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'Our Grief is Unspeakable': Automatically Measuring the Community Impact of a Tragedy

机译:“我们的悲伤是无法形容的:自动测量悲剧的社区影响

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Social media offer a real-time, unfiltered view of how disasters affect communities. Crisis response, disaster mental health, and-more broadly-public health can benefit from automated analysis of the public's mental state as exhibited on social media. Our focus is on Twitter data from a community that lost members in a mass shooting and another community-geographically removed from the shooting-that was indirectly exposed. We show that a common approach for understanding emotional response in text: Linguistic Inquiry and Word Count (LIWC) can be substantially improved using machine learning. Starting with tweets flagged by LIWC as containing content related to the issue of death, we devise a categorization scheme for death-related tweets to induce automatic text classification of such content. This improved methodology reveals striking differences in the magnitude and duration of increases in death-related talk between these communities. It also detects subtle shifts in the nature of death-related talk. Our results offer lessons for gauging public response and for developing interventions in the wake of a tragedy.
机译:社交媒体提供了一个实时的,未经过滤的灾害对社区的影响。危机反应,灾害心理健康,更广泛的公共卫生可以从社交媒体上展出的公众精神状态自动分析中受益。我们的重点是来自一个社区的推特数据,其中丢失了群众射击中的成员,另一个社区地理上删除了射击 - 这是间接暴露的。我们表明,使用机器学习可以显着改善语言查询和字数(LIWC)的常见方法。从LIWC标记的推文开始,因为包含与死亡问题相关的内容,我们设计了与死亡相关的推文的分类方案诱导了此类内容的自动文本分类。这种改进的方法揭示了这些社区之间死亡相关谈话的幅度和持续时间的显着差异。它还发现了与死亡相关谈话的性质的细微变化。我们的成果为衡量公共回应提供了课程,并在悲剧之后开发干预措施。

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