树形图:一个混合的树矩阵可视化技术,支持树形图的交互式探索

R. Blanch, Rémy Dautriche, G. Bisson
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引用次数: 20

摘要

在试图理解大型数据集时,聚类通常是第一步。广泛的聚类分析算法,即分层聚类算法,不提供数据集的分区,而是提供在二叉树中组织的聚类层次结构,称为树状图。树状图具有经典的节点链接表示,被专家用于各种任务,例如:决定哪些子树是实际的簇(例如,通过在给定深度切割树状图);通过检查这些集群的内容来给它们起一个名字;等。我们提出了树形图的混合树矩阵交互式可视化,将单个对象之间的关系叠加到集群的层次结构上。Dendrogramix使用户能够完成涉及集群和单个对象的任务,这些任务在经典表示中是不可实现的,例如:解释为什么特定对象属于特定的集群;引出并理解不常见的模式(例如,可能被分类在完全不同的集群中的对象);等。这些语义生成任务由一组一致的交互技术支持,这些技术有助于探索大型聚类结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dendrogramix: A hybrid tree-matrix visualization technique to support interactive exploration of dendrograms
Clustering is often a first step when trying to make sense of a large data set. A wide family of cluster analysis algorithms, namely hierarchical clustering algorithms, does not provide a partition of the data set but a hierarchy of clusters organized in a binary tree, known as a dendrogram. The dendrogram has a classical node-link representation used by experts for various tasks like: to decide which subtrees are actual clusters (e.g., by cutting the dendrogram at a given depth); to give those clusters a name by inspecting their content; etc. We present Dendrogramix, a hybrid tree-matrix interactive visualization of dendrograms that superimposes the relationship between individual objects on to the hierarchy of clusters. Dendrogramix enables users to do tasks which involve both clusters and individual objects that are impracticable with the classical representation, like: to explain why a particular objects belongs to a particular cluster; to elicit and understand uncommon patterns (e.g., objects that could have been classified in a totally different cluster); etc. Those sensemaking tasks are supported by a consistent set of interaction techniques that facilitates the exploration of large clustering results.
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