A Multiwavelength Machine-learning Approach to Classifying X-Ray Sources in the Fields of Unidentified 4FGL-DR4 Sources
Abstract
A large fraction of Fermi-Large Area Telescope (LAT) sources in the fourth Fermi-LAT 14 yr catalog (4FGL) still remain unidentified (unIDed). We continued to improve our machine-learning pipeline and used it to classify 1206 X-ray sources with signal-to-noise ratios >3 located within the extent of 73 unIDed 4FGL sources with Chandra X-ray Observatory observations included in the Chandra Source Catalog 2.0. Recent improvements to our pipeline include astrometric corrections, probabilistic cross-matching to lower-frequency counterparts, and a more realistic oversampling method. X-ray sources are classified into eight broad predetermined astrophysical classes defined in the updated training data set, which we also release. We present details of the machine-learning classification, describe the pipeline improvements, and perform an additional spectral and variability analysis for brighter sources. The classifications give 103 plausible X-ray counterparts to 42 GeV sources. We identify 2 GeV sources as isolated neutron star candidates, 16 as active galactic nucleus candidates, seven as sources associated with star-forming regions, and eight as ambiguous cases. For the remaining 40 unIDed 4FGL sources, we could not identify any plausible counterpart in X-rays, or they are too close to the Galactic Center. Finally, we outline the observational strategies and further improvements in the pipeline that can lead to more accurate classifications.
- Publication:
-
The Astrophysical Journal
- Pub Date:
- August 2024
- DOI:
- arXiv:
- arXiv:2403.05068
- Bibcode:
- 2024ApJ...971..180Y
- Keywords:
-
- X-ray sources;
- Classification;
- Active galactic nuclei;
- Compact objects;
- Catalogs;
- Neutron stars;
- Astronomical object identification;
- Astrostatistics tools;
- X-ray surveys;
- Gamma-ray sources;
- X-ray binary stars;
- Random Forests;
- 1822;
- 1907;
- 16;
- 288;
- 205;
- 1108;
- 87;
- 1887;
- 1824;
- 633;
- 1811;
- 1935;
- Astrophysics - High Energy Astrophysical Phenomena
- E-Print:
- Published in ApJ 971, 180 (2024). The classification results are available at https://muwclass.github.io/MUWCLASS_4FGL-DR4/ and the classification pipeline is available at https://github.com/MUWCLASS/MUWCLASS