4.7 Article

Experimental cosmic statistics - II. Distribution

Journal

MONTHLY NOTICES OF THE ROYAL ASTRONOMICAL SOCIETY
Volume 313, Issue 4, Pages 725-733

Publisher

BLACKWELL SCIENCE LTD
DOI: 10.1046/j.1365-8711.2000.03256.x

Keywords

methods : numerical; methods : statistical; galaxies : clusters : general large-scale structure of Universe

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Colombi et al. (Paper I) investigated the counts-in-cells statistics and their respective errors in the tau CDM Virgo Hubble Volume simulation. This extremely large N-body experiment also allows a numerical investigation of the cosmic distribution function, Y((A) over tilde), itself for the first time. For a statistic A, Y((A) over tilde) is the probability density of measuring the value (A) over tilde in a finite galaxy catalogue. Y was evaluated for the distribution of counts-in-cells, P-N, the factorial moments, F-k, and the cumulants, <(xi)over bar>macr and S(N)s, using the same subsamples as Paper I. While Paper I concentrated on the first two moments of Y, i.e. the mean, the cosmic error and the cross-correlations, here the function Y is studied in its full generality, including a preliminary analysis of joint distributions Y((A) over tilde, (B) over tilde). The most significant, and reassuring result for the analyses of future galaxy data is that the cosmic distribution function is nearly Gaussian provided its variance is small. A good practical criterion for the relative cosmic error is that Delta A/A less than or similar to 0.2. This means that for accurate measurements, the theory of the cosmic errors, presented by Szapudi & Colombi and Szapudi, Colombi & Bernardeau, and confirmed empirically by Paper I, is sufficient for a full statistical description and thus for a maximum likelihood rating of models. As the cosmic error increases, the cosmic distribution function Y becomes increasingly skewed and is well described by a generalization of the lognormal distribution. The cosmic skewness is introduced as an additional free parameter. The deviation from Gaussianity of Y((F) over tilde(k)) and Y((S) over tilde(N)) increases with order k, N and similarly for Y((P) over tilde(N)) when N is far from the maximum of P-N, or when the scale approaches the size of the catalogue. For our particular experiment, Y((F) over tilde(k)) and Y(xi macr ) are well approximated with the standard lognormal distribution, as evidenced by both the distribution itself and the comparison of the measured skewness with that of the lognormal distribution.

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