Predicting Stances in Twitter Conversations for Detecting Veracity of Rumors: A Neural Approach

Lahari Poddar, W. Hsu, M. Lee, Shruti Subramaniyam
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引用次数: 38

Abstract

Detecting rumors is a crucial task requiring significant time and manual effort in forms of investigative journalism. In social media such as Twitter, unverified information can get disseminated rapidly making early detection of potentially false rumors critical. We observe that the early reactions of people towards an emerging claim can be predictive of its veracity. We propose a novel neural network architecture using the stances of people engaging in a conversation on Twitter about a rumor for detecting its veracity. Our proposed solution comprises two key steps. We first detect the stance of each individual tweet, by considering the textual content of the tweet, its timestamp, as well as the sequential conversation structure leading up to the target tweet. Then we use the predicted stances of all tweets in a conversation tree to determine the veracity of the original rumor. We evaluate our model on the SemEval2017 rumor detection dataset and demonstrate that our solution outperforms the state-of-the-art approaches for both stance prediction and rumor veracity prediction tasks.
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预测Twitter对话中的立场以检测谣言的真实性:一种神经方法
在调查性新闻中,发现谣言是一项至关重要的任务,需要大量的时间和人力。在Twitter等社交媒体上,未经证实的信息可以迅速传播,因此及早发现潜在的虚假谣言至关重要。我们观察到,人们对新出现的说法的早期反应可以预测其真实性。我们提出了一种新的神经网络架构,利用人们在Twitter上就谣言进行对话的立场来检测其真实性。我们提出的解决方案包括两个关键步骤。我们首先通过考虑推文的文本内容、时间戳以及指向目标推文的顺序对话结构来检测每条推文的立场。然后,我们使用会话树中所有tweet的预测立场来确定原始谣言的真实性。我们在SemEval2017谣言检测数据集上评估了我们的模型,并证明我们的解决方案在立场预测和谣言准确性预测任务方面都优于最先进的方法。
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