Litcius/Paper detail

Classification of <i>Fermi</i>-LAT unidentified gamma-ray sources using <scp>catboost</scp> gradient boosting decision trees

Javier Coronado-Blázquez

2022Monthly Notices of the Royal Astronomical Society22 citationsDOI

Abstract

ABSTRACT The latest Fermi-LAT gamma-ray catalogue, 4FGL-DR3, presents a large fraction of sources without clear association to known counterparts, i.e. unidentified sources (unIDs). In this paper, we aim to classify them using machine learning algorithms, which are trained with the spectral characteristics of associated sources to predict the class of the unID population. With the state-of-the-art catboost algorithm, based on gradient boosting decision trees, we are able to reach a 67 per cent accuracy on a 23-class data set. Removing a single of these classes – blazars of uncertain type – increases the accuracy to 81 per cent. If interested only in a binary AGN/pulsar distinction, the model accuracy is boosted up to 99 per cent. Additionally, we perform an unsupervised search among both known and unID population, and try to predict the number of clusters of similar sources, without prior knowledge of their classes. The full code used to perform all calculations is provided as an interactive python notebook.

Topics & Concepts

PhysicsBoosting (machine learning)Gradient boostingFermi Gamma-ray Space TelescopeDecision treeRandom forestRemote sensingAstrophysicsArtificial intelligenceComputer scienceGeologyAstrophysics and Cosmic PhenomenaParticle Detector Development and PerformanceGamma-ray bursts and supernovae