一种基于饱和邻居图的分层聚类算法

Qingsheng Zhu, Dongdong Cheng, Jinlong Huang
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引用次数: 2

摘要

本文提出了一种基于饱和邻居图的分层聚类算法hi-CLUBS和自然近邻的新概念,该概念采用无参数算法对数据集中的每个点进行自然近邻搜索。在这项工作中,首先由自然最近邻构造饱和邻居图。然后在图划分算法中引入模块化,将生成的图划分为不带任何参数的小子簇;最后,根据基于连通性和亲密度的相似性度量,将这些初始子聚类与另一个聚类重复合并,直到达到所需的聚类数。结果表明,与传统聚类算法相比,hi-CLUBS生成的最终聚类具有更好的质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Hierarchical Clustering Algorithm Based on Saturated Neighbor Graph
This paper proposes a hierarchical clustering algorithm based on Saturated Neighbor Graph -- hi-CLUBS and a new concept, natural nearest neighbor, which adopts a parameter-less algorithm of searching the natural neighbors for each point in a dataset. In the work, the Saturated Neighbor Graph is constructed by the natural nearest neighbor firstly. Then modularity is introduced into graph partitioning algorithm, with which the generated graph is partitioned into small sub-clusters without any parameters. Finally, these initial sub-clusters are repeatedly merged with another cluster according to similarity measurement based on connectivity and closeness, until the desired cluster number is reached. The results show that hi-CLUBS produces a set of final clusters achieves better quality than the traditional clustering algorithms.
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