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Exploiting Context for Rumour Detection in Social Media

机译:社交媒体中谣言检测的利用背景

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Tools that are able to detect unverified information posted on social media during a news event can help to avoid the spread of rumours that turn out to be false. In this paper we compare a novel approach using Conditional Random Fields that learns from the sequential dynamics of social media posts with the current state-of-the-art rumour detection system, as well as other baselines. In contrast to existing work, our classifier does not need to observe tweets querying the stance of a post to deem it a rumour but, instead, exploits context learned during the event. Our classifier has improved precision and recall over the state-of-the-art classifier that relies on querying tweets, as well as out-performing our best baseline. Moreover, the results provide evidence for the generalisability of our classifier.
机译:能够在新闻活动期间检测在社交媒体上发布的未验证信息的工具可以帮助避免谣言传播,结果是假的。在本文中,我们使用有条件的随机字段比较新的方法,这些方法从社交媒体帖子的顺序动态与当前的最先进的谣言检测系统以及其他基线一起学习。与现有的工作相比,我们的分类器不需要观察促销帖子的职位以认为它是一种谣言,而是利用在活动期间学到的上下文。我们的分类器具有改进的精确度并回忆起最先进的分类器,依赖于查询推文,以及执行最佳基线。此外,结果为我们的分类器的恒定性提供了证据。

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