Title: Moriond QCD 2002
1Relative Tuning of the Pythia Underlying Event
for Recent PDFs
- OUTLINE
- Introduction and Methodology
- Tools utilized
- Comparison Method
- Current Results
- Prospects
2I. Introduction
- A quite detailed study of the underlying event
has been performed by Rick Field a theorist
working in the CDF collaboration
(http//www.phys.ufl.edu/rfield/cdf/rdf_talks.htm
l) - This study has been sustained for more than 5
years - Working definition of the Underlying Event
- All but the hard scattering process
- ie beam-beam remnants (spectator partons), plus
possible ISR gluon radiations , plus the possible
Multiple Parton Interactions (MPI) - Systematic comparisons of CDF Run I data
(min.bias and soft jets) to different MC models
have been performed and finally led to a tuning
of Pythia underlying event model
3I. Introduction
First Step Second Steps
Pythia Version 6.115 6.206
PDF CTEQ4L CTEQ5L
Tuning Name Tune 0 Tune A, B, C, D
MSTP Values MSTP(81)1 (MPI on) MSTP(82)4 (dble gauss. had. matter dens.) MSTP(81)1 MSTP(82)4
PARP Values PARP(82)2.4 (MPI pT cut-off) PARP(67)4.0PARP(82)2.0 PARP(83)0.5PARP(84)0.4 PARP(85)0.9PARP(86)0.95 PARP(89)1800.0PARP(90)0.25
Usage at D0 mcp10-mcp14 cardfiles/np/v00-02-01 to v00-04-58 mcp14 cardfiles/np/v00-04-59 to v00-08-53 cardfiles/dzero/v00-05-01 to v00-08-53
4I. Introduction
- This tuning is PDF dependent (http//cepa.fnal.go
v/patriot/mc4run2/MCTuning/run2mc/R_Field.pdf) - This tuning fits CDF Run IIA min.biassoft jets
data - Provided decent choice for the renormalization
scales, this tuning also fits the UE for the
bbbar, di-photon, Zjets processes
(http//www.phys.ufl.edu/rfield/cdf/RickField_Wor
kshop_6-11-04.pdf)
5I. Methodolgy
- Since the UE tuning is PDF dependent it should
in principle be redone whenever changing from the
reference PDF (CTEQ5L for Tune A) - However this is obviously cumbersome since it
requires correcting either the data or the
detailed MC and re-doing the full tuning
procedure each time - I propose instead to start from a reference
(CTEQ5L for Tune A) that was properly tuned to
data and just to reproduce its UE properties - This only requires generator level or fast
simulation scan over the UE parameters whatever
set of parameters that reproduces the reference
UE constitutes the relative UE tuning for a given
PDF - I assume the p/pbar hadronic matter is described
by a double gaussian (MSTP(82)4 as in Tune A),
so Im left w/ scanning only over 7 PARP
parameters (67,82-86,90) since PARP(89)1800.0
keeps its fixed value (all the evolutions to
another CoM energy are internally treated within
Pythia)
6I. Methodolgy
Scan over the UE Parameters
UE Parameter Min Max Scan Step Default
PARP(67) 1.0 4.0 1.0 1.0
PARP(82) 1.8 2.1 0.1 2.0
PARP(83) 0.4 0.6 0.1 0.5
PARP(84) 0.3 0.5 0.1 0.2
PARP(85) 0.33 1.00 0.33 0.33
PARP(86) 0.33 1.00 0.33 0.66
PARP(90) 0.20 0.30 0.05 0.16
This scan contains 3888 different PARP
configurations
7II. Tools Utilized
- Generator
- Pythia v6.320
- PDF Library
- LHAPDF v4.0
- Fast detector simulation
- ATLFAST v2.60 (Atlas Collaboration), including
smeared tracks and jets - Events production
- Process
- Pythia minbias ? MSEL2 ? MSUB(91-95)
- ? elastic scattering diffraction low pT QCD,
w/ pT gt 0 GeV - Note the soft jets part is not yet produced (?
MSEL1, w/ pT gt 5 GeV) - Statistics
- 25k / sample (ie per PDF/ per PARP
combination) - PDF
- ref. sample
- CTEQ5L (LO fit LO aS)
- compar. sample
- CTEQ6LL, ALEKHIN02LO, MRST01LO (LO fit LO aS)
- CTEQ6L (LO fit NLO aS)
8II. Tools Utilized
- Events selection
- Similar to R. Field's
- events w/ 1 or 2 jets, pT(jets)gt 0 GeV,
eta(jets)lt2.0 - The transverse plane is divided into 4 regions
- towards Df(ojbect,leading jet)lt60
- away Df(ojbect, leading jet)gt120 (only for
2 jet events) - transverse regions 60ltDf(ojbect,leading
jet)lt120 - Look at tracks w/ pT(tracks)gt0.5 GeV and
eta(tracks)lt1.0 in the transverse regions - Construct 2-D histos
- Ntracks/Dh/Df/(1 GeV) vs leading jet pT
- SpT/ Dh/Df/(1 GeV) vs leading jet pT
(scalar pT sum) - Differences wrt R. Field
- I used "calorimeter jets" instead of track jets
- gt pT(jets)gt6 Gev instead of 0 GeV
- Note
- the overall efficiency is rather low (12) and
since I did not write any filter for the
produced events, the comparisons are only based
on a KS test of two 2-D histos w/ 3 k entries!!!
9Charged Particle DfCorrelations
- Look at charged particle correlations in the
azimuthal angle Df relative to the leading
charged particle jet. - Define Df lt 60o as Toward, 60o lt Df lt 120o
as Transverse, and - Df gt 120o as Away.
- All three regions have the same size in h-f
space, DhxDf 2x120o 4p/3.
10 Tuned PYTHIA 6.206 vs HERWIG 6.4 TransMAX/MIN
vs PT(chgjet1)
ltNchggt
ltPTsumgt
- Plots shows data on the transMAX/MIN ltNchggt and
transMAX/MIN ltPTsumgt vs PT(chgjet1). The solid
(open) points are the Min-Bias (JET20) data. - The data are compared with the QCD Monte-Carlo
predictions of HERWIG 6.4 (CTEQ5L, PT(hard) gt 3
GeV/c) and two tuned versions of PYTHIA 6.206
(PT(hard) gt 0, CTEQ5L, PARP(67)1 and PARP(67)4).
11III. Comparison Method
- Histo Comparisons for each PARP configuration
and for each PDF, the two - 2-D histos are compared using a 2-D
Kolmogorov-Smirnov test to those of the ref.
sample (just the shapes enter the comparison, not
the normalizations) - Global probability the probability assigned to
each comparison sample is simply the product 1
of the individual probability of comparing on one
hand the charged tracks density and on the other
hand the pTsum density - Tools all the histos and comparison methods are
taken from ROOT v4.04.02b -
Valid if only if var1 and var2 are not
correlated!!!
Have to calculate a conditional probability if
var1 and var2 are correlated!!!
12IV. Current Results
- PDF ALEKHIN02LO
- LO fit and LO aS
- 3881/3888 configs
- Max(PKS)0.967 008 (8 max configs)
- Min(PKS)2.058x10-10 (4 min configs)
UE Parameter Best Worst CTEQ5L Tune A
PARP(67) FLAT FLAT 4.0
PARP(82) 2.0 1.8 2.0
PARP(83) 0.6 0.4 0.5
PARP(84) 0.3 0.4 0.4
PARP(85) 0.66 0.33 0.9
PARP(86) 0.33-0.66 1.0 0.95
PARP(90) 0.30 0.30 0.25
13IV. Current Results
- PDF MRST01LO
- LO fit and LO aS
- 3820/3888 configs
- Max(PKS)0.956524 (12 max configs)
- Min(PKS)4.433x10-11 (4 min configs)
UE Parameter Best Worst CTEQ5L Tune A
PARP(67) FLAT FLAT 4.0
PARP(82) 1.80 1.90 2.0
PARP(83) 0.6 0.4 0.5
PARP(84) 0.3 0.5 0.4
PARP(85) 1.0 0.33 0.9
PARP(86) FLAT 1.0 0.95
PARP(90) 0.20 0.20 0.25
14IV. Current Results
- PDF CTEQ6L
- LO fit and NLO aS
- 3867/3888 configs
- Max(PKS)0.954313 (12 max configs)
- Min(PKS)2.924x10-10 (4 min configs)
UE Parameter Best Worst CTEQ5L Tune A
PARP(67) FLAT FLAT 4.0
PARP(82) 2.10 1.80 2.0
PARP(83) 0.6 0.4 0.5
PARP(84) 0.5 0.4 0.4
PARP(85) 1.0 0.33 0.9
PARP(86) FLAT 1.0 0.95
PARP(90) 0.25 0.30 0.25
15IV. Current Results
- PDF CTEQ6LL
- aka CTEQ6L1
- LO fit and LO aS
- 3886/3888 configs
- Max(PKS)0.977060 (12 max configs)
- Min(PKS)1.815x10-11 (4 min configs)
UE Parameter Best Worst CTEQ5L Tune A
PARP(67) FLAT FLAT 4.0
PARP(82) 2.00 2.00 2.0
PARP(83) 0.4 0.4 0.5
PARP(84) 0.5 0.4 0.4
PARP(85) 1.0 0.33 0.9
PARP(86) FLAT 1.0 0.95
PARP(90) 0.20 0.30 0.25
16IV. Current Results
Example w/ Alekhin 2002 LO PDF
ref
best
worst
 sameÂ
HT (GeV)
17IV. Current Results
ref
best
worst
 sameÂ
mET (GeV)
18IV. Current Results
ref
best
worst
 sameÂ
N(jets)
19IV. Current Results
ref
best
worst
 sameÂ
Total N(tracks)
20IV. Current Results
- After fixing the correlation issue
- Attaching file plots.root as _file0...
- root 1 h2_hist1_mix0-gtGetCorrelationFactor(1,2)
- (const Stat_t)1.22289661104907951e-01
- root 2 h2_hist1_mix1-gtGetCorrelationFactor(1,2)
- (const Stat_t)8.79092032677424529e-01
- root 3 h2_hist2_mix0-gtGetCorrelationFactor(1,2)
- (const Stat_t)1.18224432124161408e-01
- root 4 h2_hist2_mix1-gtGetCorrelationFactor(1,2)
- (const Stat_t)8.23833825978842360e-01
- The correlation coefficient drops from 80
downto 12 - This makes the marginal probabilities product an
acceptable approximation
Var1SpT/ Dh/Df/(1 GeV)
Var2Ntracks/Dh/Df/(1 GeV)
Var1(SpT/Ntracks)/ Dh/Df/(1 GeV)
21VI. Conclusions Prospects
- Conclusions
- There are flat directions (as expected in
multivariate analyses, especially w/ coarse scans
and limited statistics). In this case I propose
to pick the PARP value which is the closest to
the reference one (CTEQ5LTune A) -
- As expected the shape of the so-called best
configuration (green histos) is the closest to
that of the reference (black histos). This
demonstate that there is a measurable difference
between different UE settings for a given PDF and
that the UE is PDF-dependent. - Prospects
- Produce the low pT QCD samples
- Add them to the 2-D histos for the comparisons
- Couple of additional cross checks
- Increase the statistics
22VI. Prospects
- Produce the low pT QCD samples
- Add them to the 2-D histos for the comparisons
- Couple of additional cross checks
- Increase the statistics
23Back Up
24Pythia UE Parameters Definition
UE Parameter Definition
MSTP(81) MPI on/off
MSTP(82) 3 / 4 resp. single or double gaussian hadronic matter distribution in the p / pbar
PARP(67) ISR Max Scale Factor
PARP(82) MPI pT cut-off
PARP(83) Warm-Core parp(83) of matter in radius parp(84)
PARP(84) Warm-Core
PARP(85) prob. that an additional interaction in the MPI formalism gives two gluons, with colour connections to NN in momentum space
PARP(86) prob. that an additional interaction in the MPI formalism gives two gluons, either as described in PARP(85) or as a closed gluon loop. Remaining fraction is supposed to consist of qqbar pairs.
PARP(89) ref. energy scale
PARP(90) energy rescaling term for PARP(81-82)ECMPARP(90)
25VI. Final Checks on Shapes