Euclid preparation: X. The Euclid photometric-redshift challenge
Euclid Collaboration: G. Desprez, S. Paltani, J. Coupon, I., Almosallam, A. Alvarez-Ayllon, V. Amaro, M. Brescia, M. Brodwin, S. Cavuoti,, J. De Vicente-Albendea, S. Fotopoulou, P. W. Hatfield, W. G. Hartley, O., Ilbert, M. J. Jarvis, G. Longo, R. Saha, J. S. Speagle

TL;DR
This paper evaluates the performance of 13 photometric redshift estimation methods on simulated Euclid survey data, highlighting strengths and weaknesses, especially in probability distribution outputs and outlier rejection capabilities.
Contribution
It provides a comprehensive comparison of current photo-z methods using a standardized challenge with emulated Euclid data, focusing on both point estimates and probability distributions.
Findings
Rejection criteria effectively remove outliers.
All methods produce reliable single value estimates.
Many machine-learning methods struggle with useful PDZs.
Abstract
Forthcoming large photometric surveys for cosmology require precise and accurate photometric redshift (photo-z) measurements for the success of their main science objectives. However, to date, no method has been able to produce photo-s at the required accuracy using only the broad-band photometry that those surveys will provide. An assessment of the strengths and weaknesses of current methods is a crucial step in the eventual development of an approach to meet this challenge. We report on the performance of 13 photometric redshift code single value redshift estimates and redshift probability distributions (PDZs) on a common set of data, focusing particularly on the 0.2--2.6 redshift range that the Euclid mission will probe. We design a challenge using emulated Euclid data drawn from three photometric surveys of the COSMOS field. The data are divided into two samples: one calibration…
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