1.5D动态网络可视化

Lei Shi, Chen Wang, Zhen Wen
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引用次数: 42

摘要

由于额外的时间维度带来的复杂性,动态网络可视化一直是一个具有挑战性的课题。这个问题的现有解决方案通常适合于概述和表示,但不适合交互式分析。本文提出了一种仅考虑以焦点节点为中心的动态网络(即动态自我网络)的新方法。整个网络的导航是通过用户交互切换焦点节点来实现的。这种方法在不牺牲焦点节点中心的网络和时间亲和性的前提下,大大降低了压缩动态网络的复杂性。因此,我们能够在单个静态视图中呈现每个动态自我网络,很好地支持对时间网络模式的用户分析。我们描述了我们的总体框架,包括网络数据预处理,1.5D网络和趋势可视化设计,布局算法,以及一些定制的交互。此外,我们表明,我们的方法也可以扩展到可视化基于事件和多模态的动态网络。最后,我们通过两个实际案例研究证明了我们的解决方案在支持视觉证据和模式发现方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic network visualization in 1.5D
The dynamic network visualization has been a challenging topic due to the complexity introduced by the extra time dimension. Existing solutions to this problem are usually good for the overview and presentation, but not for the interactive analysis. We propose in this paper a new approach which only considers the dynamic network central to a focus node (aka dynamic ego network). The navigation of the entire network is achieved by switching the focus node with user interactions. With this approach, the complexity of the compressed dynamic network is greatly reduced without sacrificing the network and time affinity central to the focus node. As a result, we are able to present each dynamic ego network in a single static view, well supporting user analysis on temporal network patterns. We describe our general framework including the network data pre-processing, 1.5D network and trend visualization design, layout algorithms, as well as several customized interactions. In addition, we show that our approach can also be extended to visualize the event-based and multimodal dynamic networks. Finally, we demonstrate, through two practical case studies, the effectiveness of our solution in support of visual evidence and pattern discovery.
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