An optimized correlation function estimator for galaxy surveys
M. Vargas-Maga\~na, Julian. E. Bautista, J.-Ch. Hamilton, N.G. Busca,, \'E. Aubourg, A. Labatie, J.-M. Le Goff, Stephanie Escoffier, Marc Manera,, Cameron K. McBride, Donald P. Schneider, Christopher N. A. Willmer

TL;DR
This paper introduces an optimized correlation function estimator for galaxy surveys that reduces variance and improves parameter estimation accuracy compared to the standard Landy-Szalay method.
Contribution
The authors develop a new estimator combining paircounts to minimize variance for any survey geometry, with an iterative bias correction, applicable to various datasets.
Findings
Achieves 20-25% error bar reduction on correlation functions.
Provides 10-15% improvement in matter and dark energy density estimates.
Demonstrates effectiveness on simulated and SDSS data.
Abstract
Measuring the two-point correlation function of the galaxies in the Universe gives access to the underlying dark matter distribution, which is related to cosmological parameters and to the physics of the primordial Universe. The estimation of the correlation function for current galaxy surveys makes use of the Landy-Szalay estimator, which is supposed to reach minimal variance. This is only true, however, for a vanishing correlation function. We study the Landy-Szalay estimator when these conditions are not fulfilled and propose a new estimator that provides the smallest variance for a given survey geometry. Our estimator is a linear combination of ratios between paircounts of data and/or random catalogues (DD, RR and DR). The optimal combination for a given geometry is determined by using lognormal mock catalogues. The resulting estimator is biased in a model-dependent way, but we…
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