Identifying Quasar Candidates Behind the Galactic Plane Using Chandra and Machine Learning
Analysis
Key Takeaways
- •Employs Chandra X-ray data, Gaia, and CatWISE2020 data to find quasars behind the Galactic plane.
- •Utilizes a Random Forest classifier and regression model for candidate selection and redshift estimation.
- •Identifies a significant number of quasar candidates, including high-confidence Galactic Plane Quasar candidates.
- •Provides a valuable target sample for future spectroscopic follow-up.
- •Improves the census of Galactic Plane Quasars and enables studies of the Milky Way's interstellar and circumgalactic media.
“The study identifies 6286 quasar candidates, including 863 Galactic Plane Quasar (GPQ) candidates at |b|<20°, of which 514 are high-confidence candidates.”