探讨相关簇的复杂关系

Elke Achtert, C. Böhm, H. Kriegel, Peer Kröger, A. Zimek
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引用次数: 62

摘要

在高维数据中,聚类通常只存在于特征空间的任意方向的子空间中。此外,这些所谓的相关集群之间可能存在复杂的关系。例如,一维子空间中的一个相关簇(形成一条线)可能被封闭在二维超空间(形成平面)中的一个甚至几个相关簇中。一般来说,这种关系可以看作是一个复杂的层次结构,允许多个包含,即集群可以嵌入到几个超级集群中,而不仅仅是一个。显然,揭示检测到的相关簇之间的层次关系是一个重要的信息增益。由于现有的方法无法检测相关聚类之间如此复杂的层次关系,我们提出了ERiC算法来解决这个问题,并通过基于图的表示来可视化结果。在我们的实验评估中,我们表明ERiC比最先进的相关聚类方法找到更多的信息,并且在效率方面优于现有的竞争对手。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On Exploring Complex Relationships of Correlation Clusters
In high dimensional data, clusters often only exist in arbitrarily oriented subspaces of the feature space. In addition, these so-called correlation clusters may have complex relationships between each other. For example, a correlation cluster in a 1-D subspace (forming a line) may be enclosed within one or even several correlation clusters in 2-D superspaces (forming planes). In general, such relationships can be seen as a complex hierarchy that allows multiple inclusions, i.e. clusters may be embedded in several super-clusters rather than only in one. Obviously, uncovering the hierarchical relationships between the detected correlation clusters is an important information gain. Since existing approaches cannot detect such complex hierarchical relationships among correlation clusters, we propose the algorithm ERiC to tackle this problem and to visualize the result by means of a graph-based representation. In our experimental evaluation, we show that ERiC finds more information than state-of-the-art correlation clustering methods and outperforms existing competitors in terms of efficiency.
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