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Public Transportation Analysis Based on Social Media Data

机译:基于社交媒体数据的公共交通分析

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Public participation has become an important part of traffic planning and policy-making, but due to the limits of project cycle and cost, collecting and processing public opinions on a large scale seems to be a huge challenge. Relevant government departments should accept public opinions and make scientific and reasonable policies. This study focuses on how to use big data from social network platforms for content analysis. Data about public opinions are collected from the internet by means of a web crawler. A latent Dirichlet allocation (LDA) topic model is built to summarize public opinions and traffic problems. This paper also uses the Nanjing subway system as an example to introduce the whole procedure of content analysis and sum up the spatiotemporal properties of data. According to the results, some corresponding measures for the Nanjing metro system are proposed to improve the operation and management.
机译:公众参与已成为交通规划和政策制定的重要组成部分,而是由于项目周期和成本的限制,收集和处理大规模的公众意见似乎是一个巨大的挑战。相关政府部门应接受公众意见,并制定科学合理的政策。本研究侧重于如何使用来自社交网络平台的大数据进行内容分析。关于公共意见的数据通过网络爬网程序从互联网收集。建立潜在的Dirichlet分配(LDA)主题模型,以总结公众意见和交通问题。本文还使用南京地铁系统作为介绍内容分析的整体过程,并总结数据的时空性质。根据结果​​,提出了南京地铁系统的一些相应措施,以改善运营和管理。

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