Searching for unresolved massive black hole pairs through AGN photometric variability
Lorenzo Bertassi, Maria Charisi, Fabio Rigamonti, Stefano Covino, and Massimo Dotti

TL;DR
This paper proposes a Bayesian method to identify unresolved massive black hole pairs in AGN light curves by distinguishing between single and dual DRW models, tested on simulated data.
Contribution
It introduces a new Bayesian time-domain analysis technique to detect unresolved MBH pairs in AGN light curves, with quantified false positive rates and parameter recovery performance.
Findings
False positive rate for single MBH LCs is below 1%.
Parameter recovery within 20% is achieved in about 51% of single MBH and 7% of MBH pair simulations.
Detection is feasible when noise timescales differ significantly and variability amplitudes are similar.
Abstract
Since their discovery, AGN light curves are known to be intrinsically variable. In the optical/UV band, this variability is consistent with correlated or red noise and is particularly well described by the damped random walk (DRW) model. In this work, we evaluate the feasibility of a new method for identifying spatially unresolved couples of AGN through a fully Bayesian time-domain analysis of the observed light curves (LCs). More specifically, we check whether observed LCs are better described by a single DRW, which we interpret as emitted by a single massive black hole (MBH), or a pair of independent DRWs, generated by a pair of MBHs. We test the method on mock LCs associated with a single MBH and pairs generated with different cadences and lengths of observational campaigns. We constrained the occurrence of false positives, that is, the percentage of single MBH LCs that show…
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