Cosmic Evolution of Black Holes and Spheroids. IV. The BH Mass - Spheroid Luminosity Relation
Vardha Nicola Bennert (1), Tommaso Treu (1), Jong-Hak Woo (2), Matthew, A. Malkan (3), Alexandre Le Bris (1), Matthew W. Auger (1), Sarah Gallagher, (4), Roger D. Blandford (5) ((1) UCSB; (2) Seoul National University; (3), UCLA; (4) UWO; (5) KIPAC, Stanford)

TL;DR
This study investigates how the relationship between black hole mass and spheroid luminosity evolves over cosmic time, revealing that black hole growth predates spheroid assembly and highlighting the role of mergers in galaxy evolution.
Contribution
It provides the first correction for selection effects and intrinsic scatter in the black hole-spheroid luminosity relation across a wide redshift range, extending previous analyses.
Findings
Black hole to spheroid luminosity ratio increases with redshift.
Intrinsic scatter of the relation is about 0.3 dex, constant over time.
High-redshift spheroid growth is likely driven by major mergers.
Abstract
From high-resolution images of 23 Seyfert-1 galaxies at z=0.36 and z=0.57 obtained with the Near Infrared Camera and Multi-Object Spectrometer on board the Hubble Space Telescope (HST), we determine host-galaxy morphology, nuclear luminosity, total host-galaxy luminosity and spheroid luminosity. Keck spectroscopy is used to estimate black hole mass (M_BH). We study the cosmic evolution of the M_BH-spheroid luminosity (L_sph) relation. In combination with our previous work, totaling 40 Seyfert-1 galaxies, the covered range in BH mass is substantially increased, allowing us to determine for the first time intrinsic scatter and correct evolutionary trends for selection effects. We re-analyze archival HST images of 19 local reverberation-mapped active galaxies to match the procedure adopted at intermediate redshift. Correcting spheroid luminosity for passive luminosity evolution and taking…
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