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Gaussian Processes for Rumour Stance Classification in Social Media

机译:社会媒体中谣言姿态分类的高斯过程

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Social media tend to be rife with rumours while new reports are released piecemeal during breaking news. Interestingly, one can mine multiple reactions expressed by social media users in those situations, exploring their stance towards rumours, ultimately enabling the flagging of highly disputed rumours as being potentially false. In this work, we set out to develop an automated, supervised classifier that uses multi-task learning to classify the stance expressed in each individual tweet in a conversation around a rumour as either supporting, denying or questioning the rumour. Using a Gaussian Process classifier, and exploring its effectiveness on two datasets with very different characteristics and varying distributions of stances, we show that our approach consistently outperforms competitive baseline classifiers. Our classifier is especially effective in estimating the distribution of different types of stance associated with a given rumour, which we set forth as a desired characteristic for a rumour-tracking system that will show both ordinary users of Twitter and professional news practitioners how others orient to the disputed veracity of a rumour, with the final aim of establishing its actual truth value.
机译:社交媒体上往往充斥着谣言,而在突发新闻期间会零星发布新的报道。有趣的是,人们可以挖掘社交媒体用户在这种情况下表达的多种反应,探索他们对谣言的立场,最终使举报高度争议的谣言具有潜在的虚假性。在这项工作中,我们着手开发一种自动化的,有监督的分类器,该分类器使用多任务学习将围绕谣言的对话中每个推文中表达的立场分类为支持,否认或质疑谣言。使用高斯过程分类器,并在具有非常不同的特征和不同姿态分布的两个数据集上探索其有效性,我们证明了我们的方法始终优于竞争基准分类器。我们的分类器在估计与给定谣言相关的不同类型的姿势的分布方面特别有效,我们将其设置为谣言跟踪系统的理想特征,该系统将向Twitter的普通用户和专业新闻从业人员展示其他人如何定位谣言的有争议的真实性,其最终目的是确定其真实性。

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