Enhancing Photometric Redshift Catalogs Through Color-Space Analysis: Application to KiDS-Bright Galaxies
Priyanka Jalan, Maciej Bilicki, Wojciech A. Hellwing, Angus H. Wright,, Andrej Dvornik, Catherine Heymans, Hendrik Hildebrandt, Shahab Joudaki,, Konrad Kuijken, Constance Mahony, Szymon Jan Nakoneczny, Mario Radovich, Jan, Luca van den Busch, Mijin Yoon

TL;DR
This paper introduces a method using self-organizing maps to analyze and improve the accuracy of photometric redshift catalogs by identifying poorly represented galaxies in spectroscopic training samples.
Contribution
The authors develop a SOM-based approach to assess and enhance the reliability of photometric redshift estimates by analyzing the representation of galaxies in color space.
Findings
GAMA under-represents faint and high-redshift galaxies in KiDS-Bright
Incorporating additional spectroscopic data helps identify suboptimal photo-$z$ estimates
Excluding poorly represented galaxies modestly reduces photo-$z$ scatter by less than 10
Abstract
We present a method to refine photometric redshift galaxy catalogs by comparing their color-space matching with overlapping spectroscopic calibration data. We focus on cases where photometric redshifts (photo-) are estimated empirically. Identifying galaxies that are poorly represented in spectroscopic data is crucial, as their photo- may be unreliable due to extrapolation beyond the training sample. Our approach uses a self-organizing map (SOM) to project a multi-dimensional parameter space of magnitudes and colors onto a 2-D manifold, allowing us to analyze the resulting patterns as a function of various galaxy properties. Using SOM, we compare the Kilo-Degree Survey bright galaxy sample (KiDS-Bright), limited to mag, with various spectroscopic samples, including the Galaxy And Mass Assembly (GAMA). Our analysis reveals that GAMA under-represents KiDS-Bright at its…
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Taxonomy
TopicsAstronomical Observations and Instrumentation · Astronomy and Astrophysical Research · Stellar, planetary, and galactic studies
