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Uncovering Topic Dynamics of Social Media and News: The Case of Ferguson

机译:揭示社交媒体和新闻的主题动态:以弗格森为例

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Looking at the dynamics of news content and social media content can help us understand the increasingly complex dynamics of the relationship between the media and the public surrounding noteworthy news events. Although topic models such as latent Dirichlet allocation (LDA) are valuable tools, they are a poor fit for analyses in which some documents, like news articles, tend to incorporate multiple topics, while others, like tweets, tend to be focused on just one. In this paper, we propose Single Topic LDA (ST-LDA) which jointly models news-type documents as distributions of topics and tweets as having a single topic; the model improves topic discovery in news and tweets within a unified topic space by removing noisy topics that conventional LDA tends to assign to tweets. Using ST-LDA, we focus on the unrest in Ferguson, Missouri after the fatal shooting of Michael Brown on August 9, 2014, looking in particular at the topic dynamics of tweets in and out of St. Louis area, and at differences and relationships between topic coverage in news and tweets.
机译:查看新闻内容和社交媒体内容的动态可以帮助我们了解媒体与公众之间有关值得注意的新闻事件的关系的日益复杂的动态。尽管诸如潜在狄利克雷分配(LDA)之类的主题模型是有价值的工具,但它们不适用于分析,在该分析中,某些文章(如新闻文章)倾向于包含多个主题,而另一些文件(如推文)则倾向于仅关注一个主题。 。在本文中,我们提出了单主题LDA(ST-LDA),该模型将新闻类型的文档建模为主题的分布,而将推文建模为一个主题。该模型通过消除传统LDA倾向于分配给推文的嘈杂主题,改善了统一主题空间中新闻和推文中的主题发现。使用ST-LDA,我们将重点放在2014年8月9日迈克尔·布朗致命射击后密苏里州弗格森的动荡中,尤其着眼于进出圣路易斯地区的推文的主题动态以及差异和关系在新闻和推文的主题报道之间。

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