Testing the accuracy of likelihoods for cluster abundance cosmology

Author:

Payerne C1ORCID,Murray C1,Combet C1ORCID,Doux C1ORCID,Fumagalli A2345,Penna-Lima M6

Affiliation:

1. CNRS, LPSC-IN2P3, Université Grenoble Alpes , F-38000 Grenoble, France

2. Dipartimento di Fisica – Sezione di Astronomia, Universitá di Trieste , Via Tiepolo 11, I-34131 Trieste, Italy

3. INAF – Osservatorio Astronomico di Trieste , Via G. B. Tiepolo 11, I-34131 Trieste, Italy

4. IFPU, Institute for Fundamental Physics of the Universe , Via Beirut 2, I-34151 Trieste, Italy

5. INFN, Sezione di Trieste , Via Valerio 2, I-34127 Trieste, Italy

6. Instituto de Física, Universidade de Brasília , 70910-900, Brasília, DF, Brazil

Abstract

ABSTRACTThe abundance of galaxy clusters is a sensitive probe to the amplitude of matter density fluctuations, the total amount of matter in the Universe as well as its expansion history. Inferring correct values and accurate uncertainties of cosmological parameters requires accurate knowledge of cluster abundance statistics, encoded in the likelihood function. In this paper, we test the accuracy of cluster abundance likelihoods used in the literature, namely the Poisson and Gaussian likelihoods as well as the more complete description of the Gauss–Poisson Compound likelihood. This is repeated for a variety of binning choices and analysis setups. In order to evaluate the accuracy of a given likelihood, this work compares individual posterior covariances to the covariance of estimators over the 1000 simulated dark matter halo catalogues obtained from PINOCCHIO algorithm. We find that for Rubin/LSST and Euclid-like surveys the Gaussian likelihood gives robust constraints over a large range of binning choices. The Poisson likelihood, that does not account for sample covariance, always underestimates the errors on the parameters, even when the sample volume is reduced or only high-mass clusters are considered. We find no benefit in using the more complex Gauss–Poisson Compound likelihood as it gives essentially the same results as the Gaussian likelihood, but at a greater computational cost. Finally, in this ideal setup, we note only a small gain on the parameter error bars when using a large number of bins in the mass–redshift plane.

Funder

CNRS

Publisher

Oxford University Press (OUP)

Subject

Space and Planetary Science,Astronomy and Astrophysics

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