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Calculation_Template_v4.py
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Calculation_Template_v4.py
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#!/usr/bin/env python
from ROOT import *
import ROOT as r
import logging,itertools
import os,fnmatch,sys
import glob, errno
from time import strftime
from optparse import OptionParser
import array, ast
from ROOT import TMatrixD
from math import *
from plottingUtils import *
class Template_Calc(object):
def __init__(self,settings,samples,jet_mult,lumo,Do_Sys = '',Working_Point = ''):
self.Lumo = lumo
self.Working_Point = Working_Point
self.settings = settings
self.fitparam = 3
self.totaljetmultiplicity = jet_mult
#self.FitType = "Simulataneous"
self.FitType = "Individual"
self.DoPull = "False"
r.gROOT.ProcessLine(".L tdrstyle.C")
r.setstyle()
r.gROOT.SetBatch(True)
r.gStyle.SetOptStat(0)
for num,bin in enumerate(self.settings["dirs"]):
self.c1= r.TCanvas("Fit Result", "Fit Result",0,0,900,600)
self.c1.SetLogy(0)
#======= Dictionaries are made here =============================
self.current_htbin = bin
self.bins = ('2','3','4','5')
entries = ('Data','Data_Err','Data_Err_Matrix','Z0','Z2','Plus','Minus','Normal','FitResult','FitError')
syst_dict = ('Plus','Minus','Normal')
template_entries = ( 'Full_Template','Theta','ndof','FitCovariance')
btag_mc = ('Btag_Efficiency','Mistag_Efficiency','Btag_Error','Mistag_Error','Ctag_Efficiency','Ctag_Error','Btag_Efficiency_plus','Mistag_Efficiency_plus','Btag_Efficiency_minus','Mistag_Efficiency_minus','Ctag_plus','Ctag_minus' )
self.Data_Dict = dict.fromkeys(self.bins)
self.MC_Dict = dict.fromkeys(self.bins)
dictionaries = [self.Data_Dict,self.MC_Dict]
for dicto in dictionaries:
for key in self.bins:
dicto[key] = dict.fromkeys(entries,0)
dicto[key]['Data'] = []
dicto[key]['Data_Err'] = []
dicto[key]['Data_Err_Matrix'] = []
dicto[key]['FitError'] = []
dicto[key]['FitResult'] = []
for dicto in dictionaries:
for key in self.bins:
dicto[key]["Z0"] = dict.fromkeys(btag_mc,0)
dicto[key]["Z2"] = dict.fromkeys(btag_mc,0)
for dicto in dictionaries:
for key in self.bins:
dicto[key]["Plus"] = dict.fromkeys(template_entries,0)
dicto[key]["Minus"] = dict.fromkeys(template_entries,0)
dicto[key]["Normal"] = dict.fromkeys(template_entries,0)
for j in syst_dict:
dicto[key][j]['Theta'] = []
dicto[key][j]['Full_Template'] = []
#=============================================================================
#========================= Btag/Mistag Rates are calculated =================
for numjets in jet_mult:
for key,fi in sorted(samples.iteritems()):
if fi[2] not in ["Data","MC"]:
for dicto in dictionaries:
if dicto == self.Data_Dict : self.Btag_Rate(samples[key],self.current_htbin,numjets,dicto,"Data")
else : self.Btag_Rate(samples[key],self.current_htbin,numjets,dicto,"MC")
#============================================================================
#====================== Templates are generated / Data Extracted =============
for numjets in jet_mult:
for key,fi in sorted(samples.iteritems()):
if fi[2] not in ["Data","MC"]:
for dicto in dictionaries:
if dicto == self.Data_Dict: self.Generate_Templates(samples[key],self.current_htbin,numjets,dicto,"Data")
else: self.Generate_Templates(samples[key],self.current_htbin,numjets,dicto,"MC")
self.sample_type = fi[1]
if fi[2] =="Data": self.Extract_Data(samples[key],self.current_htbin,numjets,self.Data_Dict,fi[2])
if fi[2] =="MC": self.Extract_Data(samples[key],self.current_htbin,numjets,self.MC_Dict,fi[2])
#============================================================================
#===================== Do Fits =========================================
if self.FitType == "Individual":
for jetnum in jet_mult:
for suffix in ['Normal','Plus','Minus']:
#self.DoFit(self.fitparam,jetnum,suffix,self.Data_Dict,"Data")
self.DoFit(self.fitparam,jetnum,suffix,self.MC_Dict,"MC")
#self.MakeFinalFit(self.Data_Dict,"Normal",jetnum,"Data")
self.MakeFinalFit(self.MC_Dict,"Normal",jetnum,"MC")
if self.DoPull == "True" : self.Pull_Plots( self.MC_Dict,jetnum )
#self.RatioPlots(dictionaries)
if self.FitType == "Simulataneous":
for jetnum in jet_mult:
for suffix in ['Normal','Plus','Minus']:
self.DoFit(self.fitparam,jetnum,suffix,self.Data_Dict,"Data",combine = "True")
self.DoFit(self.fitparam,jetnum,"Normal",self.MC_Dict,"MC",combine = "True")
self.MakeFinalFit(self.Data_Dict,"Normal",jetnum,"Data")
self.MakeFinalFit(self.MC_Dict,"Normal",jetnum,"MC")
#===========================================================================
#================== Make Plots/ Tables =========================================
#self.Produce_Yield_Table(self.Data_Dict,"Data")
#self.Produce_Yield_Table(self.MC_Dict,"MC")
#========================================================================
"""
#print self.MC_Dict["2"]["Normal"]["Full_Template"]
#print "================="
#print self.MC_Dict["2"]["Z0"]
#print "================="
#print self.MC_Dict["2"]["Z2"]
"""
def Produce_Yield_Table(self,Dict,isdata):
for i in self.totaljetmultiplicity:
self.Table = open("Yield_Table_For_%s_%s_HTbin_%s_jetmult_%s.tex"%(isdata,self.Working_Point,self.current_htbin,i) ,'w')
self.Tabletxt = open("Yield_Table_For_%s_%s_HTbin_%s_jetmult_%s.txt"%(isdata,self.Working_Point,self.current_htbin,i) ,'w')
bins = [0,1,2,3,4]
total_yields = [[],[],[]]
temp_yields = [[],[],[]]
s = "\n"
s += r'''\begin{table}[ht!]'''
s += "\n\caption{%s }"%self.current_htbin
s += "\n\centering"
s += "\n"+r'''\footnotesize'''
s += "\n\\begin{tabular}{ |c|c|c|c|c| }"
s += "\n\hline"
s += self.oneRow(label ="Num Btags", entryList = [("%s"%(l)) for l in (bins)], extra = "[0.5ex]")
t = ""
for j in range(0,5):#Dict[self.totaljetmultiplicity[-1]]["FitResult"].GetNbinsX()):
mc_error_plus = 0
mc_error_minus = 0
try:mc_error_plus = sqrt(Dict[i]["FitError"][0][j])
except IndexError: pass
try:mc_error_minus =sqrt(Dict[i]["FitError"][1][j])
except IndexError: pass
t += "\n %s btags \n"%j
t += "MC Yield : %s +- %s \n " %(Dict[i]["Data"][j],Dict[i]["Data_Err"][j])
t += "Template Yield: %s + %s - %s \n " %( Dict[i]["FitResult"].GetBinContent(j+1) , mc_error_plus ,mc_error_minus )
total_yields[0].append( Dict[i]["Data"][j] )
total_yields[1].append(Dict[i]["Data_Err"][j])
temp_yields[0].append(Dict[i]["FitResult"].GetBinContent(j+1))
temp_yields[1].append(mc_error_plus)
temp_yields[2].append(mc_error_minus)
s += self.oneRow(label = "Data", entryList = ( self.MakeList(total_yields)),entryWidth= 30, addhline=False,adddouble=False)
s += self.oneRow(label = "Template", entryList = ( self.MakeList(temp_yields,errors = "True")),entryWidth= 30, addhline=False,adddouble=False)
s += "\n\hline"
s += "\n\end{tabular}"
s += "\n\end{table}"
s += "\n\n\n\n"
self.Table.write(s)
self.Tabletxt.write(t)
self.Table = open("Yield_Table_For_%s_%s_HTbin_%s.tex"%(isdata,self.Working_Point,self.current_htbin) ,'w')
self.Tabletxt = open("Yield_Table_For_%s_%s_HTbin_%s.txt"%(isdata,self.Working_Point,self.current_htbin) ,'w')
bins = [0,1,2,3,4]
total_yields = [[],[],[]]
temp_yields = [[],[],[]]
s = "\n"
s += r'''\begin{table}[ht!]'''
s += "\n\caption{%s }"%self.current_htbin
s += "\n\centering"
s += "\n"+r'''\footnotesize'''
s += "\n\\begin{tabular}{ |c|c|c|c|c| }"
s += "\n\hline"
s += self.oneRow(label ="Num Btags", entryList = [("%s"%(l)) for l in (bins)], extra = "[0.5ex]")
t = ""
for j in range(0,5):#Dict[self.totaljetmultiplicity[-1]]["FitResult"].GetNbinsX()):
data = 0
data_error = 0
mc = 0
mc_error_plus = 0
mc_error_minus = 0
for i in self.totaljetmultiplicity:
data += Dict[i]["Data"][j]
data_error += pow(Dict[i]["Data_Err"][j],2)
mc += Dict[i]["FitResult"].GetBinContent(j+1)
try:mc_error_plus += Dict[i]["FitError"][0][j]
except IndexError: pass
try:mc_error_minus +=Dict[i]["FitError"][1][j]
except IndexError: pass
if isdata == "Data" :data_error = self.Poission(data)
else: data_error = sqrt(data_error)
mc_error_plus = sqrt(mc_error_plus)
mc_error_minus = sqrt(mc_error_minus)
total_yields[0].append(data)
total_yields[1].append(data_error)
temp_yields[0].append(mc)
temp_yields[1].append(mc_error_plus)
temp_yields[2].append(mc_error_minus)
t += "\n %s btags \n"%j
t += "MC Yield : %s +- %s \n " %(data,data_error)
t += "Template Yield: %s + %s - %s \n " %(mc,mc_error_plus,mc_error_minus)
s += self.oneRow(label = "Data", entryList = ( self.MakeList(total_yields)),entryWidth= 30, addhline=False,adddouble=False)
s += self.oneRow(label = "Template", entryList = ( self.MakeList(temp_yields,errors = "True")),entryWidth= 30, addhline=False,adddouble=False)
s += "\n\hline"
s += "\n\end{tabular}"
s += "\n\end{table}"
s += "\n\n\n\n"
self.Table.write(s)
self.Tabletxt.write(t)
def toString(self,item) :
if type(item) is float : return str(item)
else : return str(item)
def MakeList(self,dict,errors = ''):
List = []
for num,entry in enumerate(dict[0]):
if errors == "True":
if dict[0][num] == 0: List.append('-')
else: List.append(self.toString("%4.2f + %4.2f - %4.2f" %(dict[0][num],dict[1][num],dict[2][num])))
else:
if dict[0][num] == 0: List.append('-')
else: List.append(self.toString("%4.2f +- %4.2f " %(dict[0][num],dict[1][num])))
return List
def oneRow(self,label = "", labelWidth = 23, entryList = [], entryWidth = 30, extra = "",addhline = "",adddouble = "") :
s = ""
s += "\n"+label.ljust(labelWidth)+" & "+" & ".join([(self.toString(entry)).ljust(entryWidth) for entry in entryList])+r"\\ "
if addhline: s += "\n\hline"
if adddouble: s+="\n\hline\hline"
return s
def RatioPlots(self,Dicts):
self.c1.cd(1)
names = ["Data","MC"]
ratio_holder = []
for num,dictos in enumerate(Dicts):
inputname = names[num]
plot = r.TH1F("" ,"",len(self.totaljetmultiplicity),float(self.totaljetmultiplicity[0]),float(self.totaljetmultiplicity[-1])+1)
for num,jet in enumerate(self.totaljetmultiplicity):
plot.SetBinContent(int(num)+1,1,float(dictos[jet]["Normal"]["Theta"][0]/dictos[jet]["Normal"]["Theta"][1]))
plot.SetBinError(int(num)+1,1,float(dictos[jet]["Normal"]["Theta"][0]/dictos[jet]["Normal"]["Theta"][1])*sqrt( pow(float(dictos[jet]["Normal"]["FitError_0"]/dictos[jet]["Normal"]["Theta"][0]),2)+ pow(float(dictos[jet]["Normal"]["FitError_2"]/dictos[jet]["Normal"]["Theta"][1]),2) - (2*( ( dictos[jet]["Normal"]["FitError_0"]*dictos[jet]["Normal"]["FitError_2"] )/( dictos[jet]["Normal"]["Theta"][1]*dictos[jet]["Normal"]["Theta"][0] ) )* dictos[jet]["Normal"]["FitCovariance"] )))
plot.Draw()
ratio_holder.append(plot)
self.c1.SaveAs("%s_WP_Ratio_Z0_Z2_in_%s_HTbin_%s.png"%(self.Working_Point,inputname,self.current_htbin))
ratio_holder[0].Divide(ratio_holder[1])
ratio_holder[0].Draw()
self.c1.SaveAs("%s_WP_Ratio_Z0_Z2_Data_vs_MC_HTbin_%s.png"%(self.Working_Point,self.current_htbin))
def Pull_Plots(self,Dict,jetnum):
R1 = TRandom3(0)
Z0fitresult = TH1D("Z0fitresult", ";Z=0 pull;", 100, -5.05, 4.95)
Z2fitresult = TH1D("Z2fitresult", ";Z=2 pull;", 100, -5.05, 4.95)
relerr = 1.0
tot_toys=100000
r.gStyle.SetOptStat(1111)
for i in range(tot_toys):
if i in [0,int(tot_toys*0.2),int(tot_toys*0.4),int(tot_toys*0.6),int(tot_toys*0.8),int(tot_toys-1)]:
print "At Toy %s" %i
data_toy = []
mc_templates = []
data_toy_error = Dict[jetnum]["Data_Err_Matrix"]
for num,j in enumerate(Dict[jetnum]["Data"][:self.fitparam]): data_toy.append(R1.Gaus(Dict[jetnum]["Data"][num],relerr*Dict[jetnum]["Data_Err"][num]))
for temp1,temp2 in zip(Dict[jetnum]["Normal"]["Full_Template"][0][:self.fitparam],Dict[jetnum]["Normal"]["Full_Template"][1][:self.fitparam]):
mc_templates.append(temp1)
mc_templates.append(temp2)
A = TMatrixD(self.fitparam,2,array.array('d',mc_templates))
Y = TMatrixD(self.fitparam,1,array.array('d',data_toy))
V = TMatrixD(self.fitparam,self.fitparam,array.array('d',data_toy_error))
AT = TMatrixD(2,self.fitparam)
AT.Transpose(A)
Vinv = TMatrixD(V)
Vinv.Invert()
# Now lets calculate C1,C2, S1,S2 and theta
C1 = TMatrixD(self.fitparam,2)
C1.Mult(Vinv,A)
C2 = TMatrixD(2,2)
C2.Mult(AT,C1)
S1 = TMatrixD(self.fitparam,1)
S1.Mult(Vinv,Y)
S2 = TMatrixD(2,1)
S2.Mult(AT,S1)
Cinv = TMatrixD(C2)
Cinv.Invert()
Theta = TMatrixD(2,1)
Theta.Mult(Cinv,S2)
try: Z0fitresult.Fill((Theta(0,0) - Dict[jetnum]["Normal"]["Theta"][0])/sqrt(Cinv(0,0)))
except ValueError: print "Passing"
try:Z2fitresult.Fill((Theta(1,0) - Dict[jetnum]["Normal"]["Theta"][1])/sqrt(Cinv(1,1)))
except ValueError: print "Passing"
Z0fitresult.Draw()
self.c1.SaveAs("Pull_Plot_Z0_HTbin_%s_jet_mult_%s_num_param_%s.png"%(self.current_htbin,jetnum,self.fitparam))
Z2fitresult.Draw()
self.c1.SaveAs("Pull_Plot_Z2_HTbin_%s_jet_mult_%s_num_param_%s.png"%(self.current_htbin,jetnum,self.fitparam))
def MakeFinalFit(self,Dict,suffix,jetnum,isdata):
num_bins = int(jetnum)+1
if jetnum == "5": num_bins = 5
fitresult = TH1D("fitresult", ";n_{b}^{reco};Entries", num_bins, -0.50, (num_bins-0.5))
data_hist = TH1D("data", ";n_{b}^{reco};Entries", num_bins, -0.50, (num_bins-0.5))
template0 = TH1D("template0", ";n_{b}^{reco};Entries", num_bins, -0.50, (num_bins-0.5))
template2 = TH1D("template2", ";n_{b}^{reco};Entries", num_bins, -0.50, (num_bins-0.5))
for i in range(0,int(jetnum)+1):
data_hist.Fill(i,Dict[jetnum]["Data"][i])
data_hist.SetBinError(i+1,Dict[jetnum]["Data_Err"][i])
for num in range(0,len( Dict[jetnum][suffix]["Full_Template"][1])):
template0.Fill(num, Dict[jetnum][suffix]["Full_Template"][0][num]*float(Dict[jetnum][suffix]["Theta"][0]))
template2.Fill(num, Dict[jetnum][suffix]["Full_Template"][1][num]*float(Dict[jetnum][suffix]["Theta"][1]))
fitresult.Fill(num, Dict[jetnum][suffix]["Full_Template"][0][num]*float(Dict[jetnum][suffix]["Theta"][0]) + Dict[jetnum][suffix]["Full_Template"][1][num]*float(Dict[jetnum][suffix]["Theta"][1]))
fitresult.SetBinError(num+1,sqrt(pow((Dict[jetnum][suffix]["FitError_0"])*Dict[jetnum][suffix]["Full_Template"][0][num],2)+(pow(Dict[jetnum][suffix]["FitError_2"]*Dict[jetnum][suffix]["Full_Template"][1][num],2))+(2*Dict[jetnum][suffix]["Full_Template"][0][num]*Dict[jetnum][suffix]["Full_Template"][1][num]*float(Dict[jetnum][suffix]["FitCovariance"]))))
totresult = TGraphAsymmErrors(fitresult)
totup = []
totdown = []
if isdata == "Data" or isdata == "MC":
for num in range(0,len( Dict[jetnum][suffix]["Full_Template"][1])):
totresult.SetPointEYhigh(num, sqrt(pow(((Dict[jetnum]["Plus"]["Full_Template"][0][num]*float(Dict[jetnum]["Plus"]["Theta"][0]) + Dict[jetnum]["Plus"]["Full_Template"][1][num]*float(Dict[jetnum]["Plus"]["Theta"][1])) - (Dict[jetnum][suffix]["Full_Template"][0][num]*float(Dict[jetnum][suffix]["Theta"][0]) + Dict[jetnum][suffix]["Full_Template"][1][num]*float(Dict[jetnum][suffix]["Theta"][1]))),2)+ pow(fitresult.GetBinError(num+1) ,2) ))
totresult.SetPointEYlow(num, sqrt(pow(((Dict[jetnum][suffix]["Full_Template"][0][num]*float(Dict[jetnum][suffix]["Theta"][0]) + Dict[jetnum][suffix]["Full_Template"][1][num]*float(Dict[jetnum][suffix]["Theta"][1])) - (Dict[jetnum]["Minus"]["Full_Template"][0][num]*float(Dict[jetnum]["Minus"]["Theta"][0]) + Dict[jetnum]["Minus"]["Full_Template"][1][num]*float(Dict[jetnum]["Minus"]["Theta"][1]))),2) + pow(fitresult.GetBinError(num+1) ,2)))
totup.append(pow(((Dict[jetnum]["Plus"]["Full_Template"][0][num]*float(Dict[jetnum]["Plus"]["Theta"][0]) + Dict[jetnum]["Plus"]["Full_Template"][1][num]*float(Dict[jetnum]["Plus"]["Theta"][1])) - (Dict[jetnum][suffix]["Full_Template"][0][num]*float(Dict[jetnum][suffix]["Theta"][0]) + Dict[jetnum][suffix]["Full_Template"][1][num]*float(Dict[jetnum][suffix]["Theta"][1]))),2)+ pow(fitresult.GetBinError(num+1) ,2))
totdown.append(pow(((Dict[jetnum][suffix]["Full_Template"][0][num]*float(Dict[jetnum][suffix]["Theta"][0]) + Dict[jetnum][suffix]["Full_Template"][1][num]*float(Dict[jetnum][suffix]["Theta"][1])) - (Dict[jetnum]["Minus"]["Full_Template"][0][num]*float(Dict[jetnum]["Minus"]["Theta"][0]) + Dict[jetnum]["Minus"]["Full_Template"][1][num]*float(Dict[jetnum]["Minus"]["Theta"][1]))),2) + pow(fitresult.GetBinError(num+1) ,2))
else:
for num in range(0,len( Dict[jetnum][suffix]["Full_Template"][1])):
totup.append(pow(fitresult.GetBinError(num+1) ,2))
totdown.append( pow(fitresult.GetBinError(num+1) ,2))
temp0 = TGraph(template0)
temp2 = TGraph(template2)
totresult.SetFillColor(1)
totresult.SetFillStyle(3003)
data_hist.GetYaxis().SetTitle("Events");
data_hist.GetXaxis().SetTitle("Num B-tags")
data_hist.SetTitle("Final Simultaneous fit to %s , Num Jets = %s" %(isdata,jetnum))
data_hist.SetLineColor(kBlack)
data_hist.SetLineWidth(3)
if isdata == "MC" :data_hist.SetMinimum(0.001)
else: data_hist.SetMinimum(0.1)
data_hist.Draw("pe1x0")
totresult.SetLineWidth(2)
fitresult.Draw("lsamex0")
totresult.Draw("samel2")
temp0.SetLineColor(kRed)
temp0.SetLineWidth(2)
temp0.Draw("samel")
temp2.SetLineColor(kBlue)
temp2.SetLineWidth(2)
temp2.Draw("samel")
data_hist.SetMarkerStyle(20)
data_hist.Draw("samepe1x0")
self.TextBox(Dict[jetnum][suffix]["Chi_2"],Dict[jetnum][suffix]["ndof"],label="Pre")
err = r.Double(0.0)
toterr = r.Double(0.0)
errstat = r.Double(0.0)
toterrstat = r.Double(0.0)
fitresult.IntegralAndError(4,8,errstat)
fitresult.IntegralAndError(4,8,toterrstat)
data_hist.IntegralAndError(4,8,err)
data_hist.IntegralAndError(0,8,toterr)
if jetnum != "2":self.Template_Yield(data_hist.Integral(4,5), "Data nb >= 3",stat_error = err,xaxis = 0.45,yaxis = 0.80)
self.Template_Yield(data_hist.Integral(), "Total Data ",stat_error = toterr,xaxis = 0.45,yaxis = 0.72)
if isdata == "Data" or isdata == "MC":
if jetnum != "2":
signal_syst_up = sqrt(reduce(lambda x,y : x+y,totup[3:]))
signal_syst_down = sqrt(reduce(lambda x,y : x+y,totdown[3:]))
tot_syst_up = sqrt(reduce(lambda x,y : x+y,totup))
tot_syst_down = sqrt(reduce(lambda x,y : x+y,totdown))
if jetnum != "2": self.Template_Yield(fitresult.Integral(4,5), "Template nb >=%s"%self.fitparam,stat_error = signal_syst_up,syst_error = signal_syst_down, xaxis = 0.45,yaxis = 0.76)
self.Template_Yield(fitresult.Integral(), "Total Template",stat_error = tot_syst_up,syst_error = tot_syst_down, xaxis = 0.45,yaxis = 0.68)
else:
if jetnum != "2":self.Template_Yield(fitresult.Integral(4,5), "Template nb >=%s"%self.fitparam,stat_error = errstat,xaxis = 0.45,yaxis = 0.76)
self.Template_Yield(fitresult.Integral(), "Total Template ",stat_error = toterrstat,xaxis = 0.45,yaxis = 0.68)
Dict[jetnum]["FitError"].append(totup)
Dict[jetnum]["FitError"].append(totdown)
Dict[jetnum]["FitResult"] = fitresult
self.c1.SaveAs("Final_Fit_To_%s_%s_%s_HTBin_%s%s_jet_mult_%s.png"%(isdata,suffix,self.Working_Point,self.sample_type,self.current_htbin,jetnum))
def Template_Yield(self,tot,name,stat_error='',syst_error='' ,xaxis = '',yaxis = ''):
Textbox = TLatex()
Textbox.SetNDC()
Textbox.SetTextAlign(12)
Textbox.SetTextSize(0.04)
if syst_error: Textbox.DrawLatex(xaxis,yaxis, "%s: %4.2f +%4.3f -%4.3f " %(name,tot,stat_error,syst_error))
else: Textbox.DrawLatex(xaxis,yaxis, "%s: %4.2f +- %4.3f" %(name,tot,stat_error))
def DoFit(self,num_param,jet_mult,suffix,Dict,isdata,combine = ''):
self.c1.cd(1)
sing_param = num_param
if combine == "True":
num_param = num_param * len(self.totaljetmultiplicity)
fit_type = self.totaljetmultiplicity
data = []
data_err = []
data_error_matrix = [0.0]*int(pow(self.fitparam*len(self.totaljetmultiplicity),2))
for numberjet in self.totaljetmultiplicity:
data += Dict[numberjet]["Data"][:sing_param]
data_err += Dict[numberjet]["Data_Err"][:sing_param]
for i in range(0,self.fitparam*len(self.totaljetmultiplicity)):
for j in range(0, self.fitparam*len(self.totaljetmultiplicity)):
counter = (i*self.fitparam*len(self.totaljetmultiplicity))+j
if (i== j): data_error_matrix[counter] =(pow(data_err[i],2))
else:
fit_type = [jet_mult]
data = Dict[jet_mult]["Data"][:num_param]
data_err = Dict[jet_mult]["Data_Err"][:num_param]
data_error_matrix = Dict[jet_mult]["Data_Err_Matrix"]
fitresult = TH1D("fitresult", ";n_{b}^{reco};Entries", num_param, -0.50, (num_param-0.5))
data_hist = TH1D("data", ";n_{b}^{reco};Entries", num_param, -0.50, (num_param-0.5))
template0 = TH1D("template0", ";n_{b}^{reco};Entries", num_param, -0.50, (num_param-0.5))
template2 = TH1D("template2", ";n_{b}^{reco};Entries", num_param, -0.50, (num_param-0.5))
print "Making fit for %s parameters" %num_param
mc_templates = []
for jetmult in fit_type:
for temp1,temp2 in zip(Dict[jetmult][suffix]["Full_Template"][0][:sing_param],Dict[jetmult][suffix]["Full_Template"][1][:sing_param]):
mc_templates.append(temp1)
mc_templates.append(temp2)
A = TMatrixD(num_param,2,array.array('d',mc_templates))
Y = TMatrixD(num_param,1,array.array('d',data))
V = TMatrixD(num_param,num_param,array.array('d',data_error_matrix))
AT = TMatrixD(2,num_param)
AT.Transpose(A)
Vinv = TMatrixD(V)
Vinv.Invert()
C1 = TMatrixD(num_param,2)
C1.Mult(Vinv,A)
C2 = TMatrixD(2,2)
C2.Mult(AT,C1)
S1 = TMatrixD(num_param,1)
S1.Mult(Vinv,Y)
S2 = TMatrixD(2,1)
S2.Mult(AT,S1)
Cinv = TMatrixD(C2)
Cinv.Invert()
Cinv.Print()
Dict[jet_mult][suffix]["FitError_0"]=sqrt(Cinv(0,0))
Dict[jet_mult][suffix]["FitError_2"]=sqrt(Cinv(1,1))
Dict[jet_mult][suffix]["FitCovariance"]= (Cinv(1,0))
Theta = TMatrixD(2,1)
Theta.Mult(Cinv,S2)
Theta.Print()
#============== Make Plots =================
for i in range(0,len(mc_templates),2):
g = i/2
template0.Fill(g, mc_templates[i]*Theta(0,0));
template2.Fill(g, mc_templates[i+1]*Theta(1,0));
fitresult.Fill(g, mc_templates[i]*Theta(0,0) + mc_templates[i+1]*Theta(1,0));
for i in range(0,len(data)):
data_hist.Fill(i,data[i])
if isdata == "MC": data_hist.SetBinError(i+1,data_err[i])
if isdata == "Data": data_hist.SetBinError(i+1,self.Poission(data_hist.GetBinContent(i+1)))
chi2pre = self.Chi2(data_hist,fitresult,num_param,2)
Dict[jet_mult][suffix]["Theta"] = [ Theta(0,0),Theta(1,0)]
Dict[jet_mult][suffix]["Chi_2"] = chi2pre[0]
Dict[jet_mult][suffix]["ndof"] = chi2pre[1]
print "Chi squared value for Fit to %s is : %s" %(isdata,chi2pre[0])
self.c1.cd(1)
fitresult.GetYaxis().SetTitle("Events");
fitresult.GetXaxis().SetTitle("Num B-tags")
fitresult.SetTitle("Template fit to %s , Num Jets = %s" %(isdata,jet_mult))
fitresult.SetLineColor(kBlack)
fitresult.SetLineWidth(3)
fitresult.Draw("l")
template2.SetLineColor(kBlue)
template2.SetLineWidth(2)
template2.Draw("samel")
template0.SetLineColor(kRed)
template0.SetLineWidth(2)
template0.Draw("samel")
data_hist.SetMarkerStyle(20)
data_hist.Draw("samepe1x0")
self.TextBox(chi2pre[0],chi2pre[1],label="Pre")
#self.c1.SaveAs("SimFit_To_%s_%s_%s_HTbin_%s_jet_mult_%s_num_param_%s.png"%(isdata,suffix,self.Working_Point,self.current_htbin,(jet_mult if combine != "True" else "Simultaneous"),num_param))
def TextBox(self,chi_value,ndof,label=""):
Textbox = TLatex()
Textbox.SetNDC()
Textbox.SetTextAlign(12)
Textbox.SetTextSize(0.04)
if label == "Pre": Textbox.DrawLatex(0.45,0.85, "Chi^2 Parameters in fit : %4.3f, ndof: %s " %(chi_value,ndof))
if label == "Post": Textbox.DrawLatex(0.45,0.80, "Chi^2 Signal Region : %4.3f, ndof: %s" %(chi_value,ndof))
def Chi2(self,data_hist,fit_hist,ndof,constraints,label=''):
chi_sum = 0
for i in range(0,data_hist.GetNbinsX()):
if data_hist.GetBinError(i+1) != 0 and label == "Post" and i > 2:
chi_sum += (pow((data_hist.GetBinContent(i+1)-fit_hist.GetBinContent(i+1)),2)/pow(data_hist.GetBinError(i+1),2))
#print "Data: %s Fit: %s Data Error: %s ChiSum : %s"%(data_hist.GetBinContent(i+1),fit_hist.GetBinContent(i+1),data_hist.GetBinError(i+1),chi_sum)
if data_hist.GetBinError(i+1) != 0 and i < (ndof) and label != "Post":
chi_sum += (pow((data_hist.GetBinContent(i+1)-fit_hist.GetBinContent(i+1)),2)/pow(data_hist.GetBinError(i+1),2))
#print "Data: %s Fit: %s Data Error: %s ChiSum : %s"%(data_hist.GetBinContent(i+1),fit_hist.GetBinContent(i+1),data_hist.GetBinError(i+1),chi_sum)
ndof = (ndof-constraints)
chi_sum =chi_sum/ndof
return chi_sum,ndof
def Poission(self,value):
eh = [1.15, 1.36, 1.53, 1.73, 1.98, 2.21, 2.42, 2.61, 2.80, 3.00 ]
el = [0.00, 1.00, 2.00, 2.14, 2.30, 2.49, 2.68, 2.86, 3.03, 3.19 ]
if float(value) < 10: error = eh[int(value)]
else: error = sqrt(value)
return error
def Extract_Data(self,sample_list,htbin,jet_mult,Dict,isdata):
file = r.TFile.Open("%s.root" %sample_list[0])
data_array = []
data_array_err = []
if sample_list[3] == "Had": pathtobtagdist = sample_list[1]+htbin+"/Jad_Btag_Post_AlphaT_5_55_%s_%s"%(self.Working_Point,jet_mult)
else: pathtobtagdist = sample_list[1]+htbin+"/Jad_Btag_Pre_AlphaT_5_%s_%s"%(self.Working_Point,jet_mult)
btagdist = file.Get(pathtobtagdist)
for i in range(0,btagdist.GetNbinsX()):
data_array.append(btagdist.GetBinContent(i+1))
if isdata == "Data": data_array_err.append(self.Poission((btagdist.GetBinContent(i+1))))
else: data_array_err.append(btagdist.GetBinError(i+1))
Dict[jet_mult]["Data"] = data_array
Dict[jet_mult]["Data_Err"] = data_array_err
Dict[jet_mult]["Data_Err_Matrix"] = [0.0]*int(pow(len(data_array[:self.fitparam]),2))
for i in range(0,len(data_array[:self.fitparam])):
for j in range(0,len(data_array[:self.fitparam])):
counter = (i*len(data_array[:self.fitparam]))+j
if (i== j):Dict[jet_mult]["Data_Err_Matrix"][counter] =(pow(data_array_err[i],2))
def Btag_Rate(self,sample_list,htbin,jet_mult,MC_Dict,isdata):
pass_var = sample_list[2]
file = r.TFile.Open("%s.root" %sample_list[0])
DirKeys = file.GetListOfKeys()
for entry in DirKeys:
subdirect = file.FindObjectAny(entry.GetName())
dir = sample_list[1]+htbin
subdirect.GetName()
if dir == subdirect.GetName():
for entry in ["","_plus","_minus"]:
sflightsuffix = ""
sfbsuffix = ""
if isdata == "Data":
sflightsuffix = "SFlight"+entry+"_"
sfbsuffix = "SFb"+entry+"_"
for subkey in [ "GenJetPt_nBgen_"+jet_mult, "GenJetPt_noB_nBgen_"+jet_mult, "GenJetPt_c_nBgen_"+jet_mult, "Btagged_GenJetPt_nBgen_"+sfbsuffix+self.Working_Point+"_"+jet_mult, "Btagged_GenJetPt_noB_nBgen_"+sflightsuffix+self.Working_Point+"_"+jet_mult, "Btagged_GenJetPt_c_nBgen_" +sflightsuffix+self.Working_Point+"_"+jet_mult ]:
#========================================#
if subkey == "GenJetPt_noB_nBgen_%s"%jet_mult:
mistag_plot = file.Get(dir+"/"+subkey)
err = r.Double(0.0)
MC_Dict[jet_mult][pass_var]['Mistag_Efficiency%s'%entry] =mistag_plot.Integral()
mistag_plot.IntegralAndError(1,10000,err)
if entry == "":
try: MC_Dict[jet_mult][pass_var]["Mistag_Error"] = err/mistag_plot.Integral()
except ZeroDivisionError: MC_Dict[jet_mult][pass_var]["Mistag_Error"] = 0.0
if isdata == "Data": mistagname = "Btagged_GenJetPt_noB_nBgen_SFlight%s_%s_%s"%(entry,self.Working_Point,jet_mult)
if isdata == "MC": mistagname = "Btagged_GenJetPt_noB_nBgen_%s_%s"%(self.Working_Point,jet_mult)
if subkey == mistagname:
mplot = file.Get(dir+"/"+subkey)
err = r.Double(0.0)
try :MC_Dict[jet_mult][pass_var]['Mistag_Efficiency%s'%entry] = mplot.Integral()/(MC_Dict[jet_mult][pass_var]['Mistag_Efficiency%s'%entry])
except ZeroDivisionError: MC_Dict[jet_mult][pass_var]['Mistag_Efficiency%s'%entry] = 0.0
mplot.IntegralAndError(1,10000,err)
if entry == "":
try: MC_Dict[jet_mult][pass_var]["Mistag_Error"] = MC_Dict[jet_mult][pass_var]['Mistag_Efficiency']*sqrt(pow(MC_Dict[jet_mult][pass_var]["Mistag_Error"],2)+pow(err/mplot.Integral(),2))
except ZeroDivisionError: MC_Dict[jet_mult][pass_var]["Mistag_Error"] = 0.0
#========================================#
if subkey == "GenJetPt_c_nBgen_%s"%jet_mult:
ctag_plot = file.Get(dir+"/"+subkey)
err = r.Double(0.0)
MC_Dict[jet_mult][pass_var]['Ctag_Efficiency%s'%entry] =ctag_plot.Integral()
ctag_plot.IntegralAndError(1,10000,err)
if entry == "":
try: MC_Dict[jet_mult][pass_var]["Ctag_Error"] = err/ctag_plot.Integral()
except ZeroDivisionError: MC_Dict[jet_mult][pass_var]["Ctag_Error"] = 0.0
if isdata == "Data": ctagname = "Btagged_GenJetPt_c_nBgen_SFlight%s_%s_%s"%(entry,self.Working_Point,jet_mult)
if isdata == "MC": ctagname = "Btagged_GenJetPt_c_nBgen_%s_%s"%(self.Working_Point,jet_mult)
if subkey == ctagname:
cplot = file.Get(dir+"/"+subkey)
err = r.Double(0.0)
try :MC_Dict[jet_mult][pass_var]['Ctag_Efficiency%s'%entry] = cplot.Integral()/(MC_Dict[jet_mult][pass_var]['Ctag_Efficiency%s'%entry])
except ZeroDivisionError: MC_Dict[jet_mult][pass_var]['Ctag_Efficiency%s'%entry] = 0.0
cplot.IntegralAndError(1,10000,err)
if entry == "":
try: MC_Dict[jet_mult][pass_var]["Ctag_Error"] = MC_Dict[jet_mult][pass_var]['Ctag_Efficiency']*sqrt(pow(MC_Dict[jet_mult][pass_var]["Ctag_Error"],2)+pow(err/cplot.Integral(),2))
except ZeroDivisionError: MC_Dict[jet_mult][pass_var]["Ctag_Error"] = 0.0
#============================
if subkey == "GenJetPt_nBgen_%s"%jet_mult:
err = r.Double(0.0)
btag_gen_plot = file.Get(dir+"/"+subkey)
btag_gen_plot.IntegralAndError(1,10000,err)
MC_Dict[jet_mult][pass_var]["Btag_Efficiency%s"%entry] = btag_gen_plot.Integral()
if entry == "":
try:MC_Dict[jet_mult][pass_var]["Btag_Error"] = err/btag_gen_plot.Integral()
except ZeroDivisionError : MC_Dict[jet_mult][pass_var]["Btag_Error"] = 0.0
if isdata == "Data": btagname = "Btagged_GenJetPt_nBgen_SFb%s_%s_%s"%(entry,self.Working_Point,jet_mult)
if isdata == "MC": btagname = "Btagged_GenJetPt_nBgen_%s_%s"%(self.Working_Point,jet_mult)
if subkey == btagname:
err = r.Double(0.0)
bplot = file.Get(dir+"/"+subkey)
bplot.IntegralAndError(1,10000,err)
try: MC_Dict[jet_mult][pass_var]['Btag_Efficiency%s'%entry] = bplot.Integral()/(MC_Dict[jet_mult][pass_var]['Btag_Efficiency%s'%entry])
except ZeroDivisionError: MC_Dict[jet_mult][pass_var]['Btag_Efficiency%s'%entry] = 0.0
if entry == "":
try: MC_Dict[jet_mult][pass_var]["Btag_Error"] = MC_Dict[jet_mult][pass_var]['Btag_Efficiency']*sqrt(pow(MC_Dict[jet_mult][pass_var]["Btag_Error"],2)+pow(err/bplot.Integral(),2))
except ZeroDivisionError: MC_Dict[jet_mult][pass_var]["Btag_Error"] = 0.0
file.Close()
def Generate_Templates(self,sample,htbin,jet_mult,Dict,isdata):
file = r.TFile.Open("%s.root" %sample[0])
if sample[3] == "Had": pathtomatched = sample[1]+htbin+"/Matched_vs_Matched_Template_noB_vs_c_alphaT_%s"%jet_mult
else: pathtomatched = sample[1]+htbin+"/Matched_vs_Matched_Template_noB_vs_c_%s"%jet_mult
variable = sample[2]
s_vs_b = file.Get(pathtomatched)
comparedict = {'Normal':'','Plus':"_plus",'Minus':"_minus"}
for suffix in comparedict:
Formula_List = self.Yield_Calculator(s_vs_b,jet_mult,variable,Dict,comparedict[suffix],isdata)
if isdata == "Data":
for num,i in enumerate(Formula_List[0]):
Formula_List[0][num] = i* float(self.Lumo) * 10
Formula_List[1][num] = Formula_List[1][num]* float(self.Lumo) * 10
Dict[jet_mult][suffix]["Full_Template"].append(Formula_List[0])
file.Close()
def Yield_Calculator(self,s_vs_b,jet_mult,hypothesis_category,Dict,suffix,isdata):
def bcombo(b, s,charm, e, m,c, hist):
Nb = b;
Ns = s;
Nc = charm;
#here you set the upper limits for the loop...
Nbmax = 4 #hist.GetNbinsX()
Nsmax = hist.GetNbinsY()
Ncmax = 4 #hist.GetNbinsZ()
#this is the result to return...
final_yield = 0.0
final_error = 0.0
for x in range(Nb,Nbmax):
for y in range(Ns,Nsmax):
for z in range(Nc,Ncmax):
final_yield += hist.GetBinContent(x+1, y+1,z+1) * TMath.Binomial(x,b) * pow(e,b) * pow(1.0 - e, x-b) * TMath.Binomial(y,s) * pow(m,s) * pow(1.0 - m, y-s) * TMath.Binomial(z,charm) * pow(c,charm) * pow(1.0 - c, z-charm)
final_error += pow(hist.GetBinError(x+1, y+1,z+1) * TMath.Binomial(x,b) * pow(e,b) * pow(1.0 - e, x-b) * TMath.Binomial(y,s) * pow(m,s) * pow(1.0 - m, y-s) * TMath.Binomial(z,charm) * pow(c,charm) * pow(1.0 - c, z-charm) ,2)
return(final_yield,final_error)
Yields = []
Yields_Error = []
Formula_List = [0,1,2,3,4]
if isdata == "MC":
if suffix == "_plus":
new_eff = Dict[jet_mult][hypothesis_category]["Btag_Efficiency"] + Dict[jet_mult][hypothesis_category]["Btag_Error"]
new_mis = Dict[jet_mult][hypothesis_category]["Mistag_Efficiency"] + Dict[jet_mult][hypothesis_category]["Mistag_Error"]
new_ceff = Dict[jet_mult][hypothesis_category]["Ctag_Efficiency"] + Dict[jet_mult][hypothesis_category]["Ctag_Error"]
if suffix == "_minus":
new_eff = Dict[jet_mult][hypothesis_category]["Btag_Efficiency"] - Dict[jet_mult][hypothesis_category]["Btag_Error"]
new_mis = Dict[jet_mult][hypothesis_category]["Mistag_Efficiency"] - Dict[jet_mult][hypothesis_category]["Mistag_Error"]
new_ceff = Dict[jet_mult][hypothesis_category]["Ctag_Efficiency"] - Dict[jet_mult][hypothesis_category]["Ctag_Error"]
if suffix == "":
new_eff = Dict[jet_mult][hypothesis_category]["Btag_Efficiency"]
new_mis = Dict[jet_mult][hypothesis_category]["Mistag_Efficiency"]
new_ceff = Dict[jet_mult][hypothesis_category]["Ctag_Efficiency"]
else:
new_eff = Dict[jet_mult][hypothesis_category]["Btag_Efficiency"]
new_mis = Dict[jet_mult][hypothesis_category]["Mistag_Efficiency"]
new_ceff = Dict[jet_mult][hypothesis_category]["Ctag_Efficiency"]
for num in Formula_List:
if float(num) <= float(jet_mult):
temp_yield = 0.0
temp_yield_error = 0.0
for j in range(0,num+1):
for k in range(0,num+1):
for l in range (0,num+1):
if j + k + l == num:
temp_yield += bcombo(j,k,l,new_eff,new_mis,new_ceff,s_vs_b)[0]
temp_yield_error += bcombo(j,k,l,new_eff,new_mis,new_ceff,s_vs_b)[1]
Yields.append(temp_yield)
Yields_Error.append(sqrt(temp_yield_error))
return (Yields,Yields_Error)