Title: CMS Ecal Laser Monitoring System
1Wjets and Zjets studies at CMS
Analysis Overview
Candles and Ladders
- Data-driven strategy to study properties of W/Z
jets production in final states with electrons
and muons - Focus on LHC startup order
- Using different jet definitions - in some cases,
detector-wise orthogonal
Two inter-related analyses
Zjets candle analysis
- Test of Berends-Giele (BG) scaling through the
measurement of the Zn jets / Z(n1) jets ratio
as a function of n - High efficiency signal selection provides
candle dataset for - detector and physics object commissioning
studies - normalization of irreducible Z(??)jets
background in METjets new physics searches - New physics searches with SM Z bosons in the
final state, observed as a deviation from BG
scaling
W/Zjets _at_ LHC Overview
- W/Zjets have a large cross section at LHC with
final states including - leptons
- jets
- missing transverse energy (neutrinos)
- Dominant background for SM measurements (ex.
and Higgs production) and new physics searches
involving jets/leptons/MET final states
W/Zjets ratio analysis
- Test of BG scaling through the measurement of the
Wn jets / W(n1) jets ratio as a function of n,
along with the double ratio - Predict W gt 3,4 jet yields from lower jet
multiplicities, revealing excesses from new
physics processes with leptons, jets and MET
- High-efficiency event selection to increase S/B
ratio to suitable level for ML fit to extract
yields - Z candle only minimal isolation and vertex
requirements necessary due to discriminating
power of di-lepton invariant mass - W/Zjets ratio synchronized event selection for
W and Z events gt maximal cancellation of
systematic uncertainties in the double ratio.
Analysis Strategy
- Common selection requirements
- Single non-isolated HLT lepton trigger
- Electron/muon reconstruction
- Lepton identification
- Lepton isolation
- Lepton - primary vertex compatibility
- Jet clustering
- Electron(s) from W(Z) cleaning from jet
collections - Jet counting
-
Jet Clustering
- In these analyses, each yield measurement is done
as a function of inclusive jet multiplicity - We consider several types of jet with different
experimental constituents (all clustered with the
SISCone algorithm and a cone size of 0.5)
- calo-jets jets clustered from the calorimeter
(ECALHCAL) cells re-projected w.r.t. the primary
vertex (standard) - track-jets jets clustered from tracks consistent
with the event primary vertex (lower noise levels
relative to calorimeters) - JES corrected calo-jets synchronized with the
above calo-jets definition (mature
detector understanding) - Particle Flow jets synchronized with the above
calo-jets definition - These types of jets
- have orthogonal detector systematics calorimeter
vs tracker - probe different regions of phase space different
cuts in pT, 3.0 vs 2.4 in ?
- W specific requirements
- gt 1 lepton
- Z mass veto
- extra muon veto (e)
- MET gt 15 GeV (QCD rejection)
-
- Z specific requirements
- gt 2 leptons
- Z mass window
Event Reconstruction and Cut-Based Wjets, Zjets
selection
orthogonal selection
pT gt 30 GeV/c, h lt 3.0
pT gt 15 GeV/c, h lt 2.4
- Rather than a cutting-and-counting, we use
maximum likelihood fits to extract event yields,
as a function of the number of jets - Additional orthogonal discriminating variable
used to validate PDF parameterizations - Control samples from data are used to determine
distribution shapes and efficiencies required by
the fits, minimizing the reliance on Monte Carlo
simulation
pT gt 60 GeV/c, h lt 3.0
Maximum Likelihood Fits
pT gt 60 GeV/c, h lt 3.0
Data control samples
Maximum Likelihood Fits
- Maximal likelihood fits are performed for each
jet multiplicity in order to extract signal and
background yields.
- For Zjets events, the fit is based on the
di-lepton invariant mass
Z candle dataset
- For Wjets events, the fit is based on the W
transverse mass
- In the W fit, two different categories are
defined a heavy flavor (hf) enriched (
) and depleted region ( ),
dominated by signal and single top ,
respectively.
- The yields from the maximum likelihood fits are
used to calculate the ratios related to BG
scaling and between the W/Zjets yields - most
systematic uncertainties (PDFs, jet energy
scale, lepton isolation, etc.) cancel in these
ratios - Additionally, sPlots statistical background
subtraction, in conjunction with the maximal
likelihood fit, can be used to produce a pure,
high efficiency, Z(ll)jets sample - which can be
used for a number of applications related to
detector and physics object commissioning and
background normalization
- The hf enriched region is defined by a cut on
variables related to the impact parameters of
tracks matched to jets in the event, Dxyevt and
Dszevt.
BG scaling in W/Zjets events
Background control samples for m(ll) and mTW
shapes
W/Zjets ratio
BG scaling for W/Zjets
- Low jet multiplicities can be used to predict the
high multiplicity yields. - Comparison with measurements of the higher
multiplicities can quantify deviations from BG
scaling due to new physics in Z and
METjetslepton final states
hf variable control samples for signal and
background
Deviations from BG scaling
- Zjets candle sample
- High signal efficiency with sPlots statistical
background subtraction
MET correction for W(??)jets events deriived
from Z(??)jets events
Z(??)jets background normalization
Christopher S. Rogan, California Institute of
Technology - HCP2009 - Evian-les-Bains