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University of Liverpool for the CDF Collaboration ICHEP 28th July 2006
Rare B Decays at CDF Sinéad M. Farrington University of Liverpool for the CDF Collaboration ICHEP 28th July 2006
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Outline Bd,s m+m- Bs Ds Ds Will show two analyses from CDF:
very rare decay (10-9 in Standard Model) strong probe of new physics scenarios Briefly also show: Bs Ds Ds not so rare (10-3) interesting CP properties 2
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Bd,s mm 3
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B mm in the Standard Model
In Standard Model FCNC decay B mm heavily suppressed Standard Model predicts A. Buras Phys. Lett. B 566,115 Bd mm further suppressed by CKM coupling (Vtd/Vts)2 Both are below sensitivity of Tevatron experiments SUSY scenarios (MSSM,RPV,mSUGRA) boost the BR by up to 100x Observe no events set limits on new physics Observe events clear evidence for new physics 4
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The Challenge pp collider: trigger on dimuons Mass resolution:
search region Mass resolution: separate Bd, Bs s(Mmm)~24MeV Large combinatorial background Key elements are select discriminating variables determine efficiencies estimate background 5
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Methodology Vertex muon pairs in Bd/Bs mass windows
Unbiased optimisation, signal region blind Aim to measure BR or set limit: Reconstruct normalisation mode (B+J/y K+) Construct likelihood discriminant to select B signal and suppress dimuon background Measure remaining background Measure the acceptance and efficiency ratios 6
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B mm Selection Discriminating variables: Proper decay length (l)
Pointing (Da) |f B – f vtx| Isolation (Iso) 7
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Likelihood Ratio Discriminant
Likelihood discriminant more powerful than cuts alone i: index over all discriminating variables Psig/bkg(xi): probability for event to be signal or background for a given measured xi Obtain probably density functions of variables using background: Data sidebands signal: Pythia Monte Carlo sample 8
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Optimisation Likelihood ratio discriminant: Optimise likelihood
for best 90% C.L. limit Bayesian approach include statistical and systematic errors Optimal cut: Likelihood ratio >0.99 9
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Unblinded Results BR(Bsmm) < 1.0×10-7 @ 95% CL
central-central central-extension 1 event found in Bs search window (expected background: 0.880.30) 2 events found in Bd search window (expected background: 1.860.34) (In central-central Muon sample only) BR(Bsmm) < 95% CL < 90% CL BR(Bdmm) < 95% CL < 90% CL 10 (These are currently world best limits)
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Bs DsDs 11
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Bs Ds Ds Results of Bs mixing analysis at CDF have yielded measurement of Dms (see talk at this conference by Stefano Giagu) DG/G gives complementary insight into CKM matrix 1/G(CP even) <1/G(CP odd) since the fast transition b ccs is mostly CP even Biggest contribution to lifetime difference comes from Bs Ds Ds (pure CP even) Can constrain DG/G by measuring branching fractions 12
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Relative BR Measurement
BR (Bs Ds Ds ) measured relative to B0 Ds D- 3 Ds modes Reconstructed Total yield:395 Control mode: 3 Ds modes Reconstructed Total yield:23 Bs Ds Ds: 13
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Summary Made BR measurement of CP mode Bs Ds Ds
Bd,s m+m- are a powerful probe of new physics Could give first hint of new physics at the Tevatron These are world best limits Impacting new physics scenarios’ phase space SO(10) Constrained MSSM hep-ph/ Phys. Lett B624, 47, 2005 14
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Back-up 15
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Searching for New Physics
Two ways to search for new physics: direct searches – seek e.g. Supersymmetric particles indirect searches – test for deviations from Standard Model predictions e.g. branching ratios In the absence of evidence for new physics set limits on model parameters l+ Z* c02 q l- BR(B mm)<1x10-7 q c01 q c+ l+ W+ n Trileptons 16
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Expected Background Extrapolate from data sidebands to obtain expected events Scale by the expected rejection from the likelihood ratio cut Also include contributions from charmless B decays Bhh (h=K/p) (use measured fake rates) 17
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Limits on BR(Bd,s mm) BR(Bsmm) < 1.0×10-7 @ 90% CL
BR(Bdmm) < 90% CL < 95% CL These are currently world best limits The future: Need to reoptimise after 1fb-1 for best results Assume linear background scaling now 18
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B mm in New Physics Models
SUSY could enhance BR by orders of magnitude MSSM: BR(B mm) tan6b may be 100x Standard Model m n l’i23 l i22 ~ b s RPV SUSY R-parity violating SUSY: tree level diagram via sneutrino observe decay for low tan b mSUGRA: B mm search complements direct SUSY searches Low tan b observation of trilepton events High tan b observation of B mm Or something else! A. Dedes et al, hep-ph/ 19
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Expected Background Tested background prediction in several control regions and find good agreement OS-: opposite sign muon, negative lifetime SS+: same sign muon, positive lifetime SS-: same sign muon, negative lifetime FM+: fake muon, positive lifetime 20
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Likelihood p.d.f.s Input p.d.f.s: Isolation Pointing angle
Ct significance New plots*** 21
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CDF six dedicated rare B triggers using all muon chambers to |h|1.1
Tracking capability leads to good mass resolution Use two types of muon pairs: central-central central-extension Central Muon Extension (0.6< |h| < 1.0) Central Muon Chambers (|h| < 0.6) 22
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Bd,s mm K+/K*/f B Rare Decays B+ mm K+ B0 mm K* Bs mm f
Lb mm L FCNC b sg* Penguin or box processes in the Standard Model: Rare processes: Latest Belle measurement hep-ex/ , hep-ex/ , hep-ex/ observed at Babar, Belle m m m m x10-7 23
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Motivations 1) Would be first observations in Bs and Lb channels
2) Tests of Standard Model branching ratios kinematic distributions (with enough statistics) Effective field theory for b s (Operator Product Expansion) Rare decay channels are sensitive to Wilson coefficients which are calculable for many models (several new physics scenarios e.g. SUSY, technicolor) Decay amplitude: C9 Dilepton mass distribution: C7, C9 Forward-backward asymmetry: C10 24
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Samples (CDF) Dedicated rare B triggers in total six Level 3 paths
Two muons + other cuts using all chambers to |h|1.1 Use two types of dimuons: CMU-CMU CMU-CMX Additional cuts in some triggers: Spt(m)>5 GeV Lxy>100mm mass(m m)<6 GeV mass(m m)>2.7 GeV 25
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Signal and Side-band Regions
Use events from same triggers for B+ and Bs(d) mm reconstruction. Search region: < Mmm < GeV - Signal region not used in optimization procedure s(Mmm)~24MeV Monte Carlo Search region Sideband regions: - 500MeV on either side of search region - For background estimate and analysis optimization.
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Pythia MC MC Samples Tune A default cdfSim tcl
realistic silicon and beamline pT(B) from Mary Bishai pT(b)>3 GeV && |y(b)|<1.5 Bsm+m- (signal efficiencies) B+JK+m+m-K+ (nrmlztn efncy and xchks) B+Jp+m+m-p+ (nrmlztn correction)
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SO(10) Unification Model
R. Dermisek et al., hep-ph/ tan(b)~50 constrained by unification of Yukawa coupling All previously allowed regions (white) are excluded by this new measurement Unification valid for small M1/2 (~500GeV) New Br(Bsmm) limit strongly disfavors this solution for mA= 500 GeV h2>0.13 mh<111GeV m+<104GeV Red regions are excluded by either theory or experiments Green region is the WMAP preferred region Blue dashed line is the Br(Bsmm) contour Light blue region excluded by old Bsmm analysis Excluded by this new result
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Method: Likelihood Variable Choice
Prob(l) = probability of Bsmm yields l>lobs (ie. the integral of the cumulative distribution) Prob(l) = exp(-l/438 mm) yields flat distribution reduces sensitivity to MC modeling inaccuracies (e.g. L00, SVX-z)
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Step 4: Compute Acceptance and Efficiencies
Most efficiencies are determined directly from data using inclusive J/ymm events. The rest are taken from Pythia MC. a(B+/Bs) = / (CMU-CMU) = / (CMU-CMX) eLH(Bs): ranges from 70% for LH>0.9 to 40% for LH>0.99 etrig(B+/Bs) = / (CMU-CMU) = / (CMU-CMX) Red = From MC Green = From Data Blue = combination of MC and Data ereco-mm(B+/Bs) = / (CMU-CMU/X) evtx(B+/Bs) = / (CMU-CMU/X) ereco-K(B+) = / (CMU-CMU/X)
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