Validating the clustering predictions of empirical models with the FLAMINGO simulations
Sergio Contreras, Raul E. Angulo, Jon\'as Chaves-Montero, Roi Kugel,, Matthieu Schaller, Joop Schaye

TL;DR
This paper validates the predictive accuracy of empirical galaxy models, specifically HOD and SHAMe, for high-order clustering statistics using FLAMINGO simulations, supporting their use in cosmological analyses.
Contribution
It introduces GalaxyEmu-Planck, an emulator that accurately predicts clustering statistics from empirical models and validates these models against hydrodynamical simulations.
Findings
GalaxyEmu-Planck reproduces clustering and lensing statistics precisely.
SHAMe outperforms HOD in predicting higher-order statistics.
Removing some HOD parameters does not reduce model performance.
Abstract
Context. Mock galaxy catalogues are essential for correctly interpreting current and future generations of galaxy surveys. Despite their significance in galaxy formation and cosmology, little to no work has been done to validate the predictions of these mocks for high-order clustering statistics. Aims. We compare the predicting power of the latest generation of empirical models used in the creation of mock galaxy catalogues: a 13-parameter Halo Occupation Distribution (HOD) and an extension of the SubHalo Abundance Matching technique (SHAMe). Methods. We build GalaxyEmu-Planck, an emulator that makes precise predictions for the two-point correlation function, galaxy-galaxy lensing (restricted to distances greater than 1 to avoid baryonic effects), and other high-order statistics resulting from the evaluation of SHAMe and HOD models. Results. We evaluate the…
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Taxonomy
TopicsAdvanced Clustering Algorithms Research
