一种基于密度差的聚类技术

B. Borah, D. Bhattacharyya
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引用次数: 27

摘要

在存在噪声和异常值的情况下,寻找大小、形状和密度差异很大的集群是一项具有挑战性的工作。DBSCAN算法是一种通用的聚类算法,可以在包含噪声和离群值的数据库中发现大小和形状不同的聚类。但是它找不到密度不同的星团。我们扩展了DBSCAN算法,使它也可以检测密度不同的群集。在扩展集群时,考虑了局部密度。从一个核心对象开始,只扩展那些密度相连的核心对象,这些核心对象的邻居大小在一定范围内,这是由它们在集群中已经存在的邻居决定的。我们的算法检测聚类,即使它们没有被稀疏区域分开。改进算法的计算复杂度为O(n log n),与原DBSCAN算法保持一致
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Clustering Technique using Density Difference
Finding clusters with widely differing sizes, shapes and densities in presence of noise and outliers is a challenging job. The DBSCAN algorithm is a versatile clustering algorithm that can find clusters with differing size and shape in databases containing noise and outliers. But it cannot find clusters with different densities. We extend the DBSCAN algorithm so that it can also detect clusters that differ in densities. While expanding a cluster local density is taken into consideration. Starting with a core object a cluster is extended by expanding only those density connected core objects whose neighbourhood sizes are within certain ranges as determined by their neighbours already existing in the cluster. Our algorithm detects clusters even if they are not separated by sparse regions. The computational complexity of the modified algorithm (O(n log n)) remains same as the original DBSCAN
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