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A scalable approach to extracting mobility patterns from social media data

机译:从社交媒体数据中提取移动性模式的可扩展方法

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Social media represents an emerging source of big data with rich mobility information embedded. While extensive studies in cartography, geographic information science, and visualization have been conducted to extract movement patterns from spatial data, new challenges and opportunities arise for deriving geographic patterns of mobility at scale from massive social media data. Conventional methods (e.g. flow mapping) cannot effectively capture geographic features in the process of addressing visualization concerns such as visual clutter. Furthermore, these methods are not scalable to the volume and velocity of social media data. As a consequence, geographic attributes of mobility (e.g. for representing movement trajectories of social media users) are not adequately captured for better understanding actual mobility patterns (e.g. in disease transmission and road traffic). To address this problem, this paper describes a scalable approach to extracting mobility patterns based on geographic routes from massive social media data. To support interactive visualization of mobility patterns by a large number of online users, this approach is implemented as a workflow of data processing, routing optimization, and multi-scale mapping. The scalability of the approach is demonstrated through both a suite of simulation experiments and a cyberGIS application of social media data.
机译:社交媒体代表了嵌入了丰富的移动性信息的大数据的新兴来源。尽管已经进行了制图学,地理信息科学和可视化方面的广泛研究以从空间数据中提取移动模式,但从海量社交媒体数据中大规模推导移动性地理模式也出现了新的挑战和机遇。在解决诸如视觉混乱之类的可视化问题的过程中,常规方法(例如流图)不能有效地捕获地理特征。此外,这些方法无法扩展到社交媒体数据的数量和速度。结果,不能充分捕获移动性的地理属性(例如,用于表示社交媒体用户的移动轨迹),以更好地理解实际的移动性模式(例如,在疾病传播和道路交通中)。为了解决这个问题,本文描述了一种可伸缩的方法,该方法可从海量社交媒体数据中基于地理路线提取移动性模式。为了支持大量在线用户对移动性模式的交互式可视化,此方法被实现为数据处理,路由优化和多比例映射的工作流。该方法的可扩展性通过一组仿真实验和社交媒体数据的cyberGIS应用程序进行了演示。

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