Detection of anomalous spatio-temporal patterns of app traffic in response to catastrophic events

Sofia Medina, Shazia'Ayn Babul, Rohit Sahasrabuddhe, Timothy LaRock, Renaud Lambiotte, Nicola Pedreschi
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Abstract

In this work, we uncover patterns of usage mobile phone applications and information spread in response to perturbations caused by unprecedented events. We focus on categorizing patterns of response in both space and time and tracking their relaxation over time. To this end, we use the NetMob2023 Data Challenge dataset, which provides mobile phone applications traffic volume data for several cities in France at a spatial resolution of 100$m^2$ and a time resolution of 15 minutes for a time period ranging from March to May 2019. We analyze the spread of information before, during, and after the catastrophic Notre-Dame fire on April 15th and a bombing that took place in the city centre of Lyon on May 24th using volume of data uploaded and downloaded to different mobile applications as a proxy of information transfer dynamics. We identify different clusters of information transfer dynamics in response to the Notre-Dame fire within the city of Paris as well as in other major French cities. We find a clear pattern of significantly above-baseline usage of the application Twitter (currently known as X) in Paris that radially spreads from the area surrounding the Notre-Dame cathedral to the rest of the city. We detect a similar pattern in the city of Lyon in response to the bombing. Further, we present a null model of radial information spread and develop methods of tracking radial patterns over time. Overall, we illustrate novel analytical methods we devise, showing how they enable a new perspective on mobile phone user response to unplanned catastrophic events, giving insight into how information spreads during a catastrophe in both time and space.
针对灾难性事件检测应用程序流量的异常时空模式
在这项工作中,我们揭示了手机应用和信息传播在应对前所未有的事件造成的扰动时的使用模式。我们的重点是对空间和时间上的响应模式进行分类,并跟踪它们随时间的松弛情况。为此,我们使用了 NetMob2023 DataChallenge 数据集,该数据集提供了法国多个城市的手机应用流量数据,空间分辨率为 100$m^2$,时间分辨率为 15 分钟,时间段为 2019 年 3 月至 5 月。我们以不同手机应用上传和下载的数据量作为信息传输动态的代表,分析了 4 月 15 日诺特尔达姆大火和 5 月 24 日里昂市中心爆炸这两起灾难性事件发生之前、期间和之后的信息传播情况。我们发现了巴黎市以及法国其他主要城市在诺特雷-达姆大火中的不同信息传输动态群组。我们发现,在巴黎,Twitter(现名 X)应用程序的使用率明显高于基准线,并从圣母大教堂周边地区向城市其他地区辐射。此外,我们还提出了径向信息传播的无效模型,并开发了随时间追踪径向模式的方法。总之,我们阐述了自己设计的新颖分析方法,展示了这些方法如何以全新的视角看待手机用户对计划外灾难事件的反应,让人们深入了解灾难期间信息是如何在时间和空间上传播的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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