GDCLU:一种新的基于网格密度的ClustrIng算法

Gholamreza Esfandani, Mohsen Sayyadi, A. Namadchian
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引用次数: 14

摘要

本文解决了数据挖掘中基于密度的聚类问题,即基于区域密度建立聚类。在该领域提出的最著名的算法是DBSCAN[1],它使用两个参数影响结果聚类的形状。因此,该算法的主要缺点之一是缺乏在多密度环境下处理聚类的能力。本文提出了一种新的基于密度的网格聚类算法GDCLU,该算法对密集区域进行了新的定义。它根据邻居的密度来确定密集的网格。这个新定义使GDCLU能够在多密度环境中处理不同形状的簇。该算法还得益于尺度无关性的特点。算法的时间复杂度为O(n),其中n为数据集中的点数。几个例子表明,在多密度环境下,与光学等其他基本算法相比,该算法的性能有了很大的提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
GDCLU: A New Grid-Density Based ClustrIng Algorithm
This paper addresses the density based clustering problem in data mining where clusters are established based on density of regions. The most well-known algorithm proposed in this area is DBSCAN [1] which employs two parameters influencing the shape of resulted clusters. Therefore, one of the major weaknesses of this algorithm is lack of ability to handle clusters in multi-density environments. In this paper, a new density based grid clustering algorithm, GDCLU, is proposed which uses a new definition for dense regions. It determines dense grids based on densities of their neighbors. This new definition enables GDCLU to handle different shaped clusters in multi-density environments. Also this algorithm benefits from scale independency feature. The time complexity of the algorithm is O(n) in which n is number of points in dataset. Several examples are presented showing promising improvement in performance over other basic algorithms like optics in multi-density environments.
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