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Detection of Pulsar Candidates using Bagging Method

机译:使用袋根方法检测脉冲尔候选

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The pulsar classification represents a major issue in the astrophysical area. The Bagging Algorithm is an ensemble method widely used to improve the performance of classification algorithms, especially in the case of pulsar search. In this way, our paper tries to prove how the Bagging Method can improve the performance of pulsar candidate detection in connection with four basic classifiers: Core Vector Machines (CVM), the K-Nearest-Neighbors (KNN), the Artificial Neural Network (ANN), and Cart Decision Tree (CDT). The Error Rate, Area Under the Curve (AUC), and Computation Time (CT) are measured to compare the performance of different classifiers. The High Time Resolution Universe (HTRU2) dataset, collected from the UCI Machine Learning Repository, is used in the experimentation phase.
机译:Pulsar分类代表了天体物理区域的主要问题。堆垛算法是一种集合方法,广泛用于提高分类算法的性能,尤其是在脉冲节搜索的情况下。通过这种方式,我们的论文试图证明装袋方法如何提高与四个基本分类器相关的脉冲座候选检测的性能:核心向量机(CVM),K离最近邻居(KNN),人工神经网络( ANN)和购物车决策树(CDT)。测量曲线(AUC)下的错误率,曲线(AUC)和计算时间(CT)以比较不同分类器的性能。从UCI机器学习存储库中收集的高时间分辨率Universe(HTRU2)数据集用于实验阶段。

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