揭示拥挤平行坐标可视化中的簇

A. O. Artero, Maria Cristina Ferreira de Oliveira, H. Levkowitz
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引用次数: 209

摘要

在许多可视化技术中采用的将每个单个数据项映射到图形标记的一对一策略在记录数量和/或数据集的维数非常高时用处有限。在这种情况下,图形标记的强烈重叠严重妨碍了用户从可视化表示中识别数据模式的能力。我们在这里使用一种策略来解决这个问题,该策略从数据集中计算频率或密度信息,并在并行坐标可视化中使用这些信息来过滤要呈现给用户的信息,从而减少视觉混乱并允许分析人员观察数据中的相关模式。在传统图像处理技术(如灰度处理和阈值处理)的启发下,本文还介绍了构建这种可视化的算法和支持的交互机制。我们还说明了这种算法如何帮助用户在非常嘈杂的大型数据集中有效地识别聚类
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Uncovering Clusters in Crowded Parallel Coordinates Visualizations
The one-to-one strategy of mapping each single data item into a graphical marker adopted in many visualization techniques has limited usefulness when the number of records and/or the dimensionality of the data set are very high. In this situation, the strong overlapping of graphical markers severely hampers the user's ability to identify patterns in the data from its visual representation. We tackle this problem here with a strategy that computes frequency or density information from the data set, and uses such information in parallel coordinates visualizations to filter out the information to be presented to the user, thus reducing visual clutter and allowing the analyst to observe relevant patterns in the data. The algorithms to construct such visualizations, and the interaction mechanisms supported, inspired by traditional image processing techniques such as grayscale manipulation and thresholding are also presented. We also illustrate how such algorithms can assist users to effectively identify clusters in very noisy large data sets
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