Euclid preparation: VII. Forecast validation for Euclid cosmological probes
Euclid Collaboration, A. Blanchard, S. Camera, C. Carbone, V.F., Cardone, S. Casas, S. Clesse, S. Ili\'c, M. Kilbinger, T. Kitching, M. Kunz,, F. Lacasa, E. Linder, E. Majerotto, K. Markovi\v{c}, M. Martinelli, V., Pettorino, A. Pourtsidou, Z. Sakr, A.G. S\'anchez, D. Sapone

TL;DR
This paper develops and validates numerical methods for forecasting Euclid's cosmological constraints, combining theoretical and observational approaches to improve accuracy and reliability for different cosmological models.
Contribution
It provides validated Fisher matrix forecast methods for Euclid's probes, including galaxy clustering and weak lensing, with detailed implementation validation and new cosmological forecast results.
Findings
Validated numerical implementations with less than required error margins.
Cross-correlations significantly enhance dark energy constraints.
Forecasts vary with cosmological model assumptions.
Abstract
The Euclid space telescope will measure the shapes and redshifts of galaxies to reconstruct the expansion history of the Universe and the growth of cosmic structures. Estimation of the expected performance of the experiment, in terms of predicted constraints on cosmological parameters, has so far relied on different methodologies and numerical implementations, developed for different observational probes and for their combination. In this paper we present validated forecasts, that combine both theoretical and observational expertise for different cosmological probes. This is presented to provide the community with reliable numerical codes and methods for Euclid cosmological forecasts. We describe in detail the methodology adopted for Fisher matrix forecasts, applied to galaxy clustering, weak lensing and their combination. We estimate the required accuracy for Euclid forecasts and…
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