Machine learning methods for constructing probabilistic Fermi-LAT catalogs
Aakash Bhat, Dmitry Malyshev

TL;DR
This paper applies machine learning techniques to classify unassociated gamma-ray sources in Fermi-LAT catalogs into pulsars, AGNs, or other categories, improving probabilistic source identification for astronomical studies.
Contribution
It introduces a comprehensive ML-based framework for probabilistic classification of Fermi-LAT sources, including methods to handle unassociated sources and the impact of different meta-parameters.
Findings
Two-class classification requires correction for OTHER sources.
Three-class classification performs similarly to two-class without needing adjustment.
Probabilistic catalogs aid in population studies of gamma-ray sources.
Abstract
Classification of sources is one of the most important tasks in astronomy. Sources detected in one wavelength band, for example using gamma rays, may have several possible associations in other wavebands, or there may be no plausible association candidates. In this work we aim to determine the probabilistic classification of unassociated sources in the third Fermi Large Area Telescope (LAT) point source catalog (3FGL) and the fourth Fermi LAT data release 2 point source catalog (4FGL-DR2) using two classes - pulsars and active galactic nuclei (AGNs) - or three classes - pulsars, AGNs, and "OTHER" sources. We use several machine learning (ML) methods to determine a probabilistic classification of Fermi-LAT sources. We evaluate the dependence of results on the meta-parameters of the ML methods, such as the maximal depth of the trees in tree-based classification methods and the number of…
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