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On Early-Stage Debunking Rumors on Twitter: Leveraging the Wisdom of Weak Learners

机译:在Twitter上的早期揭穿谣言:利用弱学习者的智慧

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摘要

Recently a lot of progress has been made in rumor modeling and rumor detection for micro-blogging streams. However, existing automated methods do not perform very well for early rumor detection, which is crucial in many settings, e.g., in crisis situations. One reason for this is that aggregated rumor features such as propagation features, which work well on the long run, are - due to their accumulating characteristic - not very helpful in the early phase of a rumor. In this work, we present an approach for early rumor detection, which leverages Convolutional Neural Networks for learning the hidden representations of individual rumor-related tweets to gain insights on the credibility of each tweets. We then aggregate the predictions from the very beginning of a rumor to obtain the overall event credits (so-called wisdom), and finally combine it with a time series based rumor classification model. Our extensive experiments show a clearly improved classification performance within the critical very first hours of a rumor. For a better understanding, we also conduct an extensive feature evaluation that emphasized on the early stage and shows that the low-level credibility has best predictability at all phases of the rumor lifetime.
机译:最近在谣言建模和谣言检测中取得了很多进展,用于微博流。然而,现有的自动化方法对于早期谣言检测不表现非常好,这在许多环境中至关重要,例如,在危机情况下。其中一个原因是,由于它们的累积特性,聚集了谣言特性,例如传播功能,这些功能良好地运行良好 - 由于它们的累积特性 - 在谣言的早期阶段不是非常有帮助。在这项工作中,我们提出了一种早期谣言检测方法,它利用卷积神经网络来学习个人谣言相关推文的隐藏表示,以获得对每次推文的可信度的洞察力。然后,我们从谣言的开始汇总预测以获得总体事件信用(所谓的智慧),并且最终将其与基于时间序列的谣言分类模型相结合。我们广泛的实验表明,在谣言的关键第一小时内明显改善了分类性能。为了更好地理解,我们还进行了广泛的特征评估,在早期阶段强调,表明低级可信度在谣言寿命的所有阶段都具有最佳可预测性。

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