Galaxy Zoo: The fundamentally different co-evolution of supermassive black holes and their early- and late-type host galaxies
Kevin Schawinski, C. Megan Urry, Shanil Virani, Paolo Coppi, Steven P., Bamford, Ezequiel Treister, Chris J. Lintott, Marc Sarzi, William C. Keel,, Sugata Kaviraj, Carolin N. Cardamone, Karen L. Masters, Nicholas P. Ross, Dan, Andreescu, Phil Murray, Robert C. Nichol

TL;DR
This study reveals that black hole growth mechanisms differ significantly between early- and late-type galaxies, with distinct dependencies on galaxy mass, color, and evolutionary stage, based on SDSS and Galaxy Zoo data.
Contribution
It provides the first detailed comparison of AGN activity in early- and late-type galaxies, highlighting their fundamentally different co-evolution patterns.
Findings
Black hole growth in early- and late-type galaxies is fundamentally different.
AGN duty cycle peaks in different galaxy populations depending on type and mass.
Low-mass green valley early-types and massive late-types show the highest AGN activity.
Abstract
We use data from the Sloan Digital Sky Survey and visual classifications of morphology from the Galaxy Zoo project to study black hole growth in the nearby Universe (z < 0.05) and to break down the AGN host galaxy population by color, stellar mass and morphology. We find that black hole growth at luminosities L_OIII >1E40 erg/s in early- and late-type galaxies is fundamentally different. AGN host galaxies as a population have a broad range of stellar masses (1E10-1E11 Msun), reside in the green valley of the color-mass diagram and their central black holes have median masses around 1E6.5 Msun. However, by comparing early- and late-type AGN host galaxies to their non-active counterparts, we find several key differences: in early-type galaxies, it is preferentially the galaxies with the least massive black holes that are growing, while late-type galaxies, it is preferentially the most…
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