交互式构造低维平行坐标图实现高维数据可视化

Takayuki Itoh , Ashnil Kumar , Karsten Klein , Jinman Kim
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引用次数: 32

摘要

平行坐标图(PCP)是高维数据空间可视化和探索最有用的技术之一。它们对于表示维度之间的相关性特别有用,这些相关性可以识别变量之间的关系和相互依赖性。然而,在这些高维空间内,PCP在显示维度组合之间的相关性方面面临困难,并且通常随着维度数量的增加而需要额外的显示空间。在本文中,我们提出了一种用于高维数据可视化的新技术,其中通过对高维数据空间的用户选择的子集进行采样来交互式地构建一组低维PCP。在我们的技术中,我们首先构建了一个具有良好相关性的维度集的图形可视化。用户观察该图,并能够通过从其派系中采样来交互式地选择维度,从而动态地指定用于构建聚焦PCP的最相关的低维度数据。我们的交互式采样通过实现高维空间中最有意义的维度(即最相关的信息)的可视化,克服了PCP的缺点。我们通过两个案例研究证明了我们技术的有效性,其中我们表明,所提出的交互式低维空间结构对于可视化高维数据和发现新模式至关重要。
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High-dimensional data visualization by interactive construction of low-dimensional parallel coordinate plots

Parallel coordinate plots (PCPs) are among the most useful techniques for the visualization and exploration of high-dimensional data spaces. They are especially useful for the representation of correlations among the dimensions, which identify relationships and interdependencies between variables. However, within these high-dimensional spaces, PCPs face difficulties in displaying the correlation between combinations of dimensions and generally require additional display space as the number of dimensions increases. In this paper, we present a new technique for high-dimensional data visualization in which a set of low-dimensional PCPs are interactively constructed by sampling user-selected subsets of the high-dimensional data space. In our technique, we first construct a graph visualization of sets of well-correlated dimensions. Users observe this graph and are able to interactively select the dimensions by sampling from its cliques, thereby dynamically specifying the most relevant lower dimensional data to be used for the construction of focused PCPs. Our interactive sampling overcomes the shortcomings of the PCPs by enabling the visualization of the most meaningful dimensions (i.e., the most relevant information) from high-dimensional spaces. We demonstrate the effectiveness of our technique through two case studies, where we show that the proposed interactive low-dimensional space constructions were pivotal for visualizing the high-dimensional data and discovering new patterns.

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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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