Modeling and measuring the anisotropic halo 3-point correlation function: a coordinated study
Abstract
Ongoing and future spectroscopic galaxy surveys will cover unprecedented volumes with a number of objects large enough to effectively probe clustering anisotropies through higher-order statistics. In this work, we present a novel and efficient implementation of both a model for the multipole moments of the anisotropic 3-point correlation function (3PCF) and of their estimator. To evaluate the performance of our model, we compared its predictions against direct 3PCF measurements obtained with our estimator from a set of 298 dark matter halo catalogs drawn from the snapshots of -body simulations. For the statistical analysis, we employed a covariance matrix estimated from an independent suite of 3000 mock halo catalogs at the same redshift. We then repeated the analysis by combining the 2-point correlation function (2PCF) to the 3PCF, with and without including its anisotropic part. In the 3PCF-only analysis, the addition of the anisotropic component of the 3PCF effectively breaks the degeneracy between the growth rate and the linear bias , significantly reducing their uncertainties. It also significantly improves the precision of the Alcock-Paczynski parameter but does not reduce the % offset we find in the estimate of the isotropic dilation parameter . The joint 2PCF+3PCF analysis reduces, though does not fully remove, biases in the AP and isotropic dilation parameters and breaks the -- degeneracy, leading to tighter constraints overall. The anisotropic 3PCF adds little to the joint analysis because the tree-level 3PCF model fails to capture the anisotropic information primarily encoded on small scales and in squeezed triangle configurations. A more advanced model will be required to exploit this information fully.
Keywords
Cite
@article{arxiv.2408.03036,
title = {Modeling and measuring the anisotropic halo 3-point correlation function: a coordinated study},
author = {Antonio Farina and Alfonso Veropalumbo and Enzo Branchini and Massimo Guidi},
journal= {arXiv preprint arXiv:2408.03036},
year = {2026}
}
Comments
Accepted for publication in JCAP