Cluster-aware arrangement of the parallel coordinate plots

Q3 Computer Science
Zhiguang Zhou, Zhifei Ye, Jiajun Yu, Weifeng Chen
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引用次数: 12

Abstract

The dimension ordering of parallel coordinate plots has been widely studied, aiming at the insightful exploration of multi-dimensional data. However, few works focus on the category distributions across dimensions and construct an effective dimension ordering to enable the visual exploration of clusters. Therefore, we propose a cluster-aware arrangement method of the parallel coordinate plots and design a visualization framework for the multi-dimensional data exploration. Firstly, a hierarchical clustering scheme is employed to identify the categories of interest across different dimensions. Then we design a group of icicle views to present the hierarchies of dimensions, the colors of which also indicate the relationships between different categories. A cluster-aware correlation is defined to measure the relationships between different attribute axes, based on the distributions of categories. Furthermore, a matrix map is designed to present the relationships between dimensions, and the MDS method is employed to transform the dimensions into 2D coordinates, in which the correlations among the dimensions are conserved. At last, we solve the Traveling Salesman Problem (TSP) and achieve an automated dimension ordering of the parallel coordinate plots, which largely highlights the relations of categories across dimensions. A set of convenient interactions are also integrated in the visualization system, allowing users to get insights into the multi-dimensional data from various perspectives. A large number of experimental results and the credible user studies further demonstrate the usefulness of the cluster-aware arrangement of the parallel coordinate plots.

平行坐标图的群集感知排列
平行坐标图的维数排序已被广泛研究,旨在深入探索多维数据。然而,很少有工作关注跨维度的类别分布,并构建有效的维度排序来实现集群的可视化探索。因此,我们提出了一种并行坐标图的聚类感知排列方法,并设计了一个用于多维数据探索的可视化框架。首先,采用分层聚类方案来识别不同维度的兴趣类别。然后,我们设计了一组冰柱视图来呈现维度的层次结构,其颜色也指示了不同类别之间的关系。基于类别的分布,定义了感知集群的相关性来测量不同属性轴之间的关系。此外,设计了一个矩阵图来表示维度之间的关系,并采用MDS方法将维度转换为二维坐标,其中维度之间的相关性是守恒的。最后,我们解决了旅行商问题(TSP),并实现了平行坐标图的自动维度排序,这在很大程度上突出了类别在维度上的关系。可视化系统中还集成了一组方便的交互,允许用户从各个角度深入了解多维数据。大量的实验结果和可信的用户研究进一步证明了平行坐标图的聚类感知排列的有用性。
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来源期刊
Journal of Visual Languages and Computing
Journal of Visual Languages and Computing 工程技术-计算机:软件工程
CiteScore
1.62
自引率
0.00%
发文量
0
审稿时长
26.8 weeks
期刊介绍: The Journal of Visual Languages and Computing is a forum for researchers, practitioners, and developers to exchange ideas and results for the advancement of visual languages and its implication to the art of computing. The journal publishes research papers, state-of-the-art surveys, and review articles in all aspects of visual languages.
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