Euclid preparation. L. Calibration of the linear halo bias in $\Lambda(\nu)$CDM cosmologies
Euclid Collaboration: T. Castro (1, 2, 3, 4), A. Fumagalli (5, and 3), R. E. Angulo (6, 7), S. Bocquet (8), S. Borgani (9, 3, 1 and, 2), M. Costanzi (9, 1, 3), J. Dakin (10), K. Dolag (8), P. Monaco (9, and 1, 2, 3), A. Saro (9, 3, 1, 2, 4), E. Sefusatti (1 and, 3, 2)

TL;DR
This paper improves the calibration of halo bias predictions for Euclid's galaxy cluster survey, ensuring accurate cosmological constraints by extending the peak-background split model with simulation-based corrections.
Contribution
It introduces a robust, simulation-calibrated halo bias model that remains accurate across different cosmologies, including those with massive neutrinos.
Findings
Calibrated halo bias model is resilient to cosmological parameter variations.
Model reduces biases in cluster-based cosmological constraints.
Implementation is publicly available for community use.
Abstract
The Euclid mission, designed to map the geometry of the dark Universe, presents an unprecedented opportunity for advancing our understanding of the cosmos through its photometric galaxy cluster survey. This paper focuses on enhancing the precision of halo bias (HB) predictions, which is crucial for deriving cosmological constraints from the clustering of galaxy clusters. Our study is based on the peak-background split (PBS) model linked to the halo mass function (HMF); it extends with a parametric correction to precisely align with results from an extended set of -body simulations carried out with the OpenGADGET3 code. Employing simulations with fixed and paired initial conditions, we meticulously analyze the matter-halo cross-spectrum and model its covariance using a large number of mock catalogs generated with Lagrangian Perturbation Theory simulations with the PINOCCHIO code. This…
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