用Voronoi图聚类不确定数据

Ben Kao, Sau-dan. Lee, David Wai-Lok Cheung, Wai-Shing Ho, K. F. Chan
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引用次数: 89

摘要

我们研究了用概率密度函数描述位置的不确定对象的聚类问题。我们证明了推广k-means算法来处理不确定对象的UK-means算法是非常低效的。效率低下的原因是UK-means计算对象和集群代表之间的期望距离(ED)。对于任意的pdf,期望距离是通过数值积分计算的,这是一个昂贵的操作。我们提出了基于Voronoi图的剪枝技术,以减少期望距离计算的次数。这些技术被分析证明比以前文献中已知的基于边界盒的基本技术更有效。我们进行实验来评估我们的修剪技术的有效性,并表明我们的技术明显优于以前的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Clustering Uncertain Data Using Voronoi Diagrams
We study the problem of clustering uncertain objects whose locations are described by probability density functions (pdf). We show that the UK-means algorithm, which generalises the k-means algorithm to handle uncertain objects, is very inefficient. The inefficiency comes from the fact that UK-means computes expected distances (ED) between objects and cluster representatives. For arbitrary pdf's, expected distances are computed by numerical integrations, which are costly operations. We propose pruning techniques that are based on Voronoi diagrams to reduce the number of expected distance calculation. These techniques are analytically proven to be more effective than the basic bounding-box-based technique previous known in the literature. We conduct experiments to evaluate the effectiveness of our pruning techniques and to show that our techniques significantly outperform previous methods.
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