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Analysis

This paper addresses the challenge of finding quasars obscured by the Galactic plane, a region where observations are difficult due to dust and source confusion. The authors leverage the Chandra X-ray data, combined with optical and infrared data, and employ a Random Forest classifier to identify quasar candidates. The use of machine learning and multi-wavelength data is a key strength, allowing for the identification of fainter quasars and improving the census of these objects. The paper's significance lies in its contribution to a more complete quasar sample, which is crucial for various astronomical studies, including refining astrometric reference frames and probing the Milky Way's interstellar medium.
Reference

The study identifies 6286 quasar candidates, including 863 Galactic Plane Quasar (GPQ) candidates at |b|<20°, of which 514 are high-confidence candidates.