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Automated algorithms to build active galactic nucleus classifiers

Abstract: We present a machine learning model to classify active galactic nuclei (AGNs) and galaxies (AGN-galaxy classifier) and a model to identify type 1 (optically unabsorbed) and type 2 (optically absorbed) AGN (type 1/2 classifier). We test tree-based algorithms, using training samples built from the X-ray Multi-Mirror Mission?Newton (XMM?Newton) catalogue and the Sloan Digital Sky Survey (SDSS), with labels derived from the SDSS survey. The performance was tested making use of simulations and of cross-validation techniques. With a set of features including spectroscopic redshifts and X-ray parameters connected to source properties (e.g. fluxes and extension), as well as features related to X-ray instrumental conditions, the precision and recall for AGN identification are 94 and 93 per?cent, while the type 1/2 classifier has a precision of 74 per?cent and a recall of 80 per?cent for type 2 AGNs. The performance obtained with photometric redshifts is very similar to that achieved with spectroscopic redshifts in both test cases, while there is a decrease in performance when excluding redshifts. Our machine learning model trained on X-ray features can accurately identify AGN in extragalactic surveys. The type 1/2 classifier has a valuable performance for type 2 AGNs, but its ability to generalize without redshifts is hampered by the limited census of absorbed AGN at high redshift.

Other publications of the same journal or congress with authors from the University of Cantabria

 Fuente: Monthly Notices of the Royal Astronomical Society, Volume 510, Issue 1, February 2022, Pages 161-176

Publisher: Oxford University Press

 Year of publication: 2022

No. of pages: 16

Publication type: Article

 DOI: https://doi.org/10.1093/mnras/stab3435

ISSN: 0035-8711,1365-2966

Publication Url: https://doi.org/10.1093/mnras/stab3435

Autoría

LARSSON, J.