• Aucun résultat trouvé

Measurement of the top quark pair production cross-section with ATLAS in the single lepton channel

N/A
N/A
Protected

Academic year: 2021

Partager "Measurement of the top quark pair production cross-section with ATLAS in the single lepton channel"

Copied!
21
0
0

Texte intégral

(1)

arXiv:1201.1889v2 [hep-ex] 26 Apr 2012

CERN-PH-EP-2011-201

Measurement of the top quark pair production cross-section

with ATLAS in the single lepton channel

The ATLAS Collaboration1

Abstract

A measurement of the production cross-section for top quark pairs (t¯t) in pp collisions ats = 7 TeV is presented using data

recorded with the ATLAS detector at the Large Hadron Collider. Events are selected in the single lepton topology by requiring an electron or muon, large missing transverse momentum and at least three jets. With a data sample of 35 pb−1, two different multivariate methods, one of which uses b-quark jet identification while the other does not, use kinematic variables to obtain cross-section measurements of σt¯t= 187± 11(stat.)+18−17(syst.)± 6(lumi.) pb and σt¯t= 173± 17(stat.)+18−16(syst.)± 6(lumi.) pb respectively.

The two measurements are in agreement with each other and with QCD calculations. The first measurement has a better a priori sensitivity and constitutes the main result of this Letter.

Keywords:

high-energy collider experiment, cross-section, top physics

1. Introduction

Measurements of the production and decay properties of top quarks are of central importance to the Large Hadron Collider (LHC) physics programme. Uncertainties on the theoretical predictions for the top quark pair production cross-section are now less than 10%, and comparisons with experimental mea-surements allow a precision test of the predictions of Quantum Chromodynamics. Furthermore, top quark pair production is an important background in many searches for physics beyond the Standard Model (SM). New physics may also give rise to ad-ditional t¯t production mechanisms or modifications of the top quark decay channels, which can affect the measured t¯t cross-section.

In the SM the t¯t production cross-section in pp collisions is calculated to be 165 +11−16 pb [1, 2, 3] at a centre-of-mass en-ergy √s = 7 TeV, assuming a top quark mass of 172.5 GeV.

Top quarks are predicted to decay to a W-boson and a b-quark (t → Wb) nearly 100% of the time. Events with a t¯t pair can be classified as ‘single lepton’, ‘dilepton’, or ‘all hadronic’ ac-cording to the decays of the two W-bosons: each can decay into quark-antiquark pairs (W → q1q¯2) or a lepton-neutrino pair

(W → ℓν). Events in the single lepton channel, when the lep-ton is an electron or a muon, are characterised by an isolated, prompt, energetic lepton, jets, and missing transverse momen-tum from the neutrino. At the Tevatron the t¯t cross-sections at √s = 1.8 TeV and ats = 1.96 TeV have been measured

by CDF [4, 5] and DØ [6, 7] in most channels. ATLAS and CMS have measured the t¯t cross-section ats = 7 TeV at the

LHC [8, 9, 10, 11].

1See Appendix for the list of collaboration members

This Letter describes measurements of the t¯t cross-section in the single lepton plus jets channel with 35 pb−1of data recorded by ATLAS in 2010. Taking advantage of the increased data sample, the measurement techniques developed in Ref. [8] were extended to employ kinematic likelihood discriminants to sep-arate signal from background and measure the cross-section. Two multivariate methods, one that includes b-quark jet iden-tification (b-tagging) and one which does not, use several vari-ables each to discriminate t¯t events from the background. The two analyses are sensitive to different sources of systematic un-certainty. For instance, the analysis without b-tagging is more sensitive to the multijet background, whereas the analysis with

b-tagging is sensitive to the background from W-boson

produc-tion in associaproduc-tion with b- and c-quarks. The clearer separaproduc-tion of signal and background leads to a smaller statistical uncer-tainty for the analysis with b-tagging. Another significant dif-ference between the two measurements is that the analysis with

b-tagging uses a profile likelihood that implements an in situ

fit of the dominant systematic uncertainties, which improves its performance considerably.

2. The ATLAS detector

The ATLAS detector [12] consists of an inner tracking sys-tem (inner detector, or ID) surrounded by a thin superconduct-ing solenoid providsuperconduct-ing a 2 T magnetic field, electromagnetic and hadronic calorimeters and a muon spectrometer (MS). The ID consists of silicon pixel and microstrip detectors, surrounded by a transition radiation tracker. The electromagnetic calorime-ter is a lead/liquid-argon (LAr) detector. Hadron calorimetry is based on two different detector technologies, with scintillator tiles or LAr as active media, and with either steel, copper, or

(2)

tungsten as the absorber material. The MS includes three large superconducting toroids arranged with an eight-fold azimuthal coil symmetry around the calorimeters, and a system of three stations of chambers for the trigger and for track measurements. A three-level trigger system is used to select interesting events. The level-1 trigger is implemented in hardware and uses a subset of detector information to reduce the event rate to a design value of at most 75 kHz. This is followed by two software-based trigger levels, level-2 and the event filter, which together reduce the event rate to about 200 Hz which is recorded for analysis.

The nominal pp interaction point at the centre of the detec-tor is defined as the origin of a right-handed coordinate system. The positive x-axis is defined by the direction from the interac-tion point to the centre of the LHC ring, with the positive y-axis pointing upwards, while the z-axis is along the beam direction. The azimuthal angle φ is measured around the beam axis and the polar angle θ is the angle from the z-axis. The pseudorapid-ity is defined as η =− ln tan(θ/2).

3. Simulated event samples

Monte Carlo (MC) simulation was used for various aspects of the analysis. The simulation consists of an event generator in-terfaced to a parton shower and hadronisation model, the results of which are passed through a full simulation of the ATLAS de-tector and trigger system [13, 14]. MC simulation was used when data-driven techniques were not available or to evaluate relatively small backgrounds and certain sources of systematic uncertainty.

For the calculation of the acceptance of the t¯t signal the next-to-leading order (NLO) generator MC@NLO v3.41 [15] was used with the top quark mass set to 172.5 GeV and with the NLO parton density function (PDF) set CTEQ66 [16].

W- and Z-boson production in association with jets was

sim-ulated with Alpgen v2.13, which implements the exact leading order (LO) matrix elements for final states with up to six partons and uses the ‘MLM’ matching procedure to remove the overlaps between samples with n and n + 1 final state partons [17]. The LO PDF set CTEQ6L1 [16] was used to generate W+jets and

Z+jets events with up to five partons. Diboson, WW, WZ and ZZ events were generated with Herwig [18, 19]. Like the

dibo-son production, single-top is also a relatively small background and is simulated using MC@NLO, invoking the ‘diagram re-moval scheme’ [20] to remove overlaps between single-top and

t¯t final states.

Unless otherwise noted, all events were hadronised with Herwig, using Jimmy [21] for the underlying event model. De-tails of the generator and underlying event tunes used are given in Ref. [22].

3.1. Systematic uncertainties on signal and background mod-elling

The use of simulated t¯t samples to calculate the signal accep-tance gives rise to various sources of systematic uncertainty. These arise from the choice of the event generator and PDF

set, and from the modelling of initial and final state radiation (ISR and FSR). The uncertainties due to the choice of genera-tor and parton shower model were evaluated by comparing the results obtained with MC@NLO to those of Powheg [23], with events hadronised with either Herwig or Pythia [24]. The un-certainty due to the modelling of ISR/FSR was evaluated using the AcerMC generator [25] interfaced to Pythia and by varying the parameters controlling the ISR/FSR emission by a factor of two up and down. The variation ranges used are comparable to those in [26] for ISR and [27] for FSR. Finally, the uncer-tainty in the PDF set used to generate t¯t samples was evaluated using a range of current PDF sets with the procedure described in Ref. [28, 29, 30].

The production of the W+jets background based on MC sim-ulation has uncertainties on the total cross-section, on the con-tribution of events with jets from heavy-flavour (b, c) quarks, and on the shape of kinematic distributions. The predictions of the total cross-section have uncertainties of order 50% [31], increasing with jet multiplicity. Total W+jets cross-section pre-dictions were not used in the cross-section measurement as this background was extracted from the fit to the data (see Section 7), but were used in the MC simulation shown in Figs. 1 to 4. A combination of the fitting method described in [32] and a counting method described here, both relying upon final states with one and two jets, was used to estimate the heavy flavour fractions in W+jets events. Since these bins are domi-nated by W+jet events, the total W+jet contribution to these events can be obtained, both with and without requiring at least one b-tagged jet. These four numbers are then used to constrain the following four event types which make up the W+jets sam-ple: W +b ¯b, W +c¯c, W +c and W+light flavours. Additionally it was assumed that the k-factors for W + b ¯b and W + c¯c are equal. MC simulation with Alpgen was used to estimate the b-tagging efficiencies for each sub-sample as well as to extrapolate from the one-jet to the two-jet bin. The dominant uncertainties in this method arise from jet energy scale and b-tagging uncertainties. As a result of this study, it was found that the W + b ¯b and W + c¯c sub-samples of events in the Alpgen MC simulation were to be rescaled by 1.30±0.65, whereas W + c events were rescaled by 1.0±0.4. An additional 25% relative uncertainty per jet bin was assigned to these flavour fractions when applied to the signal region based upon studies with Alpgen MC simulation.

The uncertainty on the shape of W+jets kinematic distribu-tions was assessed by changing the factorisation and renormal-isation scales by a factor of two up and down; and by varying the minimum pTof the final state quarks and gluons from 10 to

25 GeV, with 15 GeV being the default.

For the smaller backgrounds arising from Z+jets, single-top and diboson production, only the overall normalisation uncer-tainties were considered, taken to be 30% for Z+jets produc-tion, 10% for single-top producproduc-tion, determined from compar-isons of MCFM [33] and MC@NLO predictions, and 5% for diboson production, determined from MCFM studies of scale and PDF uncertainties.

(3)

4. Object selection

Single lepton t¯t events are characterised by the presence of an electron or muon, jets, and missing transverse momen-tum, which is an indicator of undetected neutrinos, in the fi-nal state. The events used in this afi-nalysis were triggered by single-lepton triggers. The electron trigger required a level-1 electromagnetic cluster in the calorimeter with transverse mo-mentum ET > 10 GeV. A more refined cluster selection was

applied in the level-2 trigger, and a match between the electro-magnetic cluster and an ID track was required in the event filter. The muon trigger required a track with transverse momentum

pT >10 GeV in the muon trigger chambers at level-1, matched

to a muon of pT >13 GeV reconstructed in the precision

cham-bers and combined with an ID track at the event filter.

The same object definition used for the previous t¯t cross-section measurement [8] was used in this analysis, except for more stringent electron selection criteria and ID track quality requirements for muons. Electron candidates were defined as electromagnetic clusters consistent with the energy deposition of an electron in the calorimeters and with an associated well-measured track. They were required to satisfy pT > 20 GeV

andcluster| < 2.47, where ηcluster is the pseudorapidity of the

cluster associated with the candidate. Candidates in the barrel to endcap calorimeter transition region 1.37 <cluster| < 1.52

were excluded. Muon candidate tracks were reconstructed from track segments in the different layers of the muon chambers. These segments were combined starting from the outermost layer, with a procedure that takes material effects into account, and matched with tracks found in the inner detector. The final candidates were refitted using the complete track information from both detector systems and required to satisfy pT > 20

GeV and|η| < 2.5.

To further reduce background from leptons produced in heavy-flavour or in-flight hadron decays the selected leptons were required to be ‘isolated’. For electrons the transverse mo-mentum, ET, deposited in the calorimeter cells inside an

iso-lation cone of size ∆R = p(∆η)2+ (∆φ)2 = 0.2 around the

electron position was corrected to take into account the leakage of the electron energy into this cone. The remaining ET was

required to be less than 4 GeV. Muons were required to have a distance ∆R greater than 0.4 from any jet with pT > 20 GeV,

which suppresses muons from heavy-flavour decays inside jets. Furthermore, the calorimeter transverse momentum in a cone of size ∆R = 0.3 around the muon direction was required to be less than 4 GeV, and the sum of track transverse momenta, other than the muon track, in a cone of size ∆R = 0.3 was required to be less than 4 GeV.

Pure samples of prompt muons and electrons were obtained from Z-boson events in the data and were used to correct the lepton trigger, and the reconstruction and selection efficiencies in MC simulation to match those in the data. The corrections were found to be small.

Jets were reconstructed [34] with the anti-kt algorithm [35,

36] with radius parameter 0.4 from clusters of adjacent calorimeter cells. If the closest object to an electron candi-date (before the above electron isolation requirement) was a jet

within a distance ∆R < 0.2, the jet was removed. The jet en-ergy scale (JES) and its uncertainty were derived by combining information from test-beam data, LHC collision data and simu-lation. The JES uncertainty was found to vary from 2% to 7% as a function of jet pTand η [37].

Jets arising from the hadronisation of b-quarks were identi-fied using an algorithm (JetProb) [38] which relies upon the transverse impact parameter d0of each track in the jet: this is

the distance of closest approach in the transverse x-y plane of a track to the primary vertex. It is signed with respect to the jet direction: the sign is positive if the track crosses the jet axis in front of the primary vertex, negative otherwise. The signed impact parameter significance, d0/σd0, of each selected track is compared to a resolution function for prompt tracks, to assess the probability that the track originates from the primary vertex. Here, σd0 is the uncertainty on d0. The individual track proba-bilities are then combined into a global probability that the jet originates from the primary vertex. The simulated data were smeared to reproduce the resolution found in collision data.

The b-tagging efficiencies and mistag rates were calibrated with data for a wide range of b-tagging efficiency requirements. The efficiency was measured in a sample of jets containing muons, making use of the transverse momentum of the muon relative to the jet axis. The mistag rates were measured on an inclusive jet sample with two methods, one using the invariant mass spectrum of tracks associated to reconstructed secondary vertices to separate light- and heavy-flavour jets, and the other based on the fraction of secondary vertices in data with neg-ative decay-length significance. The results of these measure-ments were applied in the form of pT-dependent scale factors

to correct the b-tagging performance in simulation to match the data. For a b-tagging efficiency around 50%, the scale factor was found to be approximately 0.9 in all bins of jet pT, and

the relative b-tagging efficiency uncertainty was found to range from 5% to 14% depending on the jet pT [38]. The mistag rate

and mistag scale factors are approximately 1% and 1.1, respec-tively, in the jet pTregion of interest, 20 < pT <100 GeV. The

analysis including b-tagging used the probabilities returned by the JetProb algorithm as a discriminating variable, as explained in Section 7.

The reconstruction of the missing transverse momentum

Emiss

T [39] was based upon the vector sum of the transverse

mo-menta of the reconstructed objects (electrons, muons, jets) as well as the transverse energy deposited in calorimeter cells not associated with these objects. The electrons, muons and jets were used in the Emiss

T calculation consistently with the

defini-tions and uncertainties stated above.

5. Event selection

Events that passed the trigger selection were required to contain exactly one reconstructed lepton with pT > 20 GeV,

matching the corresponding event filter object. Selected events were required to have at least one reconstructed primary ver-tex with at least five tracks. Events were discarded if any jet with pT >20 GeV was identified to be due to calorimeter noise

(4)

or activity out of time with respect to the LHC beam cross-ings. The ETmiss was required to be greater than 35 (20) GeV in the electron (muon) channel and the transverse mass con-structed from the lepton and ETmisstransverse momentum vec-tors was required to be greater than 25 GeV (60 GeV−Emiss

T ) in

the electron (muon) channel. The muon requirement is referred to as the ‘triangular cut’. The requirements were stronger in the electron channel to suppress the larger multijet background. Finally, events were required to have three or more jets with

pT >25 GeV and|η| < 2.5. The selected events were then

clas-sified by the number of jets fulfilling these requirements and by the lepton flavour. Table 1 shows the number of selected events in the data in the electron and muon channels, together with the SM expectations for the signal and the different backgrounds. All predictions were obtained from MC simulation except the multijet background estimate which was obtained from data as described in the next section.

Table 1: Number of observed events in the data in the electron and

muon channels after the selection cuts as a function of the jet multiplic-ity. The expected signal and background contributions are also given. All simulated processes are normalized to theoretical SM predictions, except the multijet background which uses the normalisation presented in Sec. 6. The quoted uncertainties include statistical, systematic and theoretical components, except for the multijet background. All num-bers correspond to an integrated luminosity of 35 pb−1.

Electron channel 3 jets 4 jets ≥ 5 jets

t¯t 117± 16 109± 15 76± 19 W+jets 524± 225 124± 77 35± 23 Multijet 64± 32 12± 6 8± 4 Single top 21± 5 7± 3 3± 2 Z+jets 60± 28 21± 15 8± 6 Diboson 9± 3 1.9± 1.5 0.4± 0.8 Predicted 795± 236 275± 84 130± 35 Observed 755 261 123

Muon channel 3 jets 4 jets ≥ 5 jets

t¯t 165± 22 156± 18 108± 27 W+jets 976± 414 222± 139 58± 38 Multijet 79± 24 18± 6 11± 3 Single top 31± 7 10± 4 4± 2 Z+jets 58± 26 14± 10 5± 4 Diboson 16± 4 3± 2 0.6± 0.8 Predicted 1325± 422 423± 143 186± 51 Observed 1289 436 190 6. Background evaluation

The main backgrounds to t¯t signal events in the single lep-ton plus jets channel arise from W-boson production in associ-ation with jets, in which the W decays leptonically, and from multijet production. Smaller backgrounds arise from Z+jets, diboson and single-top production. These smaller backgrounds have been estimated from MC simulation and normalised to the latest theoretical predictions, as discussed in Section 3.

The W+jets background is difficult to predict from theory, particularly in the high jet-multiplicity bins. A data-driven cross-check following methods similar to those described in Ref. [8] was therefore performed. The results obtained with data were found to agree with the MC predictions within the uncertainties. Both analyses presented here rely on the assump-tion that the MC simulaassump-tion correctly describes the kinematic properties of the W+jets events, whereas the normalisation of the W+jets cross-section was fitted from the data, as described in Section 7. In the analysis using b-tagging the theoretical un-certainty on the normalisation was used as a constraint in the fit, whereas in the other analysis it was allowed to vary freely.

The multijet background was measured with a data-driven approach. In the muon channel, the background from multi-jet events is dominated by ‘non-prompt’ muons arising from the decay of heavy-flavour hadrons, in contrast to the t¯t signal where muons arise from the ‘prompt’ decays of W-bosons. The multijet background can be estimated by defining two samples of muons, ‘loose’ and ‘tight’. The tight sample is the one de-fined in the event selection described above, whilst the loose sample satisfy the same criteria except the muon isolation re-quirements. Since the reconstructed muons from background are associated with jets, they tend to be much less isolated than the leptons in t¯t decays. Any sample of muons is composed of prompt and non-prompt muons and it is assumed that the tight muon sample is a subsample of the loose sample:

Nloose = Npromptloose + Nnonloose−prompt,

Ntight = ǫpromptNpromptloose + ǫnon−promptNnonloose−prompt, (1) where Nnonloose−prompt is the number of loose, non-prompt muons (with the other Nyx’s defined similarly) and ǫprompt (ǫnon−prompt) represents the probability for a prompt (non-prompt) muon that satisfies the loose criteria to also satisfy the tight ones. The probability ǫprompt was measured from the data using

high-purity samples dominated by Z-bosons decaying into muons. The probability ǫnon−promptfor a non-isolated lepton to pass the isolation cuts was measured by defining control samples dom-inated by multijet events. Two different control samples were defined to have at least one jet plus a muon (i) with high impact parameter significance or (ii) with low transverse mass of the muon-Emiss

T system plus reversed triangular cut. These control

samples gave consistent results. Contamination of the multijet control samples by muons from W and Z events was determined from MC simulation. The results of these studies are ǫnon−prompt and ǫpromptas a function of the muon η, from which the multijet

background expectations can be obtained as a function of any variable. A 30% systematic uncertainty was assigned to this estimate based on the observation that the method gives agree-ment to within 30% across the different jet multiplicities.

In the electron channel, the multijet background also in-cludes photons inside jets undergoing conversions into electron-positron pairs and jets with high electromagnetic fractions. A different method was used, based on a binned likelihood fit of the Emiss

T distribution in the region E miss

T < 35 GeV. The data

was fitted to the sum of four templates: multijet, t¯t, W+jets and 4

(5)

Z+jets. The templates for the latter three processes were

ob-tained from MC simulation whereas the multijet template was obtained from the data in a control region defined by the full event selection criteria except that the electron candidate fails one or more of the identification cuts. The multijet background was obtained by extrapolating the fraction of multijet events from the fit at low Emiss

T to the signal region at high E miss T .

Sev-eral choices of electron identification cuts were considered and the largest relative uncertainty among these (50%) was used as a conservative estimate of the systematic uncertainty of this back-ground evaluation.

7. Cross-section extraction

The t¯t production cross-section was extracted by exploiting the kinematical properties of t¯t events compared to those from the dominant background (W+jets) by means of likelihood dis-criminants (D) constructed from several variables. Templates of the distributions D for signal and all background samples were created using the TMVA package [40]. The variables were selected for their good discriminating power, small correlation with each other, and low sensitivity to potentially large uncer-tainties such as jet energy calibration. The variables are:

• The pseudorapidity η of the lepton, since leptons produced in t¯t events are more central than those in W+jet events. • The aplanarity A, defined as 3/2 times the

small-est eigenvalue of the momentum tensor Mi j =

PNobjects

k=1 pikpjk/

PNobjects

k=1 p 2

k, where pikis the i-th momentum

component of the k-th object and pkis the modulus of its

momentum. The lepton and the four leading jets are the objects included in the sum. To increase the separation power of the aplanarity distribution, the transformed vari-able exp (−8 × A) was used. This variable exploits the fact that t¯t events are more isotropic than W+jets events. • The charge of the lepton qlepton, which uses the fact that a

sample of t¯tevents should contain the same number of pos-itively and negatively charged leptons, while W+jet events produce an excess of positively charged leptons in pp col-lisions.

• HT,3p, defined as the sum of the transverse energies of

the third and fourth leading jets normalised to the sum of the absolute values of the longitudinal momenta of the four leading jets, the lepton and the neutrino, HT,3p =

P4 i=3|p

jet T,i|/

PNobjects

j=1 |pz, j|, where pT is the transverse

mo-mentum and pz the longitudinal momentum. The

longi-tudinal momentum of the neutrino was obtained using the quadratic W mass constraint and taking the solution with the smaller neutrino pz value. To increase the separation

power of the HT,3p distribution, the transformed variable

exp (−4 × HT,3p) was used.

• The average wJP of wJP = − log10Plfor the two jets with

lowest Pl in the event. Pl is the probability for a jet to

be a light jet from the JetProb b-tagging algorithm. These

correspond to the jets that have the highest probability to be heavy-flavour jets.

Two complementary analyses were performed, one which re-lied upon the use of b-tagging information (i.e. the variable wJP)

and one which did not. We refer to the analyses as ‘tagged’ and ‘untagged’, respectively. The untagged analysis employed the first three variables, whereas the tagged analysis did not con-sider the lepton charge but used HT,3p and wJP. wJP was not

included in the three-jet bin. Figures 1 to 4 show the distribu-tions of the discriminating variables for the selected data super-imposed on the signal and background SM predictions for the different jet multiplicities.

The t¯t cross-section was extracted by means of a likelihood fit of the signal and background discriminant distributions to those of the data. The fit yields the fractions of t¯t signal and backgrounds in the data sample. The fit was performed simul-taneously to four samples (three-jet exclusive and four-jet inclu-sive, electron and muon) in the untagged analysis and six sam-ples (three-jet exclusive, four-jet exclusive and five-jet inclu-sive, electron and muon) in the tagged analysis, as these were the combinations that provided maximum sensitivity. The dis-criminants were built separately for each jet multiplicity and lepton flavour subsample, and the different channels were com-bined in the likelihood fit by multiplying the individual likeli-hood functions.

The normalisation of the t¯t signal templates is the parame-ter of inparame-terest in the fit and was allowed to vary freely in both analyses. The t¯t cross-section was assumed to be common to all channels and the number of t¯t events in each subsample re-turned by the fit was related to the t¯t cross-section by the ex-pression σt¯t= Nsig/

R

Ldt × ǫsig



, where Nsigis the number of t¯t events,R Ldt is the integrated luminosity and ǫsigis the

prod-uct of the signal acceptance, selection efficiency and branching ratio, obtained from t¯t simulation. The normalisation of the backgrounds was treated differently in the two analyses. In the untagged analysis the multijet and small backgrounds (single-top, diboson and Z+jets production) were fixed in the fit to their expected contributions, whereas the W+jets background was al-lowed to vary freely in each channel. In the tagged analysis all backgrounds were allowed to vary within the uncertainties of their assumed cross-sections, described in Sections 3 and 6. These uncertainties were used as Gaussian constraints on the cross-section normalisation. The robustness of this fitting ap-proach was checked with ensemble tests. The central value and uncertainties returned by the fit were shown to be unbiased for a wide range of input cross-sections.

8. Systematic uncertainties

The evaluation of the systematic uncertainties was per-formed differently in the two analyses. The untagged analysis performed pseudo-experiments (PEs) with simulated samples which included the various sources of uncertainty. For exam-ple, for the JES uncertainty, PEs were performed with jet ener-gies scaled up and down according to their uncertainties and the 5

(6)

–2 –1 0 1 2 0 50 100 150 200 250 ηlepton Eve n ts / 0 .2 5 L dt = 35 pb–1 ∫ ATLAS tt W+Jets Data Other Multijets µ + 3 Jets 0 0.1 0.2 0.3 0.4 0.5 0.6 0.7 0.8 0.9 1 0 50 100 150 200 250 300 350 400 exp(–8×A) Eve nt s / 0 .0 5 L dt = 35 pb–1 ∫ ATLAS tt W+Jets Data Other Multijets µ + 3 Jets –1 0 1 0 200 400 600 800 1000 1200 1400 1600 1800 qlepton Eve nt s L dt = 35 pb–1 ∫ ATLAS tt W+Jets Data Other Multijets µ + 3 Jets exp(–4×HT,3p) 0 0.2 0.4 0.6 0.8 1 Eve n ts / 0 .1 0 100 200 300 400 500 600 700 L dt = 35 pb–1 ∫ ATLAS tt W+Jets Data Other Multijets µ + 3 Jets

Figure 1: Input variables to the likelihood discriminants in the exclusive

three-jet bin for the muon channel: lepton η (top), exp(−8 × A) (second from top),

lepton charge (third from top) and exp(−4× HT,3p) (bottom). All simulated pro-cesses are normalized to theoretical SM predictions, except the multijet back-ground which uses the normalisation presented in Sec. 6. The two top distribu-tions are used in the untagged and the tagged analyses, the third distribution in the untagged analysis, and the bottom distribution in the tagged analysis.

0 20 40 60 80 100 –2 –1 0 1 2 ηlepton Eve nt s / 0 .2 5 L dt = 35 pb–1 ∫ ATLAS tt W+Jets Data Other Multijets e + ≥4 Jets 10 20 30 40 50 60 70 80 0 0 0.1 0.2 0.3 0.4 0.5 0.6 0.7 0.8 0.9 1 exp(–8×A) L dt = 35 pb–1 ∫ ATLAS tt W+Jets Data Other Multijets e + ≥4 Jets Eve nt s / 0 .0 5 0 100 200 300 400 500 600 Eve nt s –1 0 1 qlepton L dt = 35 pb–1 ∫ ATLAS tt W+Jets Data Other Multijets e + ≥4 Jets

Figure 2: Input variables to the likelihood discriminants in the inclusive four-jet

bin for the electron channel: lepton η (top), exp(−8 × A) (middle) and lepton

charge (bottom). All simulated processes are normalized to theoretical SM predictions, except the multijet background which uses the normalisation pre-sented in Sec. 6. These distributions are used in the untagged analysis.

(7)

0 20 40 60 80 100 –2 –1 0 1 2 ηlepton Eve nt s / 0 .5 L dt = 35 pb–1 ∫ ATLAS tt W+Jets Data Other Multijets µ + 4 Jets 0 20 40 60 80 100 120 140 160 Eve nt s / 0 .1 0 0.1 0.2 0.3 0.4 0.5 0.6 0.7 0.8 0.9 1 exp(–8×A) L dt = 35 pb–1 ∫ ATLAS tt W+Jets Data Other Multijets µ + 4 Jets 0 20 40 60 80 100 120 140 160 180 exp(–4×HT,3p) 0 0.2 0.4 0.6 0.8 1 Eve n ts / 0 .1 L dt = 35 pb–1 ∫ ATLAS tt W+Jets Data Other Multijets µ + 4 Jets L dt = 35 pb–1 ∫ ATLAS tt W+Jets Data Other Multijets µ + 4 Jets Eve nt s / 0 .5 1 10 102 0 2 4 6 8 10 12 14 wJP

Figure 3: Input variables to the likelihood discriminants in the exclusive

four-jet bin for the muon channel: lepton η (top), exp(−8 × A) (second from top),

exp(−4 × HT,3p) (third from top) and wJP(bottom). All simulated processes

are normalized to theoretical SM predictions, except the multijet background which uses the normalisation presented in Sec. 6. These distributions are used in the tagged analysis.

0 5 10 15 20 25 30 35 40 45 –2 –1 0 1 2 ηlepton Eve nt s / 0 .5 L dt = 35 pb–1 ∫ ATLAS tt W+Jets Data Other Multijets e + ≥5 Jets 0 10 20 30 40 50 60 70 Eve nt s / 0 .1 0 0.1 0.2 0.3 0.4 0.5 0.6 0.7 0.8 0.9 1 exp(–8×A) L dt = 35 pb–1 ∫ ATLAS tt W+Jets Data Other Multijets e + ≥5 Jets 0 10 20 30 40 50 exp(–4×HT,3p) 0 0.2 0.4 0.6 0.8 1 Eve n ts / 0 .1 L dt = 35 pb–1 ∫ ATLAS tt W+Jets Data Other Multijets e + ≥5 Jets 1 10 Eve nt s / 0 .5 0 2 4 6 8 10 12 14 wJP L dt = 35 pb–1 ∫ ATLAS tt W+Jets Data Other Multijets e + ≥5 Jets

Figure 4: Input variables to the likelihood discriminants in the inclusive five-jet

bin for the electron channel: lepton η (top), exp(−8 × A) (second from top),

exp(−4 × HT,3p) (third from top) and wJP (bottom). All simulated processes

are normalized to theoretical SM predictions, except the multijet background which uses the normalisation presented in Sec. 6. These distributions are used in the tagged analysis.

(8)

impact on the cross-section was evaluated. The tagged analysis, on the other hand, accounted for most of the changes in the nor-malisation and shape of the templates due to systematic uncer-tainties by adding ‘nuisance’ terms to the fit [41]. Templates of the samples with one standard deviation ’up’ and ’down’ vari-ations of the systematic uncertainty source under study were generated in addition to the nominal templates. The fit interpo-lated between these templates with a continuous parameter by means of a Gaussian constraint. Before the fit, the constraint was such that the mean value was zero and the width was one; a fitted width less than one means that the data were able to con-strain that particular source of uncertainty. The effects due to the modelling of the W+jets and multijet background shapes, initial and final state radiation, parton density function of the

t¯t signal, NLO generator, hadronisation and template statistics

cannot be fully described by a simple linear parameter control-ling the template interpolation. As a consequence, they were not treated as nuisance terms but obtained by performing PEs with modified simulated samples, as was done in the untagged analysis.

The nuisance parameters of the systematic uncertainties were all fitted together taking into account the correlations among them in the minimisation process. As a consequence, the un-certainties on the fitted quantities obtained from the fit include both the statistical and the total systematic components. There-fore, to obtain an estimation of the individual contributions to the total uncertainty in the tagged analysis, each individual sys-tematic uncertainty was obtained as the difference in quadrature between the total uncertainty and the uncertainty obtained after having fixed the corresponding nuisance parameter to its fitted value. The central values of the nuisance parameters after the fit agreed with their input values. The fit was cross-checked using PEs where the starting value of the nuisance parameters was different than the nominal value. The result was found to be unbiased. In addition, large variations of the kinematic depen-dence of the nuisance parameters (e.g. the JES as a function of the jet pT) were considered and resulted in a negligible impact

on the result of the fit.

The systematic uncertainties on the cross-section for both methods are summarised in Table 2. The dominant effects in the untagged analysis were JES, multijet and W+jets backgrounds shape and ISR/FSR. The latter was also important in the tagged analysis, together with the uncertainty related to the signal MC generator. In addition, this analysis was sensitive to effects re-lated to b-tagging, specifically the determination of the heavy-flavour content of the W+jets background and the calibration of the b-tagging algorithm itself. The luminosity uncertainty was 3.4% [42, 43].

Several cross-checks of the cross-section measurements were performed. These included the results of the likelihoods applied to individual lepton channels and t¯t cross-section measurements done with simpler and complementary approaches, including cut-and-count methods and fits to kinematic variables such as the reconstructed top mass. These cross-checks gave consistent results within the uncertainties.

Table 2: Statistical and systematic uncertainties on the measured t¯t

cross-section in the untagged and tagged analyses. Multijet and small backgrounds normalisation uncertainties are already included in the statistical uncertainty (a/i) in the tagged analysis. W+jets

heavy-flavour content and b-tagging calibration do not apply (n/a) to the un-tagged analysis. The luminosity uncertainty is not included in the ta-ble.

Method Untagged Tagged

Statistical Error (%) +10.1 −10.1 +5.8 −5.7

Object selection (%)

JES and jet energy resolution +4.1 −5.4 +3.9 −2.9

Lepton reconstruction,

identification and trigger +1.7 −1.6 +2.1 −1.8

Background modelling (%)

Multijet shape +3.5 −3.5 +0.8 −0.8

Multijet normalisation +1.1 −1.2 a/i

Small backgrounds norm. +0.6 −0.6 a/i

W+jets shape +3.9 −3.9 +1.0 −1.0

W+jets heavy-flavour content n/a +2.7 −2.4

b-tagging calibration n/a +4.1 −3.8

t¯t signal modelling (%) ISR/FSR +6.3 −2.1 +5.2 −5.2 NLO generator +3.3 −3.3 +4.2 −4.2 Hadronisation +2.1 −2.1 +0.4 −0.4 PDF +1.8 −1.8 +1.5 −1.5 Others (%) Simulation of pile-up +1.2 −1.2 <0.1 Template statistics +1.3 −1.3 +1.1 −1.1 Systematic Error (%) +10.5 −9.4 +9.7 −9.0

9. Results and conclusions

The results of the likelihood fits applied to the data are shown in Figs. 5 and 6, where the distributions of the criminants in data are overlaid on the fitted discriminant dis-tributions of the signal and backgrounds. The final measured cross-section results are: σt¯t = 173± 17(stat.)+18−16(syst.) ±

6(lumi.) pb = 173+25

−24 pb in the untagged analysis and σt¯t = 187±11(stat.)+18

−17(syst.)±6(lumi.) pb = 187 +22

−21pb in the tagged analysis. The two measurements are in agreement with each other. The latter has a better a priori sensitivity and thus con-stitutes the main result of this Letter. It is the most precise t¯t cross-section measurement at the LHC published to date and is in good agreement with the SM prediction calculated at NLO plus next-to-leading-log order 165+11−16pb [1, 2, 3].

10. Acknowledgements

We thank CERN for the very successful operation of the LHC, as well as the support staff from our institutions without whom ATLAS could not be operated efficiently.

We acknowledge the support of ANPCyT, Argentina; Yer-PhI, Armenia; ARC, Australia; BMWF, Austria; ANAS, Azer-baijan; SSTC, Belarus; CNPq and FAPESP, Brazil; NSERC, NRC and CFI, Canada; CERN; CONICYT, Chile; CAS, MOST 8

(9)

Eve nt s 100 200 300 400 R at io D at a/ F it 0 1 2 L dt = 35 pb–1 ∫ ATLAS tt W+Jets Data Other QCD µ + 3 Jets e + 3 Jets µ + ≥4 Jets e + ≥4 Jets Likelihood Discriminant 0 5 10 15 20 25 30 35 40

Figure 5: Untagged analysis: (Top) The distribution of the

likeli-hood discriminant for data superimposed on expectations for signal and backgrounds, scaled to the results of the fit. The left bins corre-spond to the muon channel and the right bins to the electron channel. (Bottom) The ratio of data to fit result.

and NSFC, China; COLCIENCIAS, Colombia; MSMT CR, MPO CR and VSC CR, Czech Republic; DNRF, DNSRC and Lundbeck Foundation, Denmark; ARTEMIS, European Union; IN2P3-CNRS, CEA-DSM/IRFU, France; GNAS, Geor-gia; BMBF, DFG, HGF, MPG and AvH Foundation, Germany; GSRT, Greece; ISF, MINERVA, GIF, DIP and Benoziyo Cen-ter, Israel; INFN, Italy; MEXT and JSPS, Japan; CNRST, Mo-rocco; FOM and NWO, Netherlands; RCN, Norway; MNiSW, Poland; GRICES and FCT, Portugal; MERYS (MECTS), Ro-mania; MES of Russia and ROSATOM, Russian Federation; JINR; MSTD, Serbia; MSSR, Slovakia; ARRS and MVZT, Slovenia; DST/NRF, South Africa; MICINN, Spain; SRC and Wallenberg Foundation, Sweden; SER, SNSF and Cantons of Bern and Geneva, Switzerland; NSC, Taiwan; TAEK, Turkey; STFC, the Royal Society and Leverhulme Trust, United King-dom; DOE and NSF, United States of America.

The crucial computing support from all WLCG partners is acknowledged gratefully, in particular from CERN and the ATLAS Tier-1 facilities at TRIUMF (Canada), NDGF (Den-mark, Norway, Sweden), CC-IN2P3 (France), KIT/GridKA (Germany), INFN-CNAF (Italy), NL-T1 (Netherlands), PIC (Spain), ASGC (Taiwan), RAL (UK) and BNL (USA) and in the Tier-2 facilities worldwide.

References

[1] S. Moch and P. Uwer, Phys. Rev. D 78 (2008) 034003.

[2] U. Langenfeld, S. Moch, and P. Uwer, Proc. XVII Int. Workshop on Deep-Inelastic Scattering and Related Topics, dx.doi.org/10.3360/dis.2009.131, arXiv:hep-ph/0907.2527.

[3] M. Beneke et al., Phys. Lett. B 690 (2010) 483; Predictions in this paper

are calculated with HATHOR [44] with mtop= 172.5 GeV, CTEQ66 [16],

where PDF and scale uncertainties were added linearly.

[4] T. Affolder et al., CDF Collaboration, Phys. Rev. D 64 (2001) 032002, erratum-ibid. D 67 (2003) 119901.

[5] T. Aaltonen et al., CDF Collaboration, Phys. Rev. Let. 105 (2010)

012001. Eve nt s 40 80 120 160 R at io D at a/ F it 0 1 2 Likelihood Discriminant 0 20 40 60 80 100 L dt = 35 pb–1 ∫ ATLAS tt W+Jets Data Other QCD 3 Jets

4 Jets ≥5 Jets 3 Jets 4 Jets ≥5 Jets

µ + Jets e + Jets

Figure 6: Tagged analysis: (Top) The distribution of the likelihood

dis-criminant for data superimposed on expectations for signal and back-grounds, scaled to the results of the fit. The left bins correspond to the muon channel and the right bins to the electron channel. (Bottom) The ratio of data to fit result.

[6] V. M. Abazov et al., D0 Collaboration, Phys. Rev. D 67 (2003) 012004. [7] V. M. Abazov et al., D0 Collaboration, to appear in Phys. Rev. D,

arXiV:hep-ex/1101.0124.

[8] The ATLAS Collaboration, Eur. Phys J. C 71 (2011) 1577.

[9] The ATLAS Collaboration, arXiv:hep-ph/1108.3699, to appear in Phys. Lett. B.

[10] The CMS Collaboration, JHEP 07 (2011) 049.

[11] The CMS Collaboration, Phys. Rev. D 84 (2011) 092004. [12] The ATLAS Collaboration, JINST 3 (2008) S08003. [13] The ATLAS Collaboration, Eur. Phys. J. C 70 (2010) 823. [14] S. Agostinelli et al., Nuc. Inst. Meth. in Phys. Res. A 50 (2003) 250. [15] S. Frixione, P. Nason and B.R. Webber, JHEP 08 (2003) 007. [16] J. Pumplin et al., JHEP 07 (2002) 012.

[17] M. L. Mangano, M. Moretti, F. Piccinini, R. Pittau and A. D. Polosa, JHEP 07 (2003) 001.

[18] G. Corcella et al., JHEP 01 (2001) 010. [19] G. Corcella et al., arXiv:hep-ph/0210213. [20] S. Frixione et al., JHEP 07 (2008) 029.

[21] J.M. Butterworth et al., Z. Phys. C 72 (1996) 637.

[22] The ATLAS Collaboration, ATLAS-PHYS-PUB-2010-014,

https://cdsweb.cern.ch/record/1303025 . [23] P. Nason, JHEP 11546 (2004) 040.

[24] T. Sj¨ostrand, S. Mrenna and P. Skands, JHEP 05 (2006) 026. [25] B.P. Kersevan and E. Richter-Was, arXiv:hep-ph/0405247. [26] P. Skands, Phys. Rev. D 82 (2010) 074018.

[27] P. Skands, arXiv:hep-ph/1005.3457v4. [28] M. Botje et al., arXiv:hep-ph/1101.0538. [29] R.D. Ball et al., Nucl. Phys. B 838 (2010) 136. [30] A.D. Martin et al., Eur. Phys. J. C 63 (2009) 189.

[31] M. L. Mangano, CERN-PH-TH-2008-019, arXiv:hep-ph/0802.0026. [32] The ATLAS Collaboration, Phys. Lett. B 707 (2012) 418.

[33] J.M. Campbell and R.K. Ellis, Phys. Rev. D 62 (2000) 114012. [34] The ATLAS Collaboration, Eur. Phys. J. C 71 (2011) 1512. [35] M. Cacciari, G.P. Salam and G. Soyez, JHEP 04 (2008) 063. [36] M. Cacciari and G. P. Salam, Phys. Lett. B 641 (2006) 57.

[37] The ATLAS Collaboration, CERN-PH-EP-2011-191, to be submitted to Eur. Phys. J. C.

[38] The ATLAS Collaboration, ATLAS-CONF-2011-089,

http://cdsweb.cern.ch/record/1356198.

[39] The ATLAS Collaboration, arXiv:hep-ph/1108.5602v1, submitted to Eur Phys. J. C.

[40] A. Hoecker et al., PoS ACAT (2007) 40 v4.1.0.

[41] N. Reid and D.A.S. Fraser, in Proceedings of PHYSTAT 2003, edited by 9

(10)

L. Lyons, R.P. Mount, and R. Reitmeyer, (SLAC, Stanford, 2003), p. 265. [42] The ATLAS Collaboration, Eur. Phys. J. 71 (2011), 1630.

[43] The ATLAS Collaboration, ATLAS-CONF-2011-011,

http://cdsweb.cern.ch/record/1334563. [44] M. Aliev et al., Comput. Phys. Commun. 182 (2011) 1034.

(11)

The ATLAS Collaboration

G. Aad48, B. Abbott110, J. Abdallah11, A.A. Abdelalim49, A. Abdesselam117, O. Abdinov10, B. Abi111, M. Abolins87, H. Abramowicz152, H. Abreu114, E. Acerbi88a,88b, B.S. Acharya163a,163b, D.L. Adams24, T.N. Addy56, J. Adelman174,

M. Aderholz98, S. Adomeit97, P. Adragna74, T. Adye128, S. Aefsky22, J.A. Aguilar-Saavedra123b,a, M. Aharrouche80, S.P. Ahlen21,

F. Ahles48, A. Ahmad147, M. Ahsan40, G. Aielli132a,132b, T. Akdogan18a, T.P.A. Åkesson78, G. Akimoto154, A.V. Akimov93,

A. Akiyama66, M.S. Alam1, M.A. Alam75, J. Albert168, S. Albrand55, M. Aleksa29, I.N. Aleksandrov64, F. Alessandria88a,

C. Alexa25a, G. Alexander152, G. Alexandre49, T. Alexopoulos9, M. Alhroob20, M. Aliev15, G. Alimonti88a, J. Alison119,

M. Aliyev10, P.P. Allport72, S.E. Allwood-Spiers53, J. Almond81, A. Aloisio101a,101b, R. Alon170, A. Alonso78,

B. Alvarez Gonzalez87, M.G. Alviggi101a,101b, K. Amako65, P. Amaral29, C. Amelung22, V.V. Ammosov127, A. Amorim123a,b,

G. Amor´os166, N. Amram152, C. Anastopoulos29, L.S. Ancu16, N. Andari114, T. Andeen34, C.F. Anders20, G. Anders58a,

K.J. Anderson30, A. Andreazza88a,88b, V. Andrei58a, M-L. Andrieux55, X.S. Anduaga69, A. Angerami34, F. Anghinolfi29,

N. Anjos123a, A. Annovi47, A. Antonaki8, M. Antonelli47, A. Antonov95, J. Antos143b, F. Anulli131a, S. Aoun82, L. Aperio Bella4,

R. Apolle117,c, G. Arabidze87, I. Aracena142, Y. Arai65, A.T.H. Arce44, J.P. Archambault28, S. Arfaoui82, J-F. Arguin14, E. Arik18a,∗, M. Arik18a, A.J. Armbruster86, O. Arnaez80, C. Arnault114, A. Artamonov94, G. Artoni131a,131b, D. Arutinov20, S. Asai154,

R. Asfandiyarov171, S. Ask27, B. Åsman145a,145b, L. Asquith5, K. Assamagan24, A. Astbury168, A. Astvatsatourov52, G. Atoian174, B. Aubert4, E. Auge114, K. Augsten126, M. Aurousseau144a, G. Avolio162, R. Avramidou9, D. Axen167, C. Ay54, G. Azuelos92,d, Y. Azuma154, M.A. Baak29, G. Baccaglioni88a, C. Bacci133a,133b, A.M. Bach14, H. Bachacou135, K. Bachas29, G. Bachy29,

M. Backes49, M. Backhaus20, E. Badescu25a, P. Bagnaia131a,131b, S. Bahinipati2, Y. Bai32a, D.C. Bailey157, T. Bain157,

J.T. Baines128, O.K. Baker174, M.D. Baker24, S. Baker76, E. Banas38, P. Banerjee92, Sw. Banerjee171, D. Banfi29, A. Bangert149,

V. Bansal168, H.S. Bansil17, L. Barak170, S.P. Baranov93, A. Barashkou64, A. Barbaro Galtieri14, T. Barber48, E.L. Barberio85,

D. Barberis50a,50b, M. Barbero20, D.Y. Bardin64, T. Barillari98, M. Barisonzi173, T. Barklow142, N. Barlow27, B.M. Barnett128,

R.M. Barnett14, A. Baroncelli133a, G. Barone49, A.J. Barr117, F. Barreiro79, J. Barreiro Guimar˜aes da Costa57, P. Barrillon114,

R. Bartoldus142, A.E. Barton70, V. Bartsch148, R.L. Bates53, L. Batkova143a, J.R. Batley27, A. Battaglia16, M. Battistin29,

G. Battistoni88a, F. Bauer135, H.S. Bawa142,e, B. Beare157, T. Beau77, P.H. Beauchemin160, R. Beccherle50a, P. Bechtle20,

H.P. Beck16, S. Becker97, M. Beckingham137, K.H. Becks173, A.J. Beddall18c, A. Beddall18c, S. Bedikian174, V.A. Bednyakov64,

C.P. Bee82, M. Begel24, S. Behar Harpaz151, P.K. Behera62, M. Beimforde98, C. Belanger-Champagne84, P.J. Bell49, W.H. Bell49,

G. Bella152, L. Bellagamba19a, F. Bellina29, M. Bellomo29, A. Belloni57, O. Beloborodova106, f, K. Belotskiy95, O. Beltramello29,

S. Ben Ami151, O. Benary152, D. Benchekroun134a, C. Benchouk82, M. Bendel80, N. Benekos164, Y. Benhammou152, J.A. Benitez Garcia158b, D.P. Benjamin44, M. Benoit114, J.R. Bensinger22, K. Benslama129, S. Bentvelsen104, D. Berge29, E. Bergeaas Kuutmann41, N. Berger4, F. Berghaus168, E. Berglund49, J. Beringer14, P. Bernat76, R. Bernhard48, C. Bernius24, T. Berry75, A. Bertin19a,19b, F. Bertinelli29, F. Bertolucci121a,121b, M.I. Besana88a,88b, N. Besson135, S. Bethke98, W. Bhimji45, R.M. Bianchi29, M. Bianco71a,71b, O. Biebel97, S.P. Bieniek76, K. Bierwagen54, J. Biesiada14, M. Biglietti133a, H. Bilokon47, M. Bindi19a,19b, S. Binet114, A. Bingul18c, C. Bini131a,131b, C. Biscarat176, U. Bitenc48, K.M. Black21, R.E. Blair5,

J.-B. Blanchard114, G. Blanchot29, T. Blazek143a, C. Blocker22, J. Blocki38, A. Blondel49, W. Blum80, U. Blumenschein54,

G.J. Bobbink104, V.B. Bobrovnikov106, S.S. Bocchetta78, A. Bocci44, C.R. Boddy117, M. Boehler41, J. Boek173, N. Boelaert35,

S. B¨oser76, J.A. Bogaerts29, A. Bogdanchikov106, A. Bogouch89,∗, C. Bohm145a, V. Boisvert75, T. Bold37, V. Boldea25a,

N.M. Bolnet135, M. Bona74, V.G. Bondarenko95, M. Bondioli162, M. Boonekamp135, G. Boorman75, C.N. Booth138, S. Bordoni77,

C. Borer16, A. Borisov127, G. Borissov70, I. Borjanovic12a, S. Borroni86, K. Bos104, D. Boscherini19a, M. Bosman11,

H. Boterenbrood104, D. Botterill128, J. Bouchami92, J. Boudreau122, E.V. Bouhova-Thacker70, C. Bourdarios114, N. Bousson82,

A. Boveia30, J. Boyd29, I.R. Boyko64, N.I. Bozhko127, I. Bozovic-Jelisavcic12b, J. Bracinik17, A. Braem29, P. Branchini133a,

G.W. Brandenburg57, A. Brandt7, G. Brandt15, O. Brandt54, U. Bratzler155, B. Brau83, J.E. Brau113, H.M. Braun173, B. Brelier157,

J. Bremer29, R. Brenner165, S. Bressler170, D. Breton114, D. Britton53, F.M. Brochu27, I. Brock20, R. Brock87, T.J. Brodbeck70,

E. Brodet152, F. Broggi88a, C. Bromberg87, G. Brooijmans34, W.K. Brooks31b, G. Brown81, H. Brown7,

P.A. Bruckman de Renstrom38, D. Bruncko143b, R. Bruneliere48, S. Brunet60, A. Bruni19a, G. Bruni19a, M. Bruschi19a, T. Buanes13, F. Bucci49, J. Buchanan117, N.J. Buchanan2, P. Buchholz140, R.M. Buckingham117, A.G. Buckley45, S.I. Buda25a, I.A. Budagov64, B. Budick107, V. B¨uscher80, L. Bugge116, D. Buira-Clark117, O. Bulekov95, M. Bunse42, T. Buran116, H. Burckhart29, S. Burdin72, T. Burgess13, S. Burke128, E. Busato33, P. Bussey53, C.P. Buszello165, F. Butin29, B. Butler142, J.M. Butler21, C.M. Buttar53, J.M. Butterworth76, W. Buttinger27, S. Cabrera Urb´an166, D. Caforio19a,19b, O. Cakir3a, P. Calafiura14, G. Calderini77,

P. Calfayan97, R. Calkins105, L.P. Caloba23a, R. Caloi131a,131b, D. Calvet33, S. Calvet33, R. Camacho Toro33, P. Camarri132a,132b, M. Cambiaghi118a,118b, D. Cameron116, L.M. Caminada14, S. Campana29, M. Campanelli76, V. Canale101a,101b, F. Canelli30,g,

A. Canepa158a, J. Cantero79, L. Capasso101a,101b, M.D.M. Capeans Garrido29, I. Caprini25a, M. Caprini25a, D. Capriotti98,

M. Capua36a,36b, R. Caputo147, C. Caramarcu24, R. Cardarelli132a, T. Carli29, G. Carlino101a, L. Carminati88a,88b, B. Caron84,

S. Caron48, G.D. Carrillo Montoya171, A.A. Carter74, J.R. Carter27, J. Carvalho123a,h, D. Casadei107, M.P. Casado11,

M. Cascella121a,121b, C. Caso50a,50b,∗, A.M. Castaneda Hernandez171, E. Castaneda-Miranda171, V. Castillo Gimenez166,

N.F. Castro123a, G. Cataldi71a, F. Cataneo29, A. Catinaccio29, J.R. Catmore29, A. Cattai29, G. Cattani132a,132b, S. Caughron87,

D. Cauz163a,163c, P. Cavalleri77, D. Cavalli88a, M. Cavalli-Sforza11, V. Cavasinni121a,121b, F. Ceradini133a,133b, A.S. Cerqueira23b,

(12)

A. Cerri29, L. Cerrito74, F. Cerutti47, S.A. Cetin18b, F. Cevenini101a,101b, A. Chafaq134a, D. Chakraborty105, K. Chan2, B. Chapleau84, J.D. Chapman27, J.W. Chapman86, E. Chareyre77, D.G. Charlton17, V. Chavda81, C.A. Chavez Barajas29, S. Cheatham84, S. Chekanov5, S.V. Chekulaev158a, G.A. Chelkov64, M.A. Chelstowska103, C. Chen63, H. Chen24, S. Chen32c, T. Chen32c, X. Chen171, S. Cheng32a, A. Cheplakov64, V.F. Chepurnov64, R. Cherkaoui El Moursli134e, V. Chernyatin24, E. Cheu6, S.L. Cheung157, L. Chevalier135, G. Chiefari101a,101b, L. Chikovani51a, J.T. Childers58a, A. Chilingarov70, G. Chiodini71a,

M.V. Chizhov64, G. Choudalakis30, S. Chouridou136, I.A. Christidi76, A. Christov48, D. Chromek-Burckhart29, M.L. Chu150,

J. Chudoba124, G. Ciapetti131a,131b, K. Ciba37, A.K. Ciftci3a, R. Ciftci3a, D. Cinca33, V. Cindro73, M.D. Ciobotaru162, C. Ciocca19a,

A. Ciocio14, M. Cirilli86, M. Citterio88a, M. Ciubancan25a, A. Clark49, P.J. Clark45, W. Cleland122, J.C. Clemens82, B. Clement55,

C. Clement145a,145b, R.W. Clifft128, Y. Coadou82, M. Cobal163a,163c, A. Coccaro50a,50b, J. Cochran63, P. Coe117, J.G. Cogan142,

J. Coggeshall164, E. Cogneras176, C.D. Cojocaru28, J. Colas4, A.P. Colijn104, N.J. Collins17, C. Collins-Tooth53, J. Collot55,

G. Colon83, P. Conde Mui˜no123a, E. Coniavitis117, M.C. Conidi11, M. Consonni103, V. Consorti48, S. Constantinescu25a,

C. Conta118a,118b, F. Conventi101a,i, J. Cook29, M. Cooke14, B.D. Cooper76, A.M. Cooper-Sarkar117, K. Copic14, T. Cornelissen173,

M. Corradi19a, F. Corriveau84, j, A. Cortes-Gonzalez164, G. Cortiana98, G. Costa88a, M.J. Costa166, D. Costanzo138, T. Costin30,

D. Cˆot´e29, R. Coura Torres23a, L. Courneyea168, G. Cowan75, C. Cowden27, B.E. Cox81, K. Cranmer107, F. Crescioli121a,121b,

M. Cristinziani20, G. Crosetti36a,36b, R. Crupi71a,71b, S. Cr´ep´e-Renaudin55, C.-M. Cuciuc25a, C. Cuenca Almenar174, T. Cuhadar Donszelmann138, M. Curatolo47, C.J. Curtis17, P. Cwetanski60, H. Czirr140, Z. Czyczula174, S. D’Auria53,

M. D’Onofrio72, A. D’Orazio131a,131b, P.V.M. Da Silva23a, C. Da Via81, W. Dabrowski37, T. Dai86, C. Dallapiccola83, M. Dam35, M. Dameri50a,50b, D.S. Damiani136, H.O. Danielsson29, D. Dannheim98, V. Dao49, G. Darbo50a, G.L. Darlea25b, C. Daum104,

W. Davey20, T. Davidek125, N. Davidson85, R. Davidson70, E. Davies117,c, M. Davies92, A.R. Davison76, Y. Davygora58a,

E. Dawe141, I. Dawson138, J.W. Dawson5,∗, R.K. Daya-Ishmukhametova39, K. De7, R. de Asmundis101a, S. De Castro19a,19b,

P.E. De Castro Faria Salgado24, S. De Cecco77, J. de Graat97, N. De Groot103, P. de Jong104, C. De La Taille114, H. De la Torre79,

B. De Lotto163a,163c, L. de Mora70, L. De Nooij104, D. De Pedis131a, A. De Salvo131a, U. De Sanctis163a,163c, A. De Santo148,

J.B. De Vivie De Regie114, S. Dean76, R. Debbe24, C. Debenedetti45, D.V. Dedovich64, J. Degenhardt119, M. Dehchar117,

C. Del Papa163a,163c, J. Del Peso79, T. Del Prete121a,121b, T. Delemontex55, M. Deliyergiyev73, A. Dell’Acqua29, L. Dell’Asta21,

M. Della Pietra101a,i, D. della Volpe101a,101b, M. Delmastro29, N. Delruelle29, P.A. Delsart55, C. Deluca147, S. Demers174,

M. Demichev64, B. Demirkoz11,k, J. Deng162, S.P. Denisov127, D. Derendarz38, J.E. Derkaoui134d, F. Derue77, P. Dervan72,

K. Desch20, E. Devetak147, P.O. Deviveiros157, A. Dewhurst128, B. DeWilde147, S. Dhaliwal157, R. Dhullipudi24,l,

A. Di Ciaccio132a,132b, L. Di Ciaccio4, A. Di Girolamo29, B. Di Girolamo29, S. Di Luise133a,133b, A. Di Mattia171, B. Di Micco29,

R. Di Nardo47, A. Di Simone132a,132b, R. Di Sipio19a,19b, M.A. Diaz31a, F. Diblen18c, E.B. Diehl86, J. Dietrich41, T.A. Dietzsch58a, S. Diglio85, K. Dindar Yagci39, J. Dingfelder20, C. Dionisi131a,131b, P. Dita25a, S. Dita25a, F. Dittus29, F. Djama82, T. Djobava51b, M.A.B. do Vale23c, A. Do Valle Wemans123a, T.K.O. Doan4, M. Dobbs84, R. Dobinson29,∗, D. Dobos29, E. Dobson29,m, J. Dodd34, C. Doglioni117, T. Doherty53, Y. Doi65,∗, J. Dolejsi125, I. Dolenc73, Z. Dolezal125, B.A. Dolgoshein95,∗, T. Dohmae154,

M. Donadelli23d, M. Donega119, J. Donini55, J. Dopke29, A. Doria101a, A. Dos Anjos171, M. Dosil11, A. Dotti121a,121b, M.T. Dova69, J.D. Dowell17, A.D. Doxiadis104, A.T. Doyle53, Z. Drasal125, J. Drees173, N. Dressnandt119, H. Drevermann29, C. Driouichi35, M. Dris9, J. Dubbert98, S. Dube14, E. Duchovni170, G. Duckeck97, A. Dudarev29, F. Dudziak63, M. D¨uhrssen29, I.P. Duerdoth81,

L. Duflot114, M-A. Dufour84, M. Dunford29, H. Duran Yildiz3a, R. Duxfield138, M. Dwuznik37, F. Dydak29, M. D¨uren52,

W.L. Ebenstein44, J. Ebke97, S. Eckweiler80, K. Edmonds80, C.A. Edwards75, N.C. Edwards53, W. Ehrenfeld41, T. Ehrich98,

T. Eifert29, G. Eigen13, K. Einsweiler14, E. Eisenhandler74, T. Ekelof165, M. El Kacimi134c, M. Ellert165, S. Elles4, F. Ellinghaus80,

K. Ellis74, N. Ellis29, J. Elmsheuser97, M. Elsing29, D. Emeliyanov128, R. Engelmann147, A. Engl97, B. Epp61, A. Eppig86,

J. Erdmann54, A. Ereditato16, D. Eriksson145a, J. Ernst1, M. Ernst24, J. Ernwein135, D. Errede164, S. Errede164, E. Ertel80,

M. Escalier114, C. Escobar122, X. Espinal Curull11, B. Esposito47, F. Etienne82, A.I. Etienvre135, E. Etzion152, D. Evangelakou54,

H. Evans60, L. Fabbri19a,19b, C. Fabre29, R.M. Fakhrutdinov127, S. Falciano131a, Y. Fang171, M. Fanti88a,88b, A. Farbin7,

A. Farilla133a, J. Farley147, T. Farooque157, S.M. Farrington117, P. Farthouat29, P. Fassnacht29, D. Fassouliotis8,

B. Fatholahzadeh157, A. Favareto88a,88b, L. Fayard114, S. Fazio36a,36b, R. Febbraro33, P. Federic143a, O.L. Fedin120, W. Fedorko87,

M. Fehling-Kaschek48, L. Feligioni82, D. Fellmann5, C. Feng32d, E.J. Feng30, A.B. Fenyuk127, J. Ferencei143b, J. Ferland92, W. Fernando108, S. Ferrag53, J. Ferrando53, V. Ferrara41, A. Ferrari165, P. Ferrari104, R. Ferrari118a, A. Ferrer166, M.L. Ferrer47, D. Ferrere49, C. Ferretti86, A. Ferretto Parodi50a,50b, M. Fiascaris30, F. Fiedler80, A. Filipˇciˇc73, A. Filippas9, F. Filthaut103, M. Fincke-Keeler168, M.C.N. Fiolhais123a,h, L. Fiorini166, A. Firan39, G. Fischer41, P. Fischer20, M.J. Fisher108, M. Flechl48, I. Fleck140, J. Fleckner80, P. Fleischmann172, S. Fleischmann173, T. Flick173, L.R. Flores Castillo171, M.J. Flowerdew98, M. Fokitis9, T. Fonseca Martin16, J. Fopma117, D.A. Forbush137, A. Formica135, A. Forti81, D. Fortin158a, J.M. Foster81, D. Fournier114, A. Foussat29, A.J. Fowler44, K. Fowler136, H. Fox70, P. Francavilla121a,121b, S. Franchino118a,118b, D. Francis29,

T. Frank170, M. Franklin57, S. Franz29, M. Fraternali118a,118b, S. Fratina119, S.T. French27, F. Friedrich43, R. Froeschl29,

D. Froidevaux29, J.A. Frost27, C. Fukunaga155, E. Fullana Torregrosa29, J. Fuster166, C. Gabaldon29, O. Gabizon170, T. Gadfort24,

S. Gadomski49, G. Gagliardi50a,50b, P. Gagnon60, C. Galea97, E.J. Gallas117, V. Gallo16, B.J. Gallop128, P. Gallus124, K.K. Gan108,

Y.S. Gao142,e, V.A. Gapienko127, A. Gaponenko14, F. Garberson174, M. Garcia-Sciveres14, C. Garc´ıa166, J.E. Garc´ıa Navarro49,

R.W. Gardner30, N. Garelli29, H. Garitaonandia104, V. Garonne29, J. Garvey17, C. Gatti47, G. Gaudio118a, O. Gaumer49, B. Gaur140,

L. Gauthier135, I.L. Gavrilenko93, C. Gay167, G. Gaycken20, J-C. Gayde29, E.N. Gazis9, P. Ge32d, C.N.P. Gee128, D.A.A. Geerts104,

Figure

Table 1: Number of observed events in the data in the electron and muon channels after the selection cuts as a function of the jet  multiplic-ity
Figure 2: Input variables to the likelihood discriminants in the inclusive four-jet bin for the electron channel: lepton η (top), exp( − 8 × A ) (middle) and lepton charge (bottom)
Figure 4: Input variables to the likelihood discriminants in the inclusive five-jet bin for the electron channel: lepton η (top), exp( − 8 × A ) (second from top), exp(−4 × H T,3p ) (third from top) and w JP (bottom)
Table 2: Statistical and systematic uncertainties on the measured t¯t cross-section in the untagged and tagged analyses
+2

Références

Documents relatifs

En plus des « recrutés en origine », cette main-d’œuvre est composée d’autres étrangers aux statuts administratifs divers : « sans- papiers », ressortissants

and modeling in the field of long-term ecotoxicology RECOTOX aims at developing research to investigate the long-term effects of chemical pollution induced by human

L. Molecular and epigenetic regulations and functions of the LAFL transcriptional regulators that control seed development.. Molecular and epigenetic regulations and

Using both isogenic laboratory strains and field-caught mosquitoes, we investigate the impact of two main insecticide resis- tance mechanisms (metabolic detoxification and target

Because of (i) the well-separated clade in- cluding those specimens with both mitochondrial and nuclear markers, (ii) the high distances be- tween those specimens and specimens from

(ii) do Corsican bumblebees exhibit particular changes in the overall genetic diversity and male marking secretions variability compared to their conspecific European

Twenty years ago, the non-tuberculous mycobacterium Mycobacterium malmoense was described as a new spe- cies after being isolated from the respiratory secretions of four patients

To identify environmental interactions between potentially pathogenic vibrios to oysters and plankton species that could drive their dynamics in the water column, we determined