多(子空间)聚类解决方案的交互式探索

Stephan Günnemann, Hardy Kremer, Ines Färber, T. Seidl
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引用次数: 9

摘要

如今,大量的数据无处不在。引入了聚类等数据挖掘方法来从这些数据中获取知识。近年来,多聚类的检测已成为一个活跃的研究领域,其中针对单个数据集生成了几种不同的聚类解决方案。得到的每个聚类解决方案都是有效的、重要的,并提供了对数据的不同解释。然而,知识提取的关键是了解不同的解决方案是如何相互关联的。这可以通过比较和分析得到的聚类解决方案来实现。我们将介绍我们的演示MCExplorer,这是第一个允许对多个粒度的多个集群解决方案进行交互式探索、浏览和可视化的工具。MCExplorer适用于全空间和子空间聚类方法的输出。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MCExplorer: Interactive Exploration of Multiple (Subspace) Clustering Solutions
Large amounts of data are ubiquitous today. Data mining methods like clustering were introduced to gain knowledge from these data. Recently, detection of multiple clusterings has become an active research area, where several alternative clustering solutions are generated for a single dataset. Each of the obtained clustering solutions is valid, of importance, and provides a different interpretation of the data. The key for knowledge extraction, however, is to learn how the different solutions are related to each other. This can be achieved by a comparison and analysis of the obtained clustering solutions. We introduce our demo MCExplorer, the first tool that allows for interactive exploration, browsing, and visualization of multiple clustering solutions on several granularities. MCExplorer is applicable to the output of both fullspace and subspace clustering approaches.
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