数据分析增强数据可视化和询问与平行坐标图

M. Akbar, B. Gabrys
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引用次数: 3

摘要

并行坐标图(pcp)在处理较大的多维数据集时存在维数诅咒的问题。维数的缺乏会导致混乱,从而隐藏了重要的视觉数据趋势。已经提出了许多解决此问题的解决方案,包括过滤、聚合和维度重新排序。然而,这些解决方案在探索pcp中坐标之间的关系和趋势方面有其局限性。基于相关性的坐标重排序技术是最流行的,并已广泛应用于pcp中以减少杂波,尽管基于已进行的实验,本研究已经确定了它们的一些局限性。为了在减少杂波的情况下获得更好的可视化效果,我们提出并评估了基于交叉对数量最小化的尺寸重排序方法。在最后一步中,k-means聚类与重新排序的坐标相结合,以突出关键趋势和模式。所进行的对比分析表明,最小交叉对方法在坐标重排序方面的表现要比其他应用技术好得多,并且当与k-means聚类相结合时,可以获得更好的可视化效果,大大减少了杂波。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data Analytics Enhanced Data Visualization and Interrogation with Parallel Coordinates Plots
Parallel coordinates plots (PCPs) suffer from curse of dimensionality when used with larger multidimensional datasets. Curse of dimentionality results in clutter which hides important visual data trends among coordinates. A number of solutions to address this problem have been proposed including filtering, aggregation, and dimension reordering. These solutions, however, have their own limitations with regard to exploring relationships and trends among the coordinates in PCPs. Correlation based coordinates reordering techniques are among the most popular and have been widely used in PCPs to reduce clutter, though based on the conducted experiments, this research has identified some of their limitations. To achieve better visualization with reduced clutter, we have proposed and evaluated dimensions reordering approach based on minimization of the number of crossing pairs. In the last step, k-means clustering is combined with reordered coordinates to highlight key trends and patterns. The conducted comparative analysis have shown that minimum crossings pairs approach performed much better than other applied techniques for coordinates reordering, and when combined with k-means clustering, resulted in better visualization with significantly reduced clutter.
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