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Characterizing geo-located tweets in brazilian megacities

机译:表征巴西特大城市中的地理位置推文

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This work presents a framework for collecting, processing and mining geo-located tweets in order to extract meaningful and actionable knowledge in the context of smart cities. We collected and characterized more than 9M tweets from the two biggest cities in Brazil, Rio de Janeiro and Sao Paulo. We performed topic modeling using the Latent Dirichlet Allocation model to produce an unsupervised distribution of semantic topics over the stream of geo-located tweets as well as a distribution of words over those topics. We manually labeled and aggregated similar topics obtaining a total of 29 different topics across both cities. Results showed similarities in the majority of topics for both cities, reflecting similar interests and concerns among the population of Rio de Janeiro and Sao Paulo. Nevertheless, some specific topics are more predominant in one of the cities.
机译:这项工作提出了一个收集,处理和挖掘地理位置推文的框架,以便在智能城市的背景下提取有意义且可操作的知识。我们从巴西两个最大的城市,里约热内卢和圣保罗收集了超过900万条推文,并对其进行了特征分析。我们使用潜在Dirichlet分配模型执行了主题建模,以在语义上的推文流上生成语义主题的无监督分布,并在这些主题上生成单词的分布。我们手动标记和汇总了相似的主题,从而在两个城市中总共获得29个不同的主题。结果表明,两个城市的大多数主题都相似,反映了里约热内卢和圣保罗居民的相似兴趣和关切。但是,其中一个城市中一些特定主题更为主要。

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