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A question of separation: Disentangling tracer bias and gravitational non-linearity with counts-in-cells statistics

  • C. Uhlemann
  • , M. Feix
  • , S. Codis
  • , C. Pichon
  • , F. Bernardeau
  • , B. L'Huillier
  • , J. Kim
  • , S. E. Hong
  • , C. Laigle
  • , C. Park
  • , J. Shin
  • , D. Pogosyan
  • Universiteit Utrecht
  • Institut d’Astrophysique de Paris
  • University of Toronto
  • Centre national de la recherche scientifique
  • Korea Institute for Advanced Study
  • Korea Astronomy and Space Science Institute
  • University of Oxford
  • University of Alberta

Research output: Contribution to journalArticlepeer-review

Abstract

Starting from a very accurate model for density-in-cells statistics of dark matter based on large deviation theory, a bias model for the tracer density in spheres is formulated. It adopts a mean bias relation based on a quadratic bias model to relate the log-densities of dark matter to those of mass-weighted dark haloes in real and redshift space. The validity of the parametrized bias model is established using a parametrization-independent extraction of the bias function. This average bias model is then combined with the dark matter PDF, neglecting any scatter around it: it nevertheless yields an excellent model for densities-in-cells statistics of mass tracers that is parametrized in terms of the underlying dark matter variance and three bias parameters. The procedure is validated on measurements of both the one- and twopoint statistics of subhalo densities in the state-of-the-art Horizon Run 4 simulation showing excellent agreement for measured dark matter variance and bias parameters. Finally, it is demonstrated that this formalism allows for a joint estimation of the non-linear dark matter variance and the bias parameters using solely the statistics of subhaloes. Having verified that galaxy counts in hydrodynamical simulations sampled on a scale of 10 Mpc h-1 closely resemble those of subhaloes, this work provides important steps towards making theoretical predictions for density-in-cells statistics applicable to upcoming galaxy surveys like Euclid or WFIRST.

Original languageEnglish
Pages (from-to)5098-5112
Number of pages15
JournalMonthly Notices of the Royal Astronomical Society
Volume473
Issue number4
DOIs
Publication statusPublished - 1 Feb 2018

Keywords

  • Cosmology: theory
  • Large-scale structure of Universe

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