Mapping the Galaxy Color-Redshift Relation: Optimal Photometric Redshift Calibration Strategies for Cosmology Surveys
Daniel Masters, Peter Capak, Daniel Stern, Olivier Ilbert, Mara, Salvato, Samuel Schmidt, Giuseppe Longo, Jason Rhodes, Stephane Paltani,, Bahram Mobasher, Henk Hoekstra, Hendrik Hildebrandt, Jean Coupon, Charles, Steinhardt, Josh Speagle, Andreas Faisst, Adam Kalinich

TL;DR
This paper uses a self-organizing map to analyze galaxy color-redshift relations, helping to optimize spectroscopic sampling for calibrating photometric redshifts in large cosmology surveys like Euclid, DES, LSST, and WFIRST.
Contribution
It introduces a method to map galaxy color space and assess spectroscopic coverage, guiding efficient calibration strategies for upcoming cosmology surveys.
Findings
Systematic color space sampling can meet calibration needs.
The method identifies gaps in spectroscopic coverage.
Applicable to multiple large-scale surveys.
Abstract
Calibrating the photometric redshifts of >10^9 galaxies for upcoming weak lensing cosmology experiments is a major challenge for the astrophysics community. The path to obtaining the required spectroscopic redshifts for training and calibration is daunting, given the anticipated depths of the surveys and the difficulty in obtaining secure redshifts for some faint galaxy populations. Here we present an analysis of the problem based on the self-organizing map, a method of mapping the distribution of data in a high-dimensional space and projecting it onto a lower-dimensional representation. We apply this method to existing photometric data from the COSMOS survey selected to approximate the anticipated Euclid weak lensing sample, enabling us to robustly map the empirical distribution of galaxies in the multidimensional color space defined by the expected Euclid filters. Mapping this…
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