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Multi-scale population and mobility estimation with geo-tagged Tweets

机译:带有地理标签的推文的多尺度人口和流动性估算

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Recent outbreaks of Ebola and Dengue viruses have again elevated the significance of the capability to quickly predict disease spread in an emergent situation. However, existing approaches usually rely heavily on the time-consuming census processes, or the privacy-sensitive call logs, leading to their unresponsive nature when facing the abruptly changing dynamics in the event of an outbreak. In this paper we study the feasibility of using large-scale Twitter data as a proxy of human mobility to model and predict disease spread. We report that for Australia, Twitter users' distribution correlates well the census-based population distribution, and that the Twitter users' travel patterns appear to loosely follow the gravity law at multiple scales of geographic distances, i.e. national level, state level and metropolitan level. The radiation model is also evaluated on this dataset though it has shown inferior fitness as a result of Australia's sparse population and large landmass. The outcomes of the study form the cornerstones for future work towards a model-based, responsive prediction method from Twitter data for disease spread.
机译:最近爆​​发的埃博拉病毒和登革热病毒再次提高了在紧急情况下快速预测疾病传播能力的重要性。但是,现有的方法通常严重依赖耗时的人口普查过程或对隐私敏感的呼叫记录,从而导致它们在爆发时面对突然变化的动态时无法响应。在本文中,我们研究了使用大规模Twitter数据作为人类流动性的代理来建模和预测疾病传播的可行性。我们报告说,在澳大利亚,Twitter用户的分布与以人口普查为基础的人口分布密切相关,并且Twitter用户的出行方式似乎在多个地理距离尺度(即国家,州和州)上大致遵循引力定律。尽管由于澳大利亚人口稀少和陆地面积大,辐射模型的适应性较差,但仍对该数据集进行了辐射模型评估。这项研究的结果构成了未来工作的基础,这些工作是从Twitter数据中基于疾病传播的基于模型的响应式预测方法的基础。

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