Euclid: Improving redshift distribution reconstruction using a deep-to-wide transfer function
Y. Kang (1), S. Paltani (1), W. G. Hartley (1), M. Bolzonella (2), A. H. Wright (3), F. Dubath (1), F. J. Castander (4, 5), D. C. Masters (6), W. d'Assignies (7), H. Hildebrandt (3), O. Ilbert (8), M. Manera (9, 7), W. Roster (10), S. A. Stanford (11), N. Aghanim (12)

TL;DR
The paper introduces a deep-to-wide transfer function method to improve redshift distribution reconstruction for the Euclid mission, reducing biases and matching distributions more accurately than existing image-based techniques.
Contribution
A novel photometry degradation method that outperforms image-based approaches, enhancing redshift distribution accuracy for cosmological surveys.
Findings
Redshift biases are significantly reduced across all tomographic bins.
The transfer method outperforms Balrog in preserving photometric correlations.
The approach accurately reproduces the overall redshift distributions.
Abstract
The Euclid mission seeks to understand the Universe expansion history and the nature of dark energy, which requires a very accurate estimate of redshift distribution. Achieving this accuracy relies on reference samples with spectroscopic redshifts, together with a procedure to match them to survey sources for which only photometric redshifts are available. One important source of systematic uncertainty is the mismatch in photometric properties between galaxies in the Euclid survey and the reference objects. We develop a method to degrade the photometry of objects with deep photometry to match the properties of any shallower survey in the multi-band photometric space, preserving all the correlations between the fluxes and their uncertainties. We compare our transfer method with more demanding image-based methods, such as Balrog from the Dark Energy Survey Collaboration. According to…
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