The $n$-point streaming model: how velocities shape correlation functions in redshift space
Abstract
Starting from first principles, we derive the fundamental equations that relate the -point correlation functions in real and redshift space. Our result generalises the so-called `streaming model' to higher-order statistics: the full -point correlation in redshift-space is obtained as an integral of its real-space counterpart times the joint probability density of relative line-of-sight peculiar velocities. Equations for the connected -point correlation functions are obtained by recursively applying the generalised streaming model for decreasing . Our results are exact within the distant-observer approximation and completely independent of the nature of the tracers for which the correlations are evaluated. Focusing on 3-point statistics, we use an -body simulation to study the joint probability density function of the relative line-of-sight velocities of pairs of particles in a triplet. On large scales, we find that this distribution is approximately Gaussian and that its moments can be accurately computed with standard perturbation theory. We use this information to formulate a phenomenological 3-point Gaussian streaming model. A practical implementation is obtained by using perturbation theory at leading order to approximate several statistics in real space. In spite of this simplification, the resulting predictions for the matter 3-point correlation function in redshift space are in rather good agreement with measurements performed in the simulation. We discuss the limitations of the simplified model and suggest a number of possible improvements. Our results find direct applications in the analysis of galaxy clustering but also set the basis for studying 3-point statistics with future peculiar-velocity surveys and experiments based on the kinetic Sunyaev-Zel'dovich effect.
Cite
@article{arxiv.2005.05331,
title = {The $n$-point streaming model: how velocities shape correlation functions in redshift space},
author = {Joseph Kuruvilla and Cristiano Porciani},
journal= {arXiv preprint arXiv:2005.05331},
year = {2020}
}
Comments
48 pages, 16 figures, accepted for publication in JCAP