Classification of a New X-ray Catalog of Likely Counterparts to 4FGL-DR4 Unassociated Gamma-ray Sources Using a Neural Network
Kyle D. Neumann, Abraham D. Falcone, Stephen DiKerby, Sierra Deppe, Elizabeth C. Ferrara, Jamie A. Kennea, Brad Cenko, and Eric Grove

TL;DR
This paper presents a new catalog of X-ray sources associated with unclassified gamma-ray sources and employs a neural network to classify these sources as blazars or pulsars, improving identification accuracy.
Contribution
It introduces a neural network-based classification method applied to a new X-ray catalog for gamma-ray source identification, with validation against prior classifications.
Findings
173 sources classified as likely blazars
6 sources classified as likely pulsars
Majority of classifications agree with previous studies
Abstract
Our survey of the fourth Large Area Telescope catalog (4FGL) unassociated gamma-ray source regions using the X-Ray Telescope (XRT) and Ultraviolet/Optical Telescope (UVOT) aboard the Neil Gehrels Observatory () provides new XRT and UVOT source detections and localizations to help identify potential low-energy counterparts to unassociated gamma-ray sources. We present a catalog of 218 singlet and 70 multiplet X-ray sources detected within the positional uncertainty ellipses of 244 unassociated gamma-ray sources from the 4FGL-DR4 catalog, 144 of which are not previously cataloged by Kerby et al. (2021b). For each X-ray source, we derive its X-ray flux and photon index, then use simultaneous UVOT observations with optical survey data to estimate its -band magnitude. We use these…
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Taxonomy
TopicsAstrophysics and Cosmic Phenomena · Radioactive Decay and Measurement Techniques · Dark Matter and Cosmic Phenomena
