Using Digital Trace Data to Identify Regions and Cities

Christa M. Brelsford, Gautam Thakur, Rudy Arthur, Hywel T. P. Williams
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引用次数: 2

Abstract

A greater understanding of human dynamics as they play out in both physical space and through interpersonal communication is vital for the design and development of intelligent and resilient cities. Physical context provides insight into the space-time distribution of population and their activity patterns, while interpersonal communication can now be measured at the population scale through digital interactions. In this work, we propose a novel method to discover these dynamics. We use a dataset of 72 million tweets to develop a spatially embedded network of communication, and then use community detection algorithms to explore regional and urban delineation in the United States. We compare these results to US census regions and economic and infrastructural networks. We find that the broad spatial delineation of communities and sub-communities is consistent with United States regions, states, and major metropolitan areas. We describe how these methods could be extended to generate a measure of social regions that can be consistently applied anywhere there is a sufficiently rich data source. A deeper understanding of urban social structure measured by spatially embedded communication networks can enable a better understanding of the interactions between urban social and physical contexts. This, in turn, may enable urban managers and policy makers to identify strategies for supporting urban resilience.
使用数字跟踪数据识别区域和城市
更好地理解人类动态,因为他们在物理空间和人际交往中发挥作用,对于智能和弹性城市的设计和发展至关重要。物理环境可以洞察人口的时空分布及其活动模式,而人际交往现在可以通过数字互动在人口规模上进行测量。在这项工作中,我们提出了一种新的方法来发现这些动态。我们使用7200万条推文的数据集来开发一个空间嵌入式通信网络,然后使用社区检测算法来探索美国的区域和城市划分。我们将这些结果与美国人口普查地区以及经济和基础设施网络进行比较。我们发现,社区和亚社区的广泛空间划分与美国地区、州和主要大都市区一致。我们描述了如何将这些方法扩展到生成社会区域的度量,该度量可以一致地应用于任何有足够丰富数据源的地方。通过空间嵌入式通信网络测量对城市社会结构的更深入理解,可以更好地理解城市社会和物理环境之间的相互作用。反过来,这可能使城市管理者和政策制定者能够确定支持城市韧性的战略。
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