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SUNBIRD: A simulation-based model for full-shape density-split clustering

Authors :
Cuesta-Lazaro, Carolina
Paillas, Enrique
Yuan, Sihan
Cai, Yan-Chuan
Nadathur, Seshadri
Percival, Will J.
Beutler, Florian
de Mattia, Arnaud
Eisenstein, Daniel
Forero-Sanchez, Daniel
Padilla, Nelson
Pinon, Mathilde
Ruhlmann-Kleider, Vanina
Sánchez, Ariel G.
Valogiannis, Georgios
Zarrouk, Pauline
Publication Year :
2023

Abstract

Combining galaxy clustering information from regions of different environmental densities can help break cosmological parameter degeneracies and access non-Gaussian information from the density field that is not readily captured by the standard two-point correlation function (2PCF) analyses. However, modelling these density-dependent statistics down to the non-linear regime has so far remained challenging. We present a simulation-based model that is able to capture the cosmological dependence of the full shape of the density-split clustering (DSC) statistics down to intra-halo scales. Our models are based on neural-network emulators that are trained on high-fidelity mock galaxy catalogues within an extended-$\Lambda$CDM framework, incorporating the effects of redshift-space, Alcock-Paczynski distortions and models of the halo-galaxy connection. Our models reach sub-percent level accuracy down to $1\,h^{-1}{\rm Mpc}$ and are robust against different choices of galaxy-halo connection modelling. When combined with the galaxy 2PCF, DSC can tighten the constraints on $\omega_{\rm cdm}$, $\sigma_8$, and $n_s$ by factors of 2.9, 1.9, and 2.1, respectively, compared to a 2PCF-only analysis. DSC additionally puts strong constraints on environment-based assembly bias parameters. Our code is made publicly available on Github.<br />Comment: Submitted to MNRAS. Source code to generate the figures available in the captions. Updated to add missing references

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2309.16539
Document Type :
Working Paper