Photometric redshifts for the Kilo-Degree Survey. Machine-learning analysis with artificial neural networks
M. Bilicki, H. Hoekstra, M. J. I. Brown, V. Amaro, C. Blake, S., Cavuoti, J. T. A. de Jong, C. Georgiou, H. Hildebrandt, C. Wolf, A. Amon, M., Brescia, S. Brough, M. V. Costa-Duarte, T. Erben, K. Glazebrook, A. Grado, C., Heymans, T. Jarrett, S. Joudaki, K. Kuijken, G. Longo

TL;DR
This paper demonstrates that machine-learning neural networks can produce high-quality photometric redshifts for the KiDS survey, outperforming traditional methods especially at bright magnitudes and when incorporating additional photometric data.
Contribution
It introduces neural-network based photo-z methods for KiDS, showing improved accuracy over existing techniques and providing publicly available catalogs.
Findings
ML photo-zs match or surpass BPZ performance up to z<0.9
Including infrared bands reduces bias and scatter in photo-z estimates
Public catalogs with 39 million sources and enhanced low-redshift data are released
Abstract
We present a machine-learning photometric redshift analysis of the Kilo-Degree Survey Data Release 3, using two neural-network based techniques: ANNz2 and MLPQNA. Despite limited coverage of spectroscopic training sets, these ML codes provide photo-zs of quality comparable to, if not better than, those from the BPZ code, at least up to zphot<0.9 and r<23.5. At the bright end of r<20, where very complete spectroscopic data overlapping with KiDS are available, the performance of the ML photo-zs clearly surpasses that of BPZ, currently the primary photo-z method for KiDS. Using the Galaxy And Mass Assembly (GAMA) spectroscopic survey as calibration, we furthermore study how photo-zs improve for bright sources when photometric parameters additional to magnitudes are included in the photo-z derivation, as well as when VIKING and WISE infrared bands are added. While the fiducial four-band…
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