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Classification of celestial spectral based on improved density clustering

机译:基于改进密度聚类的天体光谱分类

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With the rapid development of large-scale survey plans, the automatic classification of massive celestial spectrum data has urgently become an important research project. This paper presents the principle that based on density and improved density clustering algorithm - The Manhattan Distance density algorithm(MD-DBSCAN), applied to a variety of spectral data. According to the United States SDSS-DR8 astronomical spectral data, compared to three algorithms of DBSCAN, NED-DBSCAN, MD-DBSCAN performance, then give the corresponding conclusions, the average classified stable number of the MD-DBSCAN algorithm is smaller and computing time is shorter.
机译:随着大规模测量计划的迅速发展,海量天体光谱数据的自动分类已迫切成为一项重要的研究项目。本文提出了基于密度和改进的密度聚类算法-曼哈顿距离密度算法(MD-DBSCAN),适用于各种光谱数据的原理。根据美国SDSS-DR8天文光谱数据,比较了三种算法的DBSCAN,NED-DBSCAN,MD-DBSCAN的性能,然后给出相应的结论,MD-DBSCAN算法的平均分类稳定数较小,计算时间短。更短。

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