Euclid preparation: XII. Optimizing the photometric sample of the Euclid survey for galaxy clustering and galaxy-galaxy lensing analyses
Euclid Collaboration: A. Pocino, I. Tutusaus, F.J. Castander, P., Fosalba, M. Crocce, A. Porredon, S. Camera, V. Cardone, S. Casas, T., Kitching, F. Lacasa, M. Martinelli, A. Pourtsidou, Z. Sakr, S. Andreon, N., Auricchio, C. Baccigalupi, A. Balaguera-Antol\'inez, M. Baldi

TL;DR
This study evaluates how ground-based observations and redshift binning strategies impact Euclid's galaxy clustering and lensing analyses, highlighting optimal approaches for maximizing cosmological constraints.
Contribution
It introduces a detailed simulation-based analysis of photometric redshift binning, survey depth, and galaxy sample selection for Euclid's cosmological measurements.
Findings
Equal width redshift bins outperform equipopulated bins.
Increasing redshift bins from 10 to 13 enhances the FoM significantly.
Adding faint galaxies beyond training data limits can reduce the FoM.
Abstract
The accuracy of photometric redshifts (photo-zs) particularly affects the results of the analyses of galaxy clustering with photometrically-selected galaxies (GCph) and weak lensing. In the next decade, space missions like Euclid will collect photometric measurements for millions of galaxies. These data should be complemented with upcoming ground-based observations to derive precise and accurate photo-zs. In this paper, we explore how the tomographic redshift binning and depth of ground-based observations will affect the cosmological constraints expected from Euclid. We focus on GCph and extend the study to include galaxy-galaxy lensing (GGL). We add a layer of complexity to the analysis by simulating several realistic photo-z distributions based on the Euclid Consortium Flagship simulation and using a machine learning photo-z algorithm. We use the Fisher matrix formalism and these…
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