How to measure redshift-space distortions without sample variance
Patrick McDonald, Uros Seljak

TL;DR
This paper proposes a multi-tracer method to measure redshift-space distortions with unprecedented precision, significantly improving constraints on cosmological parameters and dark energy properties by reducing sample variance.
Contribution
It introduces a novel multi-tracer approach that enhances measurement accuracy of the growth rate and bias parameters beyond previous single-tracer methods.
Findings
Achieves up to 10-fold improvement in measuring the growth rate f.
Provides a more precise determination of bias ratios and non-Gaussianity.
Enhances the Figure of Merit for dark energy constraints by up to two orders of magnitude.
Abstract
We show how to use multiple tracers of large-scale density with different biases to measure the redshift-space distortion parameter beta=f/b=(dlnD/dlna)/b (where D is the growth rate and a the expansion factor), to a much better precision than one could achieve with a single tracer, to an arbitrary precision in the low noise limit. In combination with the power spectrum of the tracers this allows a much more precise measurement of the bias-free velocity divergence power spectrum, f^2 P_m - in fact, in the low noise limit f^2 P_m can be measured as well as would be possible if velocity divergence was observed directly, with rms improvement factor ~[5.2(beta^2+2 beta+2)/beta^2]^0.5 (e.g., ~10 times better than a single tracer for beta=0.4). This would allow a high precision determination of f D as a function of redshift with an error as low as 0.1%. We find up to two orders of magnitude…
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Taxonomy
TopicsAstronomy and Astrophysical Research · Scientific Research and Discoveries · Galaxies: Formation, Evolution, Phenomena
