Accreting SMBHs in the COSMOS field and the connection to their host galaxies
A. Bongiorno, A. Merloni, M. Brusa, B. Magnelli, M. Salvato, M., Mignoli, G. Zamorani, F. Fiore, D. Rosario, V. Mainieri, A. Comastri, C., Vignali, I. Balestra, S. Bardelli, S. Berta, F. Civano, P. Kampczyk, E. Le, Floc'h, E. Lusso, D. Lutz, L. Pozzetti, F. Pozzi, L. Riguccini

TL;DR
This study investigates the properties of AGN host galaxies in the COSMOS field, revealing their diverse stellar masses and star formation rates, and examining the connection between black hole growth and galaxy evolution over cosmic time.
Contribution
It provides a detailed analysis of AGN host galaxy characteristics using multi-band photometry and SED fitting, highlighting the independence of AGN incidence from host mass and its evolution with redshift.
Findings
AGN hosts are mainly massive, red galaxies with diverse SFRs.
The probability of hosting an AGN is nearly independent of host galaxy mass.
AGN incidence increases rapidly with redshift, following (1+z)^4.
Abstract
Using the wide multi-band photometry available in the COSMOS field we explore the host galaxy properties of a large sample of Active Galactic Nuclei (AGN) obtained by combining X-ray and optical spectroscopic selections. Based on a careful study of their Spectral Energy Distribution (SED), which has been parametrized using a 2-component (AGN+galaxy) model fit, we derived dust-corrected rest-frame magnitudes, colors, stellar masses and star formation rates (SFRs). We find that AGN hosts span a large range of stellar masses and SFRs. No color-bimodality is seen at any redshift in the AGN hosts, which are found to be mainly massive, red galaxies. Once accounting for the color-mass degeneracy in well defined mass-matched samples, we find a residual marginal enhancement of AGN incidence in redder galaxies with lower specific star formation rates, and we argue that this result might emerge…
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