Super-Size Me: The Big Multi-AGN Catalog (The Big MAC), Data Release 1: The Source Catalog
Ryan W. Pfeifle, Kimberly A. Weaver, Nathan J. Secrest, Barry, Rothberg, and David R. Patton

TL;DR
This paper introduces The Big MAC, a comprehensive catalog of multi-AGN systems from literature, enabling better understanding of galaxy mergers and SMBH evolution through diverse multiwavelength data and classifications.
Contribution
The first complete catalog of all known multi-AGN systems, including new definitions and analysis of their properties across redshifts and separations.
Findings
Assembled all known multi-AGN systems from literature (1970-2020).
Provided classifications and properties of multi-AGN systems.
Highlighted the importance of multiwavelength approaches for understanding AGN evolution.
Abstract
Galaxy mergers represent the most transformative and dramatic avenue for galaxy and supermassive black hole (SMBH) evolution. Multi-active galactic nuclei (multi-AGNs) are expected to ignite, grow, and evolve alongside the host galaxies, and these represent different evolutionary stages of the SMBHs over the merger sequence. However, no comprehensive census exists of observed multi-AGN systems. Here we present The Big Multi-AGN Catalog (The Big MAC), the first literature-complete catalog of all known (confirmed and candidate) multi-AGN systems, which includes dual AGNs (separations kpc), binary AGNs (gravitationally bound, pc), recoiling AGNs, and N-tuple AGNs (involving three or more AGNs), gleaned from hundreds of literature articles spanning the years 1970-2020. The Big MAC is the first archive to assemble all multi-AGN systems and candidates across all…
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Taxonomy
TopicsAlgorithms and Data Compression · Environmental Monitoring and Data Management
