探索动态网络的交互式时间序列测度

Liwenhan Xie, J. O'Donnell, Benjamin Bach, Jean-Daniel Fekete
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引用次数: 5

摘要

我们提出了MeasureFlow,这是一个通过时间序列的网络度量(如链接数、图密度或节点激活)来可视化和交互式地探索动态网络的界面。当网络包含许多时间步长,变得更大、更密集,或者包含高频率的变化时,传统的关注网络拓扑的可视化,如动画或小倍数,不能提供足够的概述,因此不能引导分析人员找到有趣的时间点和周期。MeasureFlow提供了一种补充方法,它依赖于公共网络度量的可视化时间序列,以提供一个详细而全面的概述,说明变化何时发生,以及它们涉及哪些网络度量。由于动态网络以不同的速度和特征发生变化,网络测度为其演变的速度和性质提供了重要线索,并可以指导分析人员进行探索;基于一组交互和信号处理方法,MeasureFlow允许分析人员选择和导航网络中感兴趣的时间段。我们通过实际数据的案例研究来演示MeasureFlow。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Interactive Time-Series of Measures for Exploring Dynamic Networks
We present MeasureFlow, an interface to visually and interactively explore dynamic networks through time-series of network measures such as link number, graph density, or node activation. When networks contain many time steps, become large and more dense, or contain high frequencies of change, traditional visualizations that focus on network topology, such as animations or small multiples, fail to provide adequate overviews and thus fail to guide the analyst towards interesting time points and periods. MeasureFlow presents a complementary approach that relies on visualizing time-series of common network measures to provide a detailed yet comprehensive overview of when changes are happening and which network measures they involve. As dynamic networks undergo changes of varying rates and characteristics, network measures provide important hints on the pace and nature of their evolution and can guide an analysts in their exploration; based on a set of interactive and signal-processing methods, MeasureFlow allows an analyst to select and navigate periods of interest in the network. We demonstrate MeasureFlow through case studies with real-world data.
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