不同时间粒度的动态图形可视化

Michael Burch, Thomas Reinhardt
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引用次数: 2

摘要

动态图通常以时间到空间的映射表示,目的是保留心理地图,以减少比较任务的认知努力。这种从时间到空间的映射有一个普遍的缺点,即与图形动画所属的相应时间到时间的映射相比,空间限制更容易达到。因此,为了对图序列中的动态进行概述,使用空间高效和紧凑的视觉编码来在序列中显示尽可能多的图。因此,时间图聚合是一种聪明的数据转换策略,但不利的是,它不能提供单个图的概览,也不能显示更细时间粒度上的图子序列。在本文中,我们描述了一种可视化技术,该技术可以将动态图形可视化为时间-空间映射,并且允许图形分析人员交互式地探索不同时间粒度的动态图形数据。此外,如果动态图数据比较密集,可以通过选择密度区间进行过滤。我们通过将可视化工具应用于模拟时间连续变化的图形的动态图形数据集来说明它的有用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic Graph Visualization on Different Temporal Granularities
Dynamic graphs are typically represented in a time-to-space mapping with the goal to preserve the mental map in order to reduce cognitive efforts for comparison tasks. Such a mapping from time to space has the general drawback that space limitations are sooner reached than in corresponding time-to-time mappings to which graph animation belongs. Consequently, to get an overview about the dynamics in a graph sequence, space-efficient and compact visual encodings are used to show as many graphs in the sequence as possible. Temporal graph aggregation is hence a clever data transformation strategy, but negatively, it does not provide an overview about individual graphs nor does it show graph subsequences on finer time granularities. In this paper we describe a visualization technique that can visualize dynamic graphs in a time-to-space mapping and additionally, allows the graph analyst to interactively explore the dynamic graph data on different temporal granularities. Moreover, if the dynamic graph data is rather dense, it can be filtered by selecting density intervals. We illustrate the usefulness of our visualization tool by applying it to a dynamic graph dataset that simulates time-contiuously changing graphs.
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