Selection of optically variable active galactic nuclei via a random forest algorithm
Demetra De Cicco, Gaetano Zazzaro, Stefano Cavuoti, Maurizio Paolillo, Giuseppe Longo, Vincenzo Petrecca, Ivano Saccheo, Paula S\'anchez-S\'aez

TL;DR
This study employs a random forest algorithm to improve the selection of optically variable active galactic nuclei in wide-field surveys, aiming to enhance detection of obscured AGN and prepare for upcoming large-scale astronomical data.
Contribution
It introduces a machine learning approach using random forests trained on multiband variability features to optimize AGN identification in large optical surveys.
Findings
Multiband variability features improve AGN detection accuracy.
The method enhances identification of obscured AGN.
Insights applicable to future large-scale astronomical datasets.
Abstract
Context. A defining characteristic of active galactic nuclei (AGN) that distinguishes them from other astronomical sources is their stochastic variability, which is observable across the entire electromagnetic spectrum. Upcoming optical wide-field surveys, such as the Vera C. Rubin Observatory's Legacy Survey of Space and Time, are set to transform astronomy by delivering unprecedented volumes of data for time domain studies. This data influx will require the development of the expertise and methodologies necessary to manage and analyze it effectively. Aims. This project focuses on optimizing AGN selection through optical variability in wide-field surveys and aims to reduce the bias against obscured AGN. We tested a random forest (RF) algorithm trained on various feature sets to select AGN. The initial dataset consisted of 54 observations in the r-band and 25 in the g-band of the COSMOS…
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