Covariance of cross-correlations: towards efficient measures for large-scale structure
Robert E. Smith (ITP, UZurich)

TL;DR
This paper develops a framework to analyze the covariance of cross-power spectra in large-scale structure, demonstrating that cross-correlations can reduce covariance and improve signal-to-noise ratios in clustering measurements.
Contribution
The paper introduces a counts-in-cells framework for multi-tracer covariance analysis and shows how cross-power spectra can outperform auto-power spectra in reducing covariance and enhancing measurement precision.
Findings
Cross-power spectra have lower off-diagonal covariance than auto-power spectra.
Cross-correlation improves signal-to-noise ratio for rare halo bias measurements.
Covariance strength depends on halo mass, with higher mass samples showing stronger covariance.
Abstract
We study the covariance of the cross-power spectrum of different tracers for the large-scale structure. We develop the counts-in-cells framework for the multi-tracer approach, and use this to derive expressions for the full non-Gaussian covariance matrix. We show, that for the usual auto-power statistic, besides the off-diagonal covariance generated through gravitational mode-coupling, the discreteness of the tracers and their associated sampling distribution can generate strong off-diagonal covariance, and that this becomes the dominant source of covariance as k>>k_f=2 pi/L. On comparison with the derived expressions for the cross-power covariance, we show that the off-diagonal terms can be suppressed, if one cross-correlates a high tracer-density sample with a low one. Taking the effective estimator efficiency to be proportional to the signal-to-noise ratio (SN), we show that, to…
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