论文标题
机器学习分类快速无线电爆发:ii。无监督的方法
Machine learning classification of CHIME fast radio bursts: II. Unsupervised Methods
论文作者
论文摘要
快速无线电爆发(FRB)是最神秘的天文瞬变之一。从观察上讲,它们可以分类为中继器和显然是非培养者。但是,由于缺乏连续的观察,一些显然中断的人可能被错误地被认为是非复制者。在一系列两篇论文中,我们打算解决机器学习的问题。在该系列的第二篇论文中,我们专注于一系列无监督的机器学习方法。我们将多个无监督的机器学习算法应用于第一个Chime/FRB目录,以了解其功能并将FRB分类为不同的群集,而没有任何关于FRB的前提是中继器或非重复者的前提。这些集群揭示了中继器和非复制者之间的差异。然后,通过与观测类中的FRB的身份进行比较,我们评估了各种算法的性能并分析结果背后的物理含义。最后,我们建议一份最可靠的中继器候选者列表,作为未来观察活动的目标,以搜索使用监督的机器学习方法在论文I中提出的结果的重复爆发。
Fast radio bursts (FRBs) are one of the most mysterious astronomical transients. Observationally, they can be classified into repeaters and apparently non-repeaters. However, due to the lack of continuous observations, some apparently repeaters may have been incorrectly recognized as non-repeaters. In a series of two papers, we intend to solve such problem with machine learning. In this second paper of the series, we focus on an array of unsupervised machine learning methods. We apply multiple unsupervised machine learning algorithms to the first CHIME/FRB catalog to learn their features and classify FRBs into different clusters without any premise about the FRBs being repeaters or non-repeaters. These clusters reveal the differences between repeaters and non-repeaters. Then, by comparing with the identities of the FRBs in the observed classes, we evaluate the performance of various algorithms and analyze the physical meaning behind the results. Finally, we recommend a list of most credible repeater candidates as targets for future observing campaigns to search for repeated bursts in combination of the results presented in Paper I using supervised machine learning methods.