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Tracking the Evolution of Infrastructure Systems and Mass Responses Using Publically Available Data

机译:使用公开可用数据跟踪基础设施系统的演变和大规模响应

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摘要

Networks can evolve even on a short-term basis. This phenomenon is well understood by network scientists, but receive little attention in empirical literature involving real-world networks. On one hand, this is due to the deceitfully fixed topology of some networks such as many physical infrastructures, whose evolution is often deemed unlikely to occur in short term; on the other hand, the lack of data prohibits scientists from studying subjects such as social networks that seem likely to evolve on a short-term basis. We show that both networks—the infrastructure network and social network—are able to demonstrate evolutionary dynamics at the system level even in the short-term, characterized by shifting between different phases as predicted in network science. We develop a methodology of tracking the evolutionary dynamics of the two networks by incorporating flows and the microstructure of networks such as motifs. This approach is applied to the human interaction network and two transportation networks (subway and taxi) in the context of Hurricane Sandy, using publically available Twitter data and transportation data. Our result shows that significant changes in the system-level structure of networks can be detected on a continuous basis. This result provides a promising channel for real-time tracking in the future.
机译:网络甚至可以在短期内发展。网络科学家对此现象已广为人知,但在涉及现实网络的经验文献中却很少受到关注。一方面,这是由于某些网络(例如许多物理基础设施)的欺骗性固定拓扑结构所致,通常认为短期内不太可能发生其演进;另一方面,由于缺乏数据,科学家无法研究诸如社交网络之类的主题,而这些主题似乎可能在短期内发展。我们证明,无论是基础网络还是社交网络,这两个网络都能够在系统级别上展现演化动态,即使在短期内也是如此,其特征在于网络科学所预测的不同阶段之间的转换。我们开发了一种方法,通过结合流量和网络(例如图案)的微观结构来跟踪两个网络的演化动力学。使用公开可用的Twitter数据和运输数据,在飓风桑迪的背景下,此方法适用于人类交互网络和两个运输网络(地铁和出租车)。我们的结果表明,可以连续不断地检测网络的系统级结构的重大变化。这一结果为将来的实时跟踪提供了一个有希望的渠道。

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