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首页> 外文期刊>IEEE Transactions on Knowledge and Data Engineering >Revealing Density-Based Clustering Structure from the Core-Connected Tree of a Network
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Revealing Density-Based Clustering Structure from the Core-Connected Tree of a Network

机译:从网络的核心连接树揭示基于密度的聚类结构

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摘要

Clustering is an important technique for mining the intrinsic community structures in networks. The density-based network clustering method is able to not only detect communities of arbitrary size and shape, but also identify hubs and outliers. However, it requires manual parameter specification to define clusters, and is sensitive to the parameter of density threshold which is difficult to determine. Furthermore, many real-world networks exhibit a hierarchical structure with communities embedded within other communities. Therefore, the clustering result of a global parameter setting cannot always describe the intrinsic clustering structure accurately. In this paper, we introduce a novel density-based network clustering method, called graph-skeleton-based clustering (gSkeletonClu). By projecting an undirected network to its core-connected maximal spanning tree, the clustering problem can be converted to detect core connectivity components on the tree. The density-based clustering of a specific parameter setting and the hierarchical clustering structure both can be efficiently extracted from the tree. Moreover, it provides a convenient way to automatically select the parameter and to achieve the meaningful cluster tree in a network. Extensive experiments on both real-world and synthetic networks demonstrate the superior performance of gSkeletonClu for effective and efficient density-based clustering.
机译:聚类是挖掘网络中固有社区结构的一项重要技术。基于密度的网络聚类方法不仅能够检测任意大小和形状的社区,而且能够识别中心和离群值。但是,它需要手动指定参数来定义聚类,并且对难以确定的密度阈值参数敏感。此外,许多现实世界的网络都表现出一种层次结构,其中的社区嵌入其他社区中。因此,全局参数设置的聚类结果不能总是准确地描述固有聚类结构。在本文中,我们介绍了一种新颖的基于密度的网络聚类方法,称为基于图骨架的聚类(gSkeletonClu)。通过将无向网络投影到其核心连接的最大生成树,可以将群集问题转换为检测树上的核心连接组件。可以从树中有效地提取特定参数设置的基于密度的聚类和分层聚类结构。而且,它提供了一种方便的方式来自动选择参数并实现网络中有意义的群集树。在现实世界和合成网络上进行的大量实验证明,gSkeletonClu对于基于密度的聚类有效而高效。

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