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首页> 外文期刊>Computer Graphics Forum: Journal of the European Association for Computer Graphics >MultiClusterTree: Interactive Visual Exploration of Hierarchical Clusters in Multidimensional Multivariate Data
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MultiClusterTree: Interactive Visual Exploration of Hierarchical Clusters in Multidimensional Multivariate Data

机译:MultiClusterTree:多维多元数据中层次聚类的交互式可视化探索

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摘要

Visual analytics of multidimensional multivariate data is a challenging task because of the difficulty in understanding metrics in attribute spaces with more than three dimensions. Frequently, the analysis goal is not to look into individual records but to understand the distribution of the records at large and to find clusters of records with similar attribute values. A large number of (typically hierarchical) clustering algorithms have been developed to group individual records to clusters of statistical significance. However, only few visualization techniques exist for further exploring and understanding the clustering results. We propose visualization and interaction methods for analyzing individual clusters as well as cluster distribution within and across levels in the cluster hierarchy We also provide a clustering method that operates on density rather than individual records. To not restrict our search for clusters, we compute density in the given multidimensional multivariate space. Clusters are formed by areas of high density We present an approach that automatically computes a hierarchical tree of high density, clusters. To visually represent the cluster hierarchy, we present a 2D radial layout that supports an intuitive understanding of the distribution structure of the multidimensional multivariate data set. Individual clusters can be explored interactively using parallel coordinates when being selected in the cluster tree. Furthermore, we integrate circular parallel coordinates into the radial hierarchical cluster tree layout, which allows for the analysis of the overall cluster distribution. This visual representation supports the comprehension of the relations between clusters and the original attributes. The combination of the 2D radial layout and the circular parallel coordinates is used to overcome the overplotting problem of parallel coordinates when looking into data sets with many records. We apply an automatic coloring scheme based on the 2D radial layout of the hierarchical cluster tree encoding hue, saturation, and value of the HSV color space. The colors support linking the 2D radial layout to other views such as the standard parallel coordinates or, in case data is obtained from multidimensional spatial data, the distribution in object space.
机译:多维多元数据的可视化分析是一项具有挑战性的任务,因为难以理解具有三个以上维度的属性空间中的指标。通常,分析的目标不是查看单个记录,而是了解整个记录的分布,并查找具有相似属性值的记录簇。已经开发了许多(通常是分层的)聚类算法来将单个记录分组为具有统计意义的聚类。但是,只有很少的可视化技术可用于进一步探索和理解聚类结果。我们提出了可视化和交互方法来分析单个聚类以及聚类层次结构内和跨聚类层次中各个层次的聚类分布。我们还提供了一种基于密度而非单个记录进行操作的聚类方法。为了不限制对聚类的搜索,我们在给定的多维多元空间中计算密度。聚类由高密度区域形成。我们提出一种自动计算高密度聚类的分层树的方法。为了直观地表示群集层次结构,我们提出了2D径向布局,该布局支持对多维多维数据集的分布结构的直观理解。在群集树中选择单个群集时,可以使用平行坐标进行交互式探索。此外,我们将圆形平行坐标整合到径向层次聚类树布局中,从而可以分析整个聚类分布。这种视觉表示支持理解聚类和原始属性之间的关系。二维径向布局和圆形平行坐标的组合用于克服在查看具有多个记录的数据集时平行坐标的过度绘图问题。我们基于分层聚类树的2D径向布局应用自动着色方案,该布局对HSV颜色空间的色调,饱和度和值进行编码。颜色支持将2D径向布局链接到其他视图,例如标准平行坐标,或者在从多维空间数据获得数据的情况下,将对象空间中的分布链接起来。

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