Research and characterization of blazar candidates among the Fermi/LAT4FGL catalog using Machine Learning

2020 
Several machine-learning algorithms were tested to identify blazar candidates among the 4FGL unassociated sources. Using the Scikit-learn toolkit, for a given set of discriminant parameters, methods based on random forests, multilayer perceptions, and support vector machines could reach comparable performance with a very little tuning. We obtain 510 blazar candidates, by combining the results of three classifiers.
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