GOODS-Herschel: Ultra-deep XMM-Newton observations reveal AGN/star-formation connection
E. Rovilos, A. Comastri, R. Gilli, I. Georgantopoulos, P. Ranalli, C., Vignali, E. Lusso, N. Cappelluti, G. Zamorani, D. Elbaz, M. Dickinson, H. S., Hwang, V. Charmandaris, R. J. Ivison, A. Merloni, E. Daddi, F. J. Carrera, W., N. Brandt, J. R. Mullaney, D. Scott

TL;DR
This study investigates the relationship between active galactic nuclei (AGN) activity and star formation in host galaxies using deep X-ray and infrared data, revealing a positive correlation at high luminosities and redshifts.
Contribution
It provides new insights into the AGN-star formation connection by analyzing multi-wavelength data and spectral energy distributions, especially for high-luminosity AGNs at z>2.
Findings
Positive correlation between AGN activity and sSFR at high luminosities and redshifts.
High-redshift QSOs predominantly in starburst hosts with elevated sSFR.
No correlation between SFR or sSFR and X-ray absorption, indicating different origins.
Abstract
Models of galaxy evolution assume some connection between the AGN and star formation activity in galaxies. We use the multi-wavelength information of the CDFS to assess this issue. We select the AGNs from the 3Ms XMM-Newton survey and measure the star-formation rates of their hosts using data that probe rest-frame wavelengths longward of 20 um. Star-formation rates are obtained from spectral energy distribution fits, identifying and subtracting an AGN component. We divide the star-formation rates by the stellar masses of the hosts to derive specific star-formation rates (sSFR) and find evidence for a positive correlation between the AGN activity (proxied by the X-ray luminosity) and the sSFR for the most active systems with X-ray luminosities exceeding Lx=10^43 erg/s and redshifts z~1. We do not find evidence for such a correlation for lower luminosity systems or those at lower…
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