重排序大量序列视图:启用动态网络的时间和结构分析

S. V. D. Elzen, Danny Holten, Jorik Blaas, J. V. Wijk
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引用次数: 29

摘要

网络存在于许多领域,如金融、社会学和交通运输。这些网络通常是动态的:它们既有结构方面的,也有时间方面的。我们提出了一种扩展大规模序列视图(MSV)的技术,用于分析动态网络的时间和结构方面。利用数据中的特征以及基于格式塔原则的可视化中的特征,我们为MSV开发了节点重新排序策略,以使这些特征脱颖而出。这使用户能够发现网络中的时间属性,如趋势、反趋势、周期性、时间变化和异常,以及结构属性,如社区和明星。我们展示了重新排序方法在合成和真实事务数据集上的有效性。
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Reordering Massive Sequence Views: Enabling temporal and structural analysis of dynamic networks
Networks are present in many fields such as finance, sociology, and transportation. Often these networks are dynamic: they have a structural as well as a temporal aspect. We present a technique that extends the Massive Sequence View (MSV) for the analysis of the temporal and structural aspects of dynamic networks. Using features in the data as well as in the visualization based on the Gestalt principles closure, proximity, and similarity, we developed node reordering strategies for the MSV to make these features stand out. This enables users to find temporal properties such as trends, counter trends, periodicity, temporal shifts, and anomalies in the network as well as structural properties such as communities and stars. We show the effectiveness of the reordering methods on both synthetic and real-world transaction data sets.
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