On R-W1 as A Diagnostic to Discover Obscured Active Galactic Nuclei in Wide-Area X-ray Surveys
Stephanie M. LaMassa, Francesca Civano, Marcella Brusa, Daniel Stern,, Eilat Glikman, Sarah Gallagher, C. Meg Urry, Sabrina Cales, Nico Cappelluti,, Carolin Cardamone, Andrea Comastri, Duncan Farrah, Jenny E. Greene, S., Komossa, Andrea Merloni, Tony Mroczkowski

TL;DR
This study evaluates the R-W1 color as an effective diagnostic tool for identifying obscured active galactic nuclei in wide-area X-ray surveys, demonstrating its ability to recover obscured AGN missed by other methods.
Contribution
It introduces and tests the R-W1 color diagnostic for obscured AGN detection, comparing it with existing criteria and analyzing its effectiveness across different luminosity and redshift ranges.
Findings
R-W1 > 4 effectively identifies obscured AGN at 0.5<z<1.
Different X-ray luminosity bins show distinct R-W1 color distributions.
No clear correlation between X-ray hardness ratio and optical reddening.
Abstract
Capitalizing on the all-sky coverage of {\it WISE}, and the 35\% and 50\% sky coverage from SDSS and Pan-STARRS, respectively, we explore the efficacy of (optical) - (mid-infrared), hereafter , as a color diagnostic to identify obscured supermassive black hole accretion in wide-area X-ray surveys. We use the 16.5 deg Stripe 82 X-ray survey data as a test-bed to compare with , an oft-used obscured AGN selection criterion, and examine where different classes of objects lie in this parameter space. Most stars follow a well-defined path in vs. space. We demonstrate that optically normal galaxies hosting X-ray AGN at redshifts can be recovered with an color-cut, while they typically are not selected as AGN based on their colors. Additionally, different observed X-ray luminosity bins favor different…
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