Concept tree based clustering visualization with shaded similarity matrices

Jun Wang, Bei Yu, L. Gasser
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引用次数: 11

Abstract

One problem with existing clustering methods is that the interpretation of clusters may be difficult. Two different approaches have been used to solve this problem: conceptual clustering in machine learning and clustering visualization in statistics and graphics. The purpose of this paper is to investigate the benefits of combining clustering visualization and conceptual clustering to obtain better cluster interpretations. In our research we have combined concept trees for conceptual clustering with shaded similarity matrices for visualization. Experimentation shows that the two interpretation approaches can complement each other to help us understand data better.
基于阴影相似矩阵的概念树聚类可视化
现有聚类方法的一个问题是,对聚类的解释可能很困难。有两种不同的方法被用来解决这个问题:机器学习中的概念聚类和统计学和图形学中的聚类可视化。本文的目的是研究将聚类可视化和概念聚类相结合的好处,以获得更好的聚类解释。在我们的研究中,我们结合了用于概念聚类的概念树和用于可视化的阴影相似矩阵。实验表明,这两种解释方法可以相互补充,帮助我们更好地理解数据。
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