通过社交媒体描述和计算交通拥堵与健康问题之间相关性的方法

Shaista Bibi, M. A. Shah, B. Abbasi, Shahid Hussain
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引用次数: 1

摘要

交通拥堵是世界上最严重的问题之一。文献显示了实时交通事件检测和人群感知的各种分析。然而,很少有研究人员量化交通拥堵对公众健康的影响。据我们所知,目前还没有研究通过社交媒体确定交通拥堵与公共健康问题之间的相关性。在本文中,我们提出了一种通过社交媒体分析来计算交通拥堵与公共健康问题之间相关性的方法。为了完成这项任务,我们使用了主题建模和情感分析。我们从推特上提取了9700万条推文。随后,应用不同的过滤器来获得世界上交通最拥堵的地区以及相应地区的顶级健康问题。此外,我们还进行了情感分析,以了解公众对为改善这些地区的健康问题而采取的举措的看法。我们找到了全球36个交通最拥堵的城市,如墨西哥、曼谷、雅加达和重庆等。除此之外,心脏病、呼吸系统和心理问题被认为是交通拥挤城市的常见问题。近71%的公众评论表达了负面情绪。这反映了他们对上级当局采取措施减少交通流量的不满程度。
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A methodology to characterize and compute correlation between traffic congestion and health issues via social media
Traffic congestion is one of the most significant problems around the world. Literature shows various analyses of real time traffic incidents detection and crowd sensing. However, few researchers quantified the traffic congestion impacts on public health. To the best of our knowledge, there is no study, which determines the correlation between traffic congestion and public health issues via social media. In this paper, we propose a methodology to compute the correlation between traffic congestion and public health issues through social media analysis. To purse this task, we have used topic modeling and sentimental analysis. We mined a collection of 97 million tweets extracted from Twitter. Subsequently, different filters are applied to get the most traffic-congested locations around the world and the top health issues in the corresponding areas. Additionally, we have performed sentimental analysis to get the public perception about the initiatives taken to improve the health issues in those regions. We have found 36 most traffic congested cities around the world, such as Mexico, Bangkok, Jakarta and Chongqing etc. Apart from that, heart diseases, respiratory and psychological problems are identified as the common problems in traffic congested cities. Almost 71% public comments shows the negative sentiments. Which reflects their level of frustration about the steps taken to reduce the traffic by the higher authorities.
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