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Reference Guide
rf103_interprfuncs.py File Reference

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namespace  rf103_interprfuncs
 

Detailed Description

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Basic functionality: interpreted functions and p.d.f.s

import ROOT
# Generic interpreted p.d.f.
# ------------------------------
# Declare observable x
x = ROOT.RooRealVar("x", "x", -20, 20)
# Construct generic pdf from interpreted expression
# ------------------------------------------------------
# ROOT.To construct a proper p.d.f, the formula expression is explicitly normalized internally by dividing
# it by a numeric integral of the expresssion over x in the range [-20,20]
#
alpha = ROOT.RooRealVar("alpha", "alpha", 5, 0.1, 10)
genpdf = ROOT.RooGenericPdf(
"genpdf",
"genpdf",
"(1+0.1*abs(x)+sin(sqrt(abs(x*alpha+0.1))))",
ROOT.RooArgList(
x,
alpha))
# Sample, fit and plot generic pdf
# ---------------------------------------------------------------
# Generate a toy dataset from the interpreted p.d.f
data = genpdf.generate(ROOT.RooArgSet(x), 10000)
# Fit the interpreted p.d.f to the generated data
genpdf.fitTo(data)
# Make a plot of the data and the p.d.f overlaid
xframe = x.frame(ROOT.RooFit.Title("Interpreted expression pdf"))
data.plotOn(xframe)
genpdf.plotOn(xframe)
# Standard p.d.f. adjust with interpreted helper function
# ------------------------------------------------------------------------------------------------------------
# Make a gauss(x,sqrt(mean2),sigma) from a standard ROOT.RooGaussian #
#
# Construct standard pdf with formula replacing parameter
# ------------------------------------------------------------------------------------------------------------
# Construct parameter mean2 and sigma
mean2 = ROOT.RooRealVar("mean2", "mean^2", 10, 0, 200)
sigma = ROOT.RooRealVar("sigma", "sigma", 3, 0.1, 10)
# Construct interpreted function mean = sqrt(mean^2)
mean = ROOT.RooFormulaVar(
"mean", "mean", "sqrt(mean2)", ROOT.RooArgList(mean2))
# Construct a gaussian g2(x,sqrt(mean2),sigma)
g2 = ROOT.RooGaussian("g2", "h2", x, mean, sigma)
# Generate toy data
# ---------------------------------
# Construct a separate gaussian g1(x,10,3) to generate a toy Gaussian
# dataset with mean 10 and width 3
g1 = ROOT.RooGaussian("g1", "g1", x, ROOT.RooFit.RooConst(
10), ROOT.RooFit.RooConst(3))
data2 = g1.generate(ROOT.RooArgSet(x), 1000)
# Fit and plot tailored standard pdf
# -------------------------------------------------------------------
# Fit g2 to data from g1
r = g2.fitTo(data2, ROOT.RooFit.Save()) # ROOT.RooFitResult
r.Print()
# Plot data on frame and overlay projection of g2
xframe2 = x.frame(ROOT.RooFit.Title("Tailored Gaussian pdf"))
data2.plotOn(xframe2)
g2.plotOn(xframe2)
# Draw all frames on a canvas
c = ROOT.TCanvas("rf103_interprfuncs", "rf103_interprfuncs", 800, 400)
c.Divide(2)
c.cd(1)
ROOT.gPad.SetLeftMargin(0.15)
xframe.GetYaxis().SetTitleOffset(1.4)
xframe.Draw()
c.cd(2)
ROOT.gPad.SetLeftMargin(0.15)
xframe2.GetYaxis().SetTitleOffset(1.4)
xframe2.Draw()
c.SaveAs("rf103_interprfuncs.png")
Date
February 2018
Authors
Clemens Lange, Wouter Verkerke (C++ version)

Definition in file rf103_interprfuncs.py.