面向高维数据可视化的低维平行坐标图排列

Haruka Suematsu, Yunzhu Zheng, T. Itoh, R. Fujimaki, Satoshi Morinaga, Y. Kawahara
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引用次数: 12

摘要

多维数据可视化是一个日益受到重视的重要研究课题。已经提出了几种使用平行坐标图来表示单个显示空间中数据的所有维度的技术。此外,还提出了其他几种应用散点图矩阵的技术,将多维数据表示为低维数据可视化空间的集合。通常,当使用后一种方法时,更容易理解特定维度之间的关系,但通常很难观察分隔到不同可视化空间的维度之间的关系。本文提出了一个框架,用于显示由高维数据集生成的低维数据可视化空间的排列。我们提出的技术首先将输入数据集的维度根据它们的相关性或其他关系划分为较低维度的组。如果低维组可以在独立的矩形空间中可视化,那么我们的技术将低维数据可视化集打包到单个显示空间中。由于我们的技术将相关的低维数据放在显示空间中靠得更近的地方,因此更容易直观地比较相关的低维数据可视化集。在本文中,我们详细描述了如何使用平行坐标图实现我们的框架,并给出了几个结果来证明它的有效性。
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Arrangement of Low-Dimensional Parallel Coordinate Plots for High-Dimensional Data Visualization
Multidimensional data visualization is an important research topic that has been receiving increasing attention. Several techniques that use parallel coordinate plots have been proposed to represent all dimensions of data in a single display space. In addition, several other techniques that apply scatter plot matrices have been proposed to represent multidimensional data as a collection of low-dimensional data visualization spaces. Typically, when using the latter approach it is easier to understand relations among particular dimensions, but it is often difficult to observe relations between dimensions separated into different visualization spaces. This paper presents a framework for displaying an arrangement of low-dimensional data visualization spaces that are generated from high-dimensional datasets. Our proposed technique first divides the dimensions of the input datasets into groups of lower dimensions based on their correlations or other relationships. If the groups of lower dimensions can be visualized in independent rectangular spaces, our technique packs the set of low-dimensional data visualizations into a single display space. Because our technique places relevant low-dimensions closer together in the display space, it is easier to visually compare relevant sets of low-dimensional data visualizations. In this paper, we describe in detail how we implement our framework using parallel coordinate plots, and present several results demonstrating its effectiveness.
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