PICZL: Image-based Photometric Redshifts for AGN
William Roster, Mara Salvato, Sven Krippendorf, Aman Saxena, Raphael, Shirley, Johannes Buchner, Julien Wolf, Tom Dwelly, Franz E. Bauer, James, Aird, Claudio Ricci, Roberto J. Assef, Scott F. Anderson, Xin Liu, Andrea, Merloni, Jochen Weller, Kirpal Nandra

TL;DR
This paper introduces PICZL, a machine learning algorithm combining image and catalog data to improve photometric redshift estimates for AGN in all-sky surveys, outperforming previous methods and adaptable to future surveys.
Contribution
We develop PICZL, a CNN-based ensemble method that integrates image and catalog data for accurate AGN photo-z estimation without merging multiple datasets.
Findings
Achieves $\sigma_{ extrm{NMAD}}$ of 4.5% on validation sample
Outlier fraction $\eta$ of 5.6% surpassing previous ML methods
Maintains consistent performance across survey areas
Abstract
Computing photo-z for AGN is challenging, primarily due to the interplay of relative emissions associated with the SMBH and its host galaxy. SED fitting methods, effective in pencil-beam surveys, face limitations in all-sky surveys with fewer bands available, lacking the ability to capture the AGN contribution to the SED accurately. This limitation affects the many 10s of millions of AGN clearly singled out and identified by SRG/eROSITA. Our goal is to significantly enhance photometric redshift performance for AGN in all-sky surveys while avoiding the need to merge multiple data sets. Instead, we employ readily available data products from the 10th Data Release of the Imaging Legacy Survey for DESI, covering > 20,000 deg with deep images and catalog-based photometry in the grizW1-W4 bands. We introduce PICZL, a machine-learning algorithm leveraging an ensemble of CNNs. Utilizing a…
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Taxonomy
TopicsAstronomy and Astrophysical Research · Astronomical Observations and Instrumentation · Adaptive optics and wavefront sensing
