基于持久同调的时变图结构变化的视觉检测

Mustafa Hajij, Bei Wang, C. Scheidegger, P. Rosen
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引用次数: 50

摘要

拓扑数据分析是探索性数据分析和数据挖掘中的一个新兴领域。它的主要工具——持久同调,已经成为研究复杂、高维数据结构的一种流行技术。本文提出了一种利用持续同调来量化时变图结构变化的新方法。具体来说,我们将时变图的每个实例转换为度量空间,使用持久同调提取拓扑特征,并随时间比较这些特征。我们提供了一种可视化的方法,可以帮助进行时变图形的探索,并帮助识别数据中的行为模式。为了验证我们的方法,我们对现实世界的数据集进行了几个案例研究,并展示了我们的方法如何在时变图中发现循环模式、偏离这些模式和一次性事件。我们还研究了基于持久性的相似性度量是否满足一组完善的、理想的图度量属性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Visual Detection of Structural Changes in Time-Varying Graphs Using Persistent Homology
Topological data analysis is an emerging area in exploratory data analysis and data mining. Its main tool, persistent homology, has become a popular technique to study the structure of complex, high-dimensional data. In this paper, we propose a novel method using persistent homology to quantify structural changes in time-varying graphs. Specifically, we transform each instance of the time-varying graph into a metric space, extract topological features using persistent homology, and compare those features over time. We provide a visualization that assists in time-varying graph exploration and helps to identify patterns of behavior within the data. To validate our approach, we conduct several case studies on real-world datasets and show how our method can find cyclic patterns, deviations from those patterns, and one-time events in time-varying graphs. We also examine whether a persistence-based similarity measure satisfies a set of well-established, desirable properties for graph metrics.
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