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X-ray Spectra and Multiwavelength Machine Learning Classification for Likely Counterparts toFermi3FGL Unassociated Sources

Authors :
Stephen Kerby
Amanpreet Kaur
Abraham D. Falcone
Michael C. Stroh
Elizabeth C. Ferrara
Jamie A. Kennea
Joseph Colosimo
Source :
The Astrophysical Journal. 161(4)
Publication Year :
2021
Publisher :
United States: NASA Center for Aerospace Information (CASI), 2021.

Abstract

We conduct X-ray spectral fits on 184 likely counterparts to Fermi-LAT 3FGL unassociated sources. Characterization and classification of these sources allows for more complete population studies of the high-energy sky. Most of these X-ray spectra are well fit by an absorbed power law model, as expected for a population dominated by blazars and pulsars. A small subset of 7 X-ray sources ave spectra unlike the power law expected from a blazar or pulsar and may be linked to coincident stars or background emission. We develop a multiwavelength machine learning classifier to categorize unassociated sources into pulsars and blazars using gamma- and X-ray observations. Training a random forest procedure with known pulsars and blazars, we achieve a cross-validated classification accuracy of 98.6%. Applying the random forest routine to the unassociated sources returned 126 likely blazar candidates (defined as P(bzr) ≥ 90%) and 5 likely pulsar candidates (P(bzr) ≤ 10%). Our new X-ray spectral analysis does not drastically alter the random forest classifications of these sources compared to previous works, but it builds a more robust classification scheme and highlights the importance of X-ray spectral fitting. Our procedure can be further expanded with UV, visual, or radio spectral parameters or by measuring flux variability.

Subjects

Subjects :
Astronomy
Astrophysics

Details

Language :
English
ISSN :
15384357 and 0004637X
Volume :
161
Issue :
4
Database :
NASA Technical Reports
Journal :
The Astrophysical Journal
Notes :
80GSFC21M0002, , 80NSSC17K0752, , 80NSSC18K1730, , Heising-Simons Foundation 2018-0911
Publication Type :
Report
Accession number :
edsnas.20210017161
Document Type :
Report
Full Text :
https://doi.org/10.3847/1538-3881/abda53