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Joint Rumour Stance and Veracity

机译:联合谣言立场和真实性

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摘要

The net is rife with rumours that spread through microblogs and social media. Not all the claims in these can be verified. However, recent work has shown that the stances alone that commenters take toward claims can be sufficiently good indicators of claim veracity, using e.g. an HMM that takes conversational stance sequences as the only input. Existing results are monolingual (English) and mono-platform (Twitter). This paper introduces a stance-annotated Reddit dataset for the Danish language, and describes various implementations of stance classification models. Of these, a Linear SVM provides predicts stance best, with 0.76 accuracy / 0.42 macro F_1. Stance labels are then used to predict veracity across platforms and also across languages, training on conversations held in one language and using the model on conversations held in another. In our experiments, monolinugal scores reach stance-based veracity accuracy of 0.83 (F_1 0.68); applying the model across languages predicts veracity of claims with an accuracy of 0.82 (F_1 0.67). This demonstrates the surprising and powerful viability of transferring stance-based veracity prediction across languages.
机译:网络上充斥着通过微博和社交媒体传播的谣言。并非所有这些声明都可以得到验证。但是,最近的工作表明,评论者对权利要求所采取的立场本身就可以充分证明权利要求的准确性,例如使用一个将对话姿势序列作为唯一输入的HMM。现有结果是单语(英语)和单平台(Twitter)。本文介绍了丹麦语的带立场注释的Reddit数据集,并描述了立场分类模型的各种实现。其中,线性SVM以0.76精度/ 0.42宏F_1提供最佳的姿态预测。然后,姿态标签将用于预测跨平台以及跨语言的准确性,对使用一种语言进行的对话进行训练,并对使用另一种语言进行的对话进行模型训练。在我们的实验中,单项得分达到了基于姿态的准确度0.83(F_1 0.68);跨语言应用模型可预测索赔的准确性,准确性为0.82(F_1 0.67)。这证明了跨语言转移基于姿势的准确性预测的惊人而强大的可行性。

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