Galaxy morphoto-Z with neural Networks (GaZNets). I. Optimized accuracy and outlier fraction from Imaging and Photometry
Rui Li, Nicola R. Napolitano, Haicheng Feng, Ran Li, Valeria Amaro,, Linghua Xie, Crescenzo Tortora, Maciej Bilicki, Massimo Brescia, and Stefano, Cavuoti, Mario Radovich

TL;DR
This paper introduces GaZNet-1, a neural network that combines imaging and photometry to improve galaxy redshift predictions, achieving higher accuracy and fewer outliers than photometry-only methods in large sky surveys.
Contribution
The paper presents GaZNet-1, a novel ML tool that integrates images and multi-band photometry for more accurate galaxy photo-z estimation, extending training to higher redshifts.
Findings
Achieves NMAD of 0.014 at low redshift and 0.041 at high redshift.
Reduces outlier fraction to 0.4% at low redshift and 1.27% at high redshift.
Improves precision by 10-35% over photometry-only ML methods.
Abstract
In the era of large sky surveys, photometric redshifts (photo-z) represent crucial information for galaxy evolution and cosmology studies. In this work, we propose a new Machine Learning (ML) tool called Galaxy morphoto-Z with neural Networks (GaZNet-1), which uses both images and multi-band photometry measurements to predict galaxy redshifts, with accuracy, precision and outlier fraction superior to standard methods based on photometry only. As a first application of this tool, we estimate photo-z of a sample of galaxies in the Kilo-Degree Survey (KiDS). GaZNet-1 is trained and tested on galaxies collected from KiDS Data Release 4 (DR4), for which spectroscopic redshifts are available from different surveys. This sample is dominated by bright (MAGAUTO) and low redshift () systems, however, we could use 6500 galaxies in the range to…
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Taxonomy
TopicsAstronomy and Astrophysical Research · Galaxies: Formation, Evolution, Phenomena · CCD and CMOS Imaging Sensors
