K-DBSCAN:识别不同密度水平的空间集群

Madhuri Debnath, P. Tripathi, R. Elmasri
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引用次数: 19

摘要

空间聚类是空间数据分析的重要工具。在本文中,我们提出了一种新的基于密度的空间聚类算法K-DBSCAN,其主要重点是识别具有相似空间密度的点聚类。这与许多其他方法形成对比,这些方法的主要重点是空间连续性。K-DBSCAN的优势在于在可变密度区域中发现任意形状的簇。此外,它还可以发现空间区域重叠但密度水平不同的集群。目标是区分密度最大的区域和密度较低的区域,其次是空间连续性。原始的DBSCAN无法发现密度变化和重叠区域的簇。光学和共享近邻(SNN)算法具有聚类变密度数据集的能力,但它们有自己的局限性。两者都无法检测到重叠簇。此外,在处理不同密度时,两种算法都会合并来自不同密度水平的点。K-DBSCAN有两个阶段:首先,它将所有数据对象划分为不同的密度级别,以识别数据集中存在的不同自然密度,然后使用修改版本的DBSCAN提取聚类。在合成数据和真实空间数据集上的实验结果表明了聚类算法的有效性。
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K-DBSCAN: Identifying Spatial Clusters with Differing Density Levels
Spatial clustering is a very important tool in the analysis of spatial data. In this paper, we propose a novel density based spatial clustering algorithm called K-DBSCAN with the main focus of identifying clusters of points with similar spatial density. This contrasts with many other approaches, whose main focus is spatial contiguity. The strength of K-DBSCAN lies in finding arbitrary shaped clusters in variable density regions. Moreover, it can also discover clusters with overlapping spatial regions, but differing density levels. The goal is to differentiate the most dense regions from lower density regions, with spatial contiguity as the secondary goal. The original DBSCAN fails to discover the clusters with variable density and overlapping regions. OPTICS and Shared Nearest Neighbour (SNN) algorithms have the capabilities of clustering variable density datasets but they have their own limitations. Both fail to detect overlapping clusters. Also, while handling varying density, both of the algorithms merge points from different density levels. K-DBSCAN has two phases: first, it divides all data objects into different density levels to identify the different natural densities present in the dataset, then it extracts the clusters using a modified version of DBSCAN. Experimental results on both synthetic data and a real-world spatial dataset demonstrate the effectiveness of our clustering algorithm.
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