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A Comparative Study of Binary Classification Methods for Pulsar Detection

机译:脉冲条检测二元分类方法的比较研究

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摘要

Pulsars are fast spinning neutron stars which on observing, emit pulsed appearance of radio waves and other electromagnetic radiation with very high pulse rate. The study of these dense neutron stars provides key insights on various physical occurrences like the plasma behavior in highly dense environments, behaviors of binary system consisting of a pulsar and a black hole and general relativity for the same. This requires a very elaborate dataset of pulsars and their statistical data for both repeatability and experimental accuracy. For this to be implemented, many large-scale pulsar surveys are conducted from time to time. During the process of the survey, manual classification of the data thus obtained, introduces bottleneck both in terms of labor needed and accuracy of classification. Hence statistical learning approaches can be used for the same for autonomous detection of pulsars. The raw dataset obtained for sampling is usually highly unbalanced and this study explores the comparison between the methods for diminishing the effects of unbalanced training datasets on different supervised classifiers to increase the accuracy of classification.
机译:Pulsars是在观察中的快速纺丝中子恒星,其发射无线电波和其他电磁辐射的脉冲外观,具有非常高的脉搏率。对这些致密中子恒星的研究提供了对高度密集的环境中等离子体行为的各种物理出现的关键见解,由脉冲条和黑洞组成的二元系统的行为以及相同的一般相对性。这需要非常精细的Pulsar数据集及其统计数据,用于可重复性和实验准确性。为此实现,许多大规模的脉冲条调查是不时进行的。在调查过程中,手动分类由此获得的数据,在劳动所需的瓶颈引入瓶颈和分类准确性。因此,统计学习方法可以用于相同的脉冲星自主检测。获得用于采样的原始数据集通常非常不平衡,本研究探讨了减少不平衡训练数据集在不同监督分类器上的效果的方法之间的比较,以提高分类的准确性。

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