Towards probabilistic multiclass classification of gamma-ray sources

D. Malyshev, Aakash Bhat
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Abstract

Machine learning algorithms have been used to determine probabilistic classifications of unassociated sources. Often classification into two large classes, such as Galactic and extra-galactic, is considered. However, there are many more physical classes of sources. For example, there are 23 classes in the latest Fermi-LAT 4FGL-DR3 catalog. In this note we subdivide one of the large classes into two subclasses in view of a more general multi-class classification of gamma-ray sources. Each of the three large classes still encompasses several of the physical classes. We compare the performance of classifications into two and three classes. We calculate the receiver operating characteristic curves for two-class classification, where in case of three classes we sum the probabilities of the sub-classes in order to obtain the class probabilities for the two large classes. We also compare precision, recall, and reliability diagrams in the two- and three-class cases.
伽玛射线源的概率多类分类
机器学习算法已被用于确定不相关来源的概率分类。人们通常将其分为两大类,如银河系和银河系外。然而,还有更多物理类型的源。例如,在最新的Fermi-LAT 4FGL-DR3目录中有23个类。鉴于伽马射线源的更一般的多类分类,我们在本说明中将一个大类细分为两个子类。三个大班中的每一个仍然包含几个物理班。我们比较了两类和三类分类的性能。我们计算了两类分类的接收者工作特征曲线,其中在三个类别的情况下,我们将子类别的概率相加,以获得两个大类别的类别概率。我们还比较了二级和三级情况下的精确度、召回率和可靠性图。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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