AEGIS: Demographics of X-ray and Optically Selected AGNs
Renbin Yan, Luis C. Ho, Jeffrey A. Newman, Alison L. Coil, Christopher, N. A. Willmer, Elise S. Laird, Antonis Georgakakis, James Aird, Pauline, Barmby, Kevin Bundy, Michael C. Cooper, Marc Davis, S. M. Faber, Taotao Fang,, Roger L. Griffith, Anton M. Koekemoer, David C. Koo

TL;DR
This paper introduces a new optical diagnostic method combining emission line ratios and galaxy colors to classify AGNs, compares it with X-ray selection, and discusses biases and completeness issues in AGN surveys.
Contribution
The study develops a novel optical classification technique for AGNs and compares its effectiveness with X-ray selection, highlighting biases and the need for multiple methods.
Findings
Optical AGN classification has dependencies on star formation rate and spectral quality.
X-ray selected AGNs include many optically normal galaxies, showing selection biases.
A significant fraction of luminous AGNs are missed in X-ray surveys due to absorption.
Abstract
We develop a new diagnostic method to classify galaxies into AGN hosts, star-forming galaxies, and absorption-dominated galaxies by combining the [O III]/Hbeta ratio with rest-frame U-B color. This can be used to robustly select AGNs in galaxy samples at intermediate redshifts (z<1). We compare the result of this optical AGN selection with X-ray selection using a sample of 3150 galaxies with 0.3<z<0.8 and I_AB<22, selected from the DEEP2 Galaxy Redshift Survey and the All-wavelength Extended Groth Strip International Survey (AEGIS). Among the 146 X-ray sources in this sample, 58% are classified optically as emission-line AGNs, the rest as star-forming galaxies or absorption-dominated galaxies. The latter are also known as "X-ray bright, optically normal galaxies" (XBONGs). Analysis of the relationship between optical emission lines and X-ray properties shows that the completeness of…
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