Super-sample covariance approximations and partial sky coverage
Fabien Lacasa, Marcos Lima, Michel Aguena

TL;DR
This paper develops a harmonic expansion formalism to accurately predict super-sample covariance for large sky surveys, accounting for complex survey masks and improving upon previous approximations, with applications to galaxy clustering and lensing.
Contribution
It introduces a new harmonic expansion method for SSC prediction that handles arbitrary survey masks and improves accuracy over existing approximations.
Findings
The harmonic formalism recovers full sky and flat sky limits.
The method predicts negative cross-z covariance in survey masks.
Survey holes have minimal impact on SSC amplitude, only rescaling it.
Abstract
Super-sample covariance (SSC) is the dominant source of statistical error on large scale structure (LSS) observables for both current and future galaxy surveys. In this work, we concentrate on the SSC of cluster counts, also known as sample variance, which is particularly useful for the self-calibration of the cluster observable-mass relation; our approach can similarly be applied to other observables, such as galaxy clustering and lensing shear. We first examined the accuracy of two analytical approximations proposed in the literature for the flat sky limit, finding that they are accurate at the 15% and 30-35% level, respectively, for covariances of counts in the same redshift bin. We then developed a harmonic expansion formalism that allows for the prediction of SSC in an arbitrary survey mask geometry, such as large sky areas of current and future surveys. We show analytically and…
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