next(), # x ## lambda ws, i = iter(lyonmc[cfg.name]['sigma']): i.next(), # y ## lambda ws, i = iter(binhalfwidths): i.next(), # ex
## mmMass < 90 GeV frp.sources = zip(cfg.filenames4, cfg.wsnames, cfg.sreco_snapshots4) frp.getters = var_vs_pt('#Deltas') frp.title = 'm_{#mu#mu} + m_{#mu#mu#gamma} < 190 GeV' frp.getdata() frp.makegraph() ## True frp.sources = zip(cfg.filenames3, cfg.wsnames, cfg.strue_snapshots) frp.getters = var_vs_pt('#Deltas') frp.title = 'MC Truth' frp.getdata() frp.makegraph() ## Compare Proposal 1, Baseline and MC truth scale canvases.next('s_' + cfg.name).SetGrid() frp.plotall(title = cfg.title, styles = [20, 25, 26, 22], colors = [kBlue, kRed, kGreen, kBlack]) plotters.append(frp) #------------------------------------------------------------------------------ ## S width Comparison ## Baseline ## frp = FitResultPlotter( ## sources = zip(cfg.filenames, cfg.wsnames, cfg.sreco_snapshots), ## getters = ( ## lambda ws, i = iter(bincenters): i.next(), # x ## lambda ws, i = iter(lyonmc[cfg.name]['sigma']): i.next(), # y ## lambda ws, i = iter(binhalfwidths): i.next(), # ex
def plotxy(pdf, xyexpr='x:y'): h_pdf = pdf.createHistogram(xyexpr) h_pdf.SetLineColor(ROOT.kBlue) canvases.next(h_pdf.GetName()) h_pdf.Draw('surf')
'!isFSR', 'mmgMass < 200', 'mmMass < 200', 'phoPt > 15', 'Entry$ < 500000' ]) mmgMassIsrData = dataset.get(variable=mmgMass) m1gOplusM2gIsrData = dataset.get(variable=m1gOplusM2g) isrData.merge(mmgMassIsrData, m1gOplusM2gIsrData) ## Fit the model to the data mmMassPdf.fitTo(isrData, roofit.Range(60, 120)) ## Plot the data and the fit mmPlot = mmMass.frame(roofit.Range(60, 120)) isrData.plotOn(mmPlot) mmMassPdf.plotOn(mmPlot) canvases.next('mmMass') mmPlot.Draw() ## Model for the reconstructed mmg mass of the ISR through transformation # mmgMassIsrPdf = ROOT.RooFFTConvPdf('mmgMassIsrPdf', 'mmgMassIsrPdf', mmMassFunc, # mmMass, zmmGenShape, mmMassRes) mmgMassPdf = w.factory('Voigtian::mmgMassPdf(mmMassFunc, mmMean, GZ, mmRes)') ## Plot the mmg mass data and model overlaid without fitting (!) mmgPlot = mmgMass.frame(roofit.Range(60, 200)) isrData.plotOn(mmgPlot) isrData_m1gOplusM2g = isrData.reduce(ROOT.RooArgSet(m1gOplusM2g)) isrData_m1gOplusM2g_binned = isrData_m1gOplusM2g.binnedClone() isrData_m1gOplusM2g.get().find('m1gOplusM2g').setBins(40) isrData_m1gOplusM2g_binned2 = isrData_m1gOplusM2g.binnedClone()
colors=[ ROOT.kRed, ROOT.kBlack, ROOT.kBlue, ], ltitles=['Spring11 MC', 'Summer11 MC', 'Winter11 MC'], drawopts='e0 e0hist e0'.split(), markerstyles=[20, 21, 22], normalize_to_unit_area=True, legendkwargs=dict(position=(0.675, 0.9, 0.95, 0.7)), ) plots.append(plot) #### Meat c1 = canvases.next('raw_over_gen_module_p4') plot.draw() c1.SetGrid() c1.RedrawAxis() c1.Update() ## Plot Module -4 plots.append( plot.clone( name='mm4', cuts=[ '!isEBEtaGap', '!isEBPhiGap', ## Module +4 '-1.44 < scEta & scEta < -1.16', ],
def process_monte_carlo(): ''' Get, fit and plot monte carlo. ''' global fitdata1 fitdata1 = fit_calibrator.get_smeared_data( sfit, rfit, 'fitdata1', 'fitdata1', True ) fitdata1.reduce(ROOT.RooArgSet(mmgMass, mmMass)) fitdata1.append(data['zj1']) fitdata1.SetName('fitdata1') data['fit1'] = fitdata1 if reduce_data == True: fitdata1 = fitdata1.reduce(roo.Range(reduced_entries, fitdata1.numEntries())) check_timer('3. get fit data (%d entries)' % fitdata1.numEntries()) nll = pm.createNLL(fitdata1, roo.Range('fit'), roo.NumCPU(8)) minuit = ROOT.RooMinuit(nll) minuit.setProfile() minuit.setVerbose() phoScale.setError(1) phoRes.setError(1) ## Initial HESSE status = minuit.hesse() fitres = minuit.save(name + '_fitres1_inithesse') w.Import(fitres, fitres.GetName()) check_timer('4. initial hesse (status: %d)' % status) ## Minimization minuit.setStrategy(2) status = minuit.migrad() fitres = minuit.save(name + '_fitres2_migrad') w.Import(fitres, fitres.GetName()) check_timer('5. migrad (status: %d)' % status) ## Parabolic errors status = minuit.hesse() fitres = minuit.save(name + '_fitres3_hesse') w.Import(fitres, fitres.GetName()) check_timer('6. hesse (status: %d)' % status) ## Minos errors status = minuit.minos() fitres = minuit.save(name + '_fitres4_minos') w.Import(fitres, fitres.GetName()) check_timer('7. minos (status: %d)' % status) #fres = pm.fitTo(fitdata1, roo.SumW2Error(True), #roo.Range('fit'), ## roo.Strategy(2), #roo.InitialHesse(True), #roo.Minos(), #roo.Verbose(True), #roo.NumCPU(8), roo.Save(), roo.Timer()) signal_model._phorhist.GetXaxis().SetRangeUser(75, 105) signal_model._phorhist.GetYaxis().SetRangeUser(0, 15) signal_model._phorhist.GetXaxis().SetTitle('%s (%s)' % (mmgMass.GetTitle(), mmgMass.getUnit())) signal_model._phorhist.GetYaxis().SetTitle('E^{#gamma} Resolution (%)') signal_model._phorhist.GetZaxis().SetTitle('Probability Density (1/GeV/%)') signal_model._phorhist.SetTitle(latex_title) signal_model._phorhist.GetXaxis().SetTitleOffset(1.5) signal_model._phorhist.GetYaxis().SetTitleOffset(1.5) signal_model._phorhist.GetZaxis().SetTitleOffset(1.5) signal_model._phorhist.SetStats(False) canvases.next(name + '_phorhist') signal_model._phorhist.Draw('surf1') global graph graph = signal_model.make_mctrue_graph() graph.GetXaxis().SetTitle('E^{#gamma} resolution (%)') graph.GetYaxis().SetTitle('m_{#mu^{+}#mu^{-}#gamma} effective #sigma (GeV)') graph.SetTitle(latex_title) canvases.next(name + '_mwidth_vs_phor').SetGrid() graph.Draw('ap') mmgMass.setBins(80) plot = mmgMass.frame(roo.Range('plot')) plot.SetTitle('Fall11 MC, ' + latex_title) fitdata1.plotOn(plot) pm.plotOn(plot, roo.Range('plot'), roo.NormRange('plot')) pm.plotOn(plot, roo.Range('plot'), roo.NormRange('plot'), roo.Components('*zj*'), roo.LineStyle(ROOT.kDashed)) canvases.next(name + '_fit').SetGrid() plot.Draw() ## Estimate the MC truth phos and phor: old_precision = set_default_integrator_precision(2e-9, 2e-9) calibrator0.s.setRange(-15, 15) calibrator0.r.setRange(0,25) calibrator0.phoEResPdf.fitTo(fitdata1, roo.Range(-50, 50), roo.Strategy(2)) set_default_integrator_precision(*old_precision) set_mc_truth(calibrator0.s, calibrator0.r) ## Store the result in the workspace: w.saveSnapshot('mc_fit', ROOT.RooArgSet(phoScale, phoRes, phoScaleTrue, phoResTrue)) ## Draw the results on the canvas: Latex([ 'E^{#gamma} Scale (%)', ' MC Truth: %.2f #pm %.2f' % (calibrator0.s.getVal(), calibrator0.s.getError()), ' MC Fit: %.2f #pm %.2f ^{+%.2f}_{%.2f}' % ( phoScale.getVal(), phoScale.getError(), phoScale.getErrorHi(), phoScale.getErrorLo() ), '', 'E^{#gamma} Resolution (%)', ' MC Truth: %.2f #pm %.2f' % (calibrator0.r.getVal(), calibrator0.r.getError()), ' MC Fit: %.2f #pm %.2f ^{+%.2f}_{%.2f}' % ( phoRes.getVal(), phoRes.getError(), phoRes.getErrorHi(), phoRes.getErrorLo() ), '', 'Signal Purity (%)', ' MC Truth: %.2f' % fsr_purity, ' MC Fit: %.2f #pm %.2f' % ( 100 * w.var('signal_f').getVal(), 100 * w.var('signal_f').getError() ) ], position=(0.2, 0.8) ).draw() check_timer('8. fast plots')