The large-scale correlations of multicell densities and profiles: Implications for cosmic variance estimates

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Abstract

In order to quantify the error budget in the measured probability distribution functions of cell densities, the two-point statistics of cosmic densities in concentric spheres is investigated. Bias functions are introduced as the ratio of their two-point correlation function to the two-point correlation of the underlying dark matter distribution. They describe how cell densities are spatially correlated. They are computed here via the so-called large deviation principle in the quasi-linear regime. Their large-separation limit is presented and successfully compared to simulations for density and density slopes: This regime is shown to be rapidly reached allowing to get sub-percent precision for a wide range of densities and variances. The corresponding asymptotic limit provides an estimate of the cosmic variance of standard concentric cell statistics applied to finite surveys. More generally, no assumption on the separation is required for some specific moments of the two-point statistics, for instance when predicting the generating function of cumulants containing any powers of concentric densities in one location and one power of density at some arbitrary distance from the rest. This exact 'one external leg' cumulant generating function is used in particular to probe the rate of convergence of the large-separation approximation.

Original languageEnglish
Pages (from-to)1598-1613
Number of pages16
JournalMonthly Notices of the Royal Astronomical Society
Volume460
Issue number2
DOIs
Publication statusPublished - 1 Aug 2016

Keywords

  • Cosmology: theory
  • Large-scale structure of Universe
  • Methods: numerical
  • methods: analytical

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