Redshift space correlations and scale-dependent stochastic biasing of density peaks
Vincent Desjacques, Ravi K. Sheth

TL;DR
This paper analyzes the redshift space correlations of density peaks in Gaussian fields, revealing scale-dependent biasing effects that impact growth rate measurements and understanding of cosmic structure formation.
Contribution
It introduces a detailed model of scale-dependent stochastic biasing of density peaks and examines its implications for redshift space distortions and growth rate estimation.
Findings
Peak velocities are unbiased and driven by dark matter flows.
Scale-dependent bias affects growth rate measurements, potentially mimicking modified gravity.
K-dependence of bias leads to stochasticity in configuration space bias.
Abstract
We calculate the redshift space correlation function and the power spectrum of density peaks of a Gaussian random field. In the linear regime k < 0.1 h/Mpc, the redshift space power spectrum is P^s_{pk}(k,u) = exp(-f^2 s_{vel}^2 k^2 u^2) * [b_{pk}(k) + b_{vel}(k) f u^2]^2 * P_m(k), where u is the angle with respect to the line of sight, s_{vel} is the one-dimensional velocity dispersion, f is the growth rate, and b_{pk}(k) and b_{vel}(k) are k-dependent linear spatial and velocity bias factors. For peaks, the value of s_{vel} depends upon the functional form of b_{vel}. The peaks model is remarkable because it has unbiased velocities -- peak motions are driven by dark matter flows -- but, in order to achieve this, b_{vel} is k-dependent. We speculate that this is true in general: k-dependence of the spatial bias will lead to k-dependence of b_{vel} even if the biased tracers flow with…
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