Pulsar Star Detection: A Comparative Analysis of Classification Algorithms using SMOTE

Apratim Sadhu
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引用次数: 0

Abstract

A Pulsar is a highly magnetized rotating compact star whose magnetic poles emit beams of radiation. The application of pulsar stars has a great application in the field of astronomical study. Applications like the existence of gravitational radiation can be indirectly confirmed from the observation of pulsars in a binary neutron star system. Therefore, the identification of pulsars is necessary for the study of gravitational waves and general relativity. Detection of pulsars in the universe can help research in the field of astrophysics. At present, there are millions of pulsar candidates present to be searched. Machine learning techniques can help detect pulsars from such a large number of candidates. The paper discusses nine common classification algorithms for the prediction of pulsar stars and then compares their performances using various classification metrics such as classification accuracy, precision and recall value, ROC score and f-score on both balanced and unbalanced data. SMOTE-technique is used to balance the data for better results. Among the nine algorithms, XGBoosting algorithm achieved the best results. The paper is concluded with prospects of machine learning for pulsar detection in the field of astronomy.
脉冲星探测:使用SMOTE分类算法的比较分析
脉冲星是一种高度磁化的旋转致密恒星,其磁极发射出辐射束。脉冲星的应用在天文研究领域有很大的应用。像引力辐射的存在这样的应用可以通过对双中子星系统中脉冲星的观测间接证实。因此,脉冲星的识别对于引力波和广义相对论的研究是必要的。探测宇宙中的脉冲星有助于天体物理学领域的研究。目前,有数百万的脉冲星候选者等待搜索。机器学习技术可以帮助从如此大量的候选者中探测脉冲星。本文讨论了九种常用的脉冲星预测分类算法,并在平衡和不平衡数据上使用分类精度、精度和召回值、ROC分数和f分数等各种分类指标对其性能进行了比较。smote技术用于平衡数据以获得更好的结果。在这9种算法中,XGBoosting算法取得了最好的效果。最后展望了机器学习在天文学领域脉冲星探测中的应用前景。
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