The Subaru-XMM-Newton Deep Survey (SXDS) VIII.: Multi-wavelength Identification, Optical/NIR Spectroscopic Properties, and Photometric Redshifts of X-ray Sources
Masayuki Akiyama, Yoshihiro Ueda, Mike G. Watson, Hisanori Furusawa,, Tadafumi Takata, Chris Simpson, Tomoki Morokuma, Toru Yamada, Kouji Ohta,, Fumihide Iwamuro, Kiyoto Yabe, Naoyuki Tamura, Yuuki Moritani, Naruhisa, Takato, Masahiko Kimura, Toshinori Maihara, Gavin Dalton

TL;DR
This study presents a comprehensive multi-wavelength analysis of X-ray sources from the SXDS, identifying AGNs, determining their redshifts, and examining host galaxy properties, revealing insights into black hole growth and galaxy evolution.
Contribution
It provides the first large-scale multi-wavelength identification and characterization of X-ray sources in the SXDS, including spectroscopic and photometric redshifts, and host galaxy stellar masses.
Findings
65% of X-ray AGN candidates are spectroscopically identified.
Stellar mass distribution of host galaxies remains constant from z=0.1 to 4.0.
The M*-luminosity relation shows strong cosmological evolution.
Abstract
We report the multi-wavelength identification of the X-ray sources found in the Subaru-XMM-Newton Deep Survey (SXDS) using deep imaging data covering the wavelength range between the far-UV to the mid-IR. We select a primary counterpart of each X-ray source by applying the likelihood ratio method to R-band, 3.6micron, near-UV, and 24micron source catalogs as well as matching catalogs of AGN candidates selected in 1.4GHz radio and i'-band variability surveys. Once candidates of Galactic stars, ultra-luminous X-ray sources in a nearby galaxy, and clusters of galaxies are removed there are 896 AGN candidates in the sample. We conduct spectroscopic observations of the primary counterparts with multi-object spectrographs in the optical and NIR; 65\% of the X-ray AGN candidates are spectroscopically-identified. For the remaining X-ray AGN candidates, we evaluate their photometric redshift…
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