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首页> 外文期刊>Journal of Zhejiang University. Science >Using Greedy algorithm: DBSCAN revisited Ⅱ
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Using Greedy algorithm: DBSCAN revisited Ⅱ

机译:使用贪婪算法:DBSCAN重温Ⅱ

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摘要

The density-based clustering algorithm presented is different from the classical Density-Based Spatial Clustering of Applications with Noise (DBSCAN) (Ester et al., 1996), and has the following advantages: first, Greedy algorithm substitutes for R~*-tree (Bechmann et al., 1990) in DBSCAN to index the clustering space so that the clustering time cost is decreased to great extent and I/O memory load is reduced as well; second, the merging condition to approach to arbitrary-shaped clusters is designed carefully so that a single threshold can distinguish correctly all clusters in a large spatial dataset though some density-skewed clusters live in it. Finally, authors investigate a robotic navigation and test two artificial datasets by the proposed algorithm to verify its effectiveness and efficiency.
机译:提出的基于密度的聚类算法与经典的基于噪声的基于密度的空间聚类算法(DBSCAN)(Ester等,1996)不同,它具有以下优点:首先,贪婪算法替代了R〜* -tree (Bechmann et al。,1990)在DBSCAN中对聚类空间建立索引,从而极大地减少了聚类时间成本,并减少了I / O内存负载。其次,仔细设计接近任意形状聚类的合并条件,以使单个阈值可以正确区分大型空间数据集中的所有聚类,尽管其中存在一些密度偏斜的聚类。最后,作者研究了一种机器人导航,并通过提出的算法测试了两个人工数据集,以验证其有效性和效率。

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