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Understanding Weekly COVID-19 Concerns through Dynamic Content-Specific LDA Topic Modeling

机译:通过动态内容特定的LDA主题建模了解每周Covid-19担忧

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The novelty and global scale of the COVID-19 pandemic has lead to rapid societal changes in a short span of time. As government policy and health measures shift, public perceptions and concerns also change, an evolution documented within discourse on social media. We propose a dynamic content-specific LDA topic modeling technique that can help to identify different domains of COVID-specific discourse that can be used to track societal shifts in concerns or views. Our experiments show that these model-derived topics are more coherent than standard LDA topics, and also provide new features that are more helpful in prediction of COVID-19 related outcomes including social mobility and unemployment rate.
机译:Covid-19 Pandemic的新颖性和全球规模导致了短暂的时间内的社会变化。随着政府政策和健康措施的转变,公众看法和关注也发生了变化,这是一个在社交媒体上的话语中记录的演变。我们提出了一种动态内容特定的LDA主题建模技术,可以帮助识别可用于跟踪担忧或观点的社会转变的特定事务域的不同域名。我们的实验表明,这些模型衍生的主题比标准LDA主题更加连贯,还提供了新的特征,这些功能在预测Covid-19相关成果,包括社会流动性和失业率。

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