BASS. XLIV. Morphological preferences of local hard X-ray selected AGN
Miguel Parra Tello, Franz E. Bauer, Demetra De Cicco, Goran Doll, Michael Koss, Ezequiel Treister, Carolina Finlez, Marco Troncoso, Connor Auge, I. del Moral-Castro, Aeeree Chung, Kriti K. Gupta, Jeein Kim, Kyuseok Oh, Claudio Ricci, Federica Ricci, Alejandra Rojas

TL;DR
This study classifies the host galaxy morphologies of 1189 hard X-ray selected AGNs, revealing their preference for disturbed, gas-rich environments and the correlation between AGN properties and host morphology, using volunteer-based visual inspection.
Contribution
It provides a comprehensive morphological classification of a large, unbiased AGN sample using citizen science, and analyzes the relationship between AGN activity and host galaxy features.
Findings
AGN hosts show fewer ellipticals and disks with arms compared to inactive galaxies.
Higher bar fractions are observed in AGN hosts (~50%) than in controls (~30%).
High-luminosity AGN are more often in smooth or point-like hosts.
Abstract
We present morphological classifications for the hosts of 1189 hard X-ray selected (14-195 keV) active galactic nuclei (AGNs) from the Swift-BAT 105-month catalog as part of the BAT AGN Spectroscopic Survey (BASS). BASS provides a powerful all-sky census of nearby AGN, minimizing obscuration biases and providing a robust dataset for studying AGN-host galaxy connections. Classifications are based on volunteer-based visual inspection on the Zooniverse platform, adapted from Galaxy Zoo DECaLS (GZD). Dual-contrast grz color composite images, generated from public surveys (e.g., NOAO Legacy Survey, Pan-STARRS, SDSS) and dedicated observations enabled key morphological features to be identified. Our analysis reveals that, with respect to a control sample of inactive galaxies matched in redshift and i-band magnitude, BASS AGN hosts show a deficiency of smooth ellipticals (~70%) and disks with…
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