论文标题
基于多频光谱能量分布数据的深度学习Blazar分类数据
Deep Learning Blazar Classification based on Multi-frequency Spectral Energy Distribution Data
论文作者
论文摘要
大麻是高能天体物理学中研究最多的来源之一,因为它们构成了阿加拉施加伽马射线的最大含量,被认为是高能天体物理中微子的对应物的主要候选者。在许多微弱的无线电来源中,它们的可靠识别是多门徒对应着协会的关键步骤。随着天文学社区为许多新设施做准备,可以在空前的深度(从无线电到伽马射线)上调查非热天空的许多新设施,因此,用于快速可靠的源识别的机器学习技术变得更加相关。这项工作的目的是开发一种深度学习的体系结构,以确定仅基于非副频谱能量分布信息的AGN种群,该架构是从公开可用的多频目录中收集的。这项研究使用了前所未有的数据,使用开放宇宙Vou-blazars工具收集的SED $ \ $ \ 14,000美元。它使用卷积长期术语记忆神经网络有目的地为SED分类问题构建的,我们将详细描述并验证。即使在整个样本的减少子集中接受培训,该网络能够将Blazars与其他类型的AGN区分开(在曲线下达到ROC面积为0.98美元)。这项最初的研究不会试图在其不同的子类之间进行分类,或者量化了任何多频性或多通电工关联的可能性,而是作为迈向这些更实践的应用程序的一步。
Blazars are among the most studied sources in high-energy astrophysics as they form the largest fraction of extragalactic gamma-ray sources and are considered prime candidates for being the counterparts of high-energy astrophysical neutrinos. Their reliable identification amid the many faint radio sources is a crucial step for multi-messenger counterpart associations. As the astronomical community prepares for the coming of a number of new facilities able to survey the non-thermal sky at unprecedented depths, from radio to gamma-rays, machine learning techniques for fast and reliable source identification are ever more relevant. The purpose of this work was to develop a deep learning architecture to identify blazar within a population of AGN based solely on non-contemporaneous spectral energy distribution information, collected from publicly available multi-frequency catalogues. This study uses an unprecedented amount of data, with SEDs for $\approx 14,000$ sources collected with the Open Universe VOU-Blazars tool. It uses a convolutional long-short term memory neural network purposefully built for the problem of SED classification, which we describe in detail and validate. The network was able to distinguish blazars from other types of AGNs to a satisfying degree (achieving a ROC area under curve of $0.98$), even when trained on a reduced subset of the whole sample. This initial study does not attempt to classify blazars among their different sub-classes, or quantify the likelihood of any multi-frequency or multi-messenger association, but is presented as a step towards these more practically-oriented applications.