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Review of Analysis Methods for Correlations and Fluctuations Tom Trainor Firenze July 7, 2006
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Trainor2 Agenda Fluctuations on binned spaces Pearson’s normalized covariance Scale-dependent variance differences Inverting fluctuations to correlations Autocorrelations from pair counting Relating n and p t fluctuations to physics Trompe l’oeil and measure design
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Trainor3 Summary of Charge Fluctuation Measures Jeff Mitchell summary
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Trainor4 Summary of Event-by-event Fluctuation Measures pT pT pT,n F pT pT,dyn Goal of the observables: State a comparison to the expectation of statistically independent particle emission. Jeff Mitchell summary
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Trainor5 those slides are nice catalogs, but… Some similarity relations are violated for relevant conditions (e.g., low multiplicity) Some statistical measures exhibit misleading behaviors and/or strong biases Random variables in denominators lead to undesirable properties
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Trainor6 Fluctuations on Binned Spaces x1x1 x2x2 a b a b covariance variance xx xx x a b p t, n multiple events single-particle space two-particle space particle number n or scalar p t sum in bin na-nana-na nb-nbnb-nb bb aa 0 0 mixed-pair reference na-nana-na 0 marginal variances project variances for bins a, b covariance between a and b dependence on bin size or scale bin size = scale so, back to basics…
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Trainor7 Pearson’s Normalized Covariance r ab = 1 11 > 00< 0 covariance relative to marginal variances a b correlatedanticorrelated Karl Pearson, 1857-1936 uncorrelated geometric mean of marginal variances normalized covariance – the basic correlation measure e.g., forward-backward correlations 11 22
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Trainor8 Variance Difference normalized number covariancenormalized p t covariance Poisson normalized (scaled) variances, covariances: Pearson a = b scale-dependent variance difference omit 2 factor in denominator to facilitate n vs p t comparisons differential measure: CLT
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Trainor9 Correlations and Fluctuations running integral a covariance distribution measures correlations the scale integral of a covariance distribution measures fluctuations each bin is a mean of normalized covariances increasing scale angular autocorrelations contain averages of normalized covariances in 4D bins of ( ) variance difference macrobin size microbin separation autocorrelation
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Trainor10 Fluctuation Inversion 2D scale integral single point statistical reference data 2D scale inversion scale dependence autocorrelation STAR acceptance Rosetta stone for fluctuation and correlation analysis
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Trainor11 Derivation – Short Form x1x1 xx x2x2 xx M 0 0 macrobin average x1,ax1,a xx x2,bx2,b xx M m 0 0 xx k microbin average x1x1 x2x2 xx xx space invariance? average often true kxkx x1x1 x2x2 kxkx a+k a xx xx bin method strip method k autocorrelation methods: covariance distribution variance difference integration pair counting
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Trainor12 Inversion Precision: Comparisons Pythia pair counting inversion CICD number autocorrelations autocorrelations from pair counting or by inversion of fluctuation scale dependence Jeff Duncan
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Trainor13 ‘direct’ look at autocorrelation, computationally expensive: 200 GeV p-p joint autocorrelations n ptpt Autocorrelations from Pair Counting equivalent ratios for n and p t k l average over a,b on k th, l th diagonals STAR preliminary √ ref √ ref (GeV 2 /c 2 ) autocorrelations the hard way
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Trainor14 Projecting Two-point Momentum Space (y t1,y t2 ) correlations ( ) correlations √ ref angular autocorrelations (y t, ) 1 (y t, ) 2 not an autocorrelation n - number ptpt with ‘hard’ p t cut away-side same-side unlike-sign pairs rapidity correlations √ ref √ ref (GeV 2 /c 2 ) intra-jet inter-jet
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Trainor15 Two Correlation Types na-nana-na 0 0 na-nana-na 0 na-nana-na 0 0 nb-nbnb-nb common events exceptional events soft hard rare events relative frequency amplitude correlated and anticorrelated bins mixed reference Au-Au p-p log nb-nbnb-nb mixed reference √ ref (GeV 2 /c 2 ) √ ref
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Trainor16 The Physics Behind n Fluctuations CLT fluctuation scale (bin size) dependence integrates these two-particle correlations p-p Au-Aup-p Au-Au CD (negative) CI (positive) varies with bin size , 4D hypercube: (a,b, ) HBT
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Trainor17 The Physics Behind p t Fluctuations fluctuation scale (bin size) dependence integrates these two-particle correlations p-p Au-Au p-p Au-Au ptpt n varies with bin size x CLT
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Trainor18 Trompe l’Oeil
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Trainor19 v 2 and Elliptic Flow conventional abscissa and ordinate total variance difference multipoles extracted from p t (not number) autocorrelations 1/N part 1/ N part v2v2 quadrupole = mean participant path length p t correlations number correlations same 11 points elliptic flow compared directly to minijet correlations per-pair per-particle 1 8 8 1 1/ N part v 2 gives a misleading impression of flow centrality and p t trends
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Trainor20 The Balance Function true width variation fixed amplitude autocorrelation balance functionBF rms width acceptance factor acceptance width p-p 200 GeVAu-Au 130 GeV project HI peak volume variation acceptance invert 02 CD angular autocorrelations STAR HBT the BF width measures amplitudes, not correlation lengths rms width yy
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Trainor21 pt : the real DaVinci Code s NN 8-12 CERES STAR running average integral inversion 2.5 SSC: ~ 3 acceptance dependence pt s NN ref direct 2-point correlations A B B A centrality STAR estruct CERES ebye claim 130 GeV 22 C C assumes global thermalization
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Trainor22 Summary Pearson’s normalized covariance provides the basis for fluctuation/correlation measure design An integral equation connects fluctuation scale dependence to angular autocorrelations Fluctuations are physically interpretable by means of two-particle correlations Optimal projections of two-particle momentum space to lower-dimensional spaces are defined Some F/C measures can be misleading
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Trainor23 2 Dynamical –. fluctuation inversion correlations fluctuations biased measure Hijing 200 GeV Au-Au 65-85% central doesn’t tolerate low multiplicities physical unphysical scale dependence auto- correlations ref ** (GeV/c) 2 ref (GeV/c) 2 unphysical
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Trainor24 Fragmentation a new view of fragmentation p-p 200 GeV e + -e 91 GeV p-p 200 GeV
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Trainor25 02 ref CERES STAR running average s NN C
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Trainor26 Fussing about Fragmentation a new view of fragmentation p-p 200 GeV e + -e 91 GeV p-p 200 GeV
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