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Investigating the relationship between traffic incidents and public events: A case study

机译:调查交通事故与公共活动之间的关系:案例研究

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Large social events can influence traffic conditions and possibly lead to jams and incidents. This study leverages crowdsourced data to analytically evaluate the relationship between social events and traffic incidents in the city of Chicago. In particular, we collected data on social events from scraping online webpages, as well as traffic data from a twitter account that posted irregular traffic incidents based on a crowdsourced navigation application (Waze). Using these two sources the relationship between social events and the occurrence of traffic incidents was investigated. The total number social events and their categories for each region and its neighboring regions were used to build models that predicted the chance of a traffic incident occurrence. Based on the analysis, we demonstrated the variables that indicated significant influence on the chance of a traffic incident occurrence in the same day, such as the number of festivals and fairs, total number of events in the (neighboring) region. We have also developed and tested several models to predict the traffic incidents. The results indicated that using solely online listed social events may not be sufficient for traffic prediction. Although the accuracies are not considerable for an independent model, it clearly indicates that the additional information provided by social events will be a valuable addition to the existing traffic prediction models.
机译:大型社交活动可以影响交通状况,可能导致堵塞和事件。本研究利用众群数据来分析芝加哥市社会活动与交通事故之间的关系。特别是,我们从刮擦在线网页的社交事件中收集数据,以及根据众包导航申请(WAZE)发布不规则交通事件的交通数据。使用这两个来源,调查了社会事件与交通事故发生之间的关系。每个区域的总数和其类别和其邻居区域的总数用于构建预测交通事故发生的机会的模型。在分析的基础上,我们证明了对同一天的交通事故发生的可能性的可能性,例如节日和展览的数量,(邻居)区域的总数。我们还开发并测试了几种模型以预测交通事故。结果表明,使用单独在线列出的社交事件可能不足以进行交通预测。虽然精度对于独立模型不相当大,但它清楚地表明社交事件提供的附加信息将是现有交通预测模型的宝贵补充。

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