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A Novel Spatial Clustering Algorithm with Sampling

机译:一种带采样的新型空间聚类算法

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摘要

Spatial clustering is one of the very important spatial data mining techniques. So far, a lot of spatial clustering algorithms have been proposed. DBSCAN is one of the effective spatial clustering algorithms, which can discover clusters of any arbitrary shape and handle the noise effectively. However, it has also several disadvantages. First, it does based on only spatial attributes, does not consider non-spatial attributes in spatial databases. Secondly, when DBSCAN does handle large-scale spatial databases, it requires large volume of memory support and the I/O cost. In this paper, a novel spatial clustering algorithm with sampling (NSCAS) based on DBSCAN is developed, which not only clusters large-scale spatial databases effectively, but also considers spatial attributes and non-spatial attributes. Experimental results of 2-D spatial datasets show that NSCAS is feasible and efficient.
机译:空间聚类是非常重要的空间数据挖掘技术之一。到目前为止,已经提出了许多空间聚类算法。 DBSCAN是有效的空间聚类算法之一,它可以发现任意形状的聚类并有效地处理噪声。但是,它也有几个缺点。首先,它仅基于空间属性,而不考虑空间数据库中的非空间属性。其次,当DBSCAN处理大型空间数据库时,它需要大量的内存支持和I / O成本。本文提出了一种基于DBSCAN的新型带采样空间聚类算法(NSCAS),该算法不仅有效地对大型空间数据库进行聚类,而且还考虑了空间属性和非空间属性。二维空间数据集的实验结果表明,NSCAS是可行和有效的。

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