基于Voronoi图的径向可视化维度锚定评估

Adam Russell, Karen M. Daniels, G. Grinstein
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引用次数: 12

摘要

从高维数据集中选择最表达的维度激发了各种统计和机器学习技术的设计和应用。在这里,在我们当前的工作中,我们引入了一个度量来评估这些方法的有效性。我们的公式基于以下几个广泛的概念:(a)设计一种形式化的方法来划分可视化的图像空间;(b)根据数据图像填充的好坏,识别表明维度选择相对强度的区域;(c)同样地识别那些表明维度选择不佳的区域。特别是,我们探讨了评估径向可视化的质量。这类可视化的维度选择强烈影响可视化质量和簇形成的敏感性。我们证明了Voronoi分割RadViz图像空间的有效性;量化径向可视化质量是尺寸选择的直接指标。这项工作继续发展和完善归一化径向可视化(包括RadViz)的一般类别背后的形式化理论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Voronoi Diagram Based Dimensional Anchor Assessment for Radial Visualizations
Selecting the most expressed dimensions from high dimensional data sets has motivated the design and application of a variety of statistical and machine learning techniques. Here, in our current work, we introduce a metric for assessing the effectiveness of these methods. Our formulation is based on the broad concepts of: (a) devising a formal method of partitioning a visualization's image space; (b) identifying regions that indicate the relative strength of the dimension selection based on how well they are populated by data images; and (c) similarily identifying those regions indicating a poor selection of dimensions. In particular, we explore assessing the quality of radial visualizations. Dimension selection in this class of visualizations strongly effects visualization quality and the sensitivity of cluster formation. We demonstrate the usefulness of Voronoi partitioning the RadViz image space; quantifying radial visualization quality is a direct measure of dimension selection. This work continues to develop and refine the formal theory behind the general class of Normalized Radial Visualizations, including RadViz.
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