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Discourse-aware rumour stance classification in social media using sequential classifiers

机译:使用顺序分类器在社交媒体中进行话语感知的谣言立场分类

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Rumour stance classification, defined as classifying the stance of specific social media posts into one of supporting, denying, querying or commenting on an earlier post, is becoming of increasing interest to researchers. While most previous work has focused on using individual tweets as classifier inputs, here we report on the performance of sequential classifiers that exploit the discourse features inherent in social media interactions or ‘conversational threads’. Testing the effectiveness of four sequential classifiers – Hawkes Processes, Linear-Chain Conditional Random Fields (Linear CRF), Tree-Structured Conditional Random Fields (Tree CRF) and Long Short Term Memory networks (LSTM) – on eight datasets associated with breaking news stories, and looking at different types of local and contextual features, our work sheds new light on the development of accurate stance classifiers. We show that sequential classifiers that exploit the use of discourse properties in social media conversations while using only local features, outperform non-sequential classifiers. Furthermore, we show that LSTM using a reduced set of features can outperform the other sequential classifiers; this performance is consistent across datasets and across types of stances. To conclude, our work also analyses the different features under study, identifying those that best help characterise and distinguish between stances, such as supporting tweets being more likely to be accompanied by evidence than denying tweets. We also set forth a number of directions for future research.
机译:谣言立场分类是指将特定社交媒体文章的立场分类为对较早文章的支持,拒绝,查询或评论之一,这已引起研究人员的兴趣。尽管以前的大多数工作都集中在使用单个推文作为分类器输入,但在这里我们报告了顺序分类器的性能,这些分类器利用了社交媒体互动或“对话线程”中固有的话语功能。在与突发新闻故事相关的八个数据集上测试四个顺序分类器(霍克斯过程,线性链条件随机场(线性CRF),树结构条件随机场(树CRF)和长期短期记忆网络(LSTM))的有效性,并着眼于不同类型的局部和上下文特征,我们的工作为准确的姿势分类器的开发提供了新的思路。我们显示,在仅使用本地功能的情况下利用社交媒体对话中话语属性使用的顺序分类器优于非顺序分类器。此外,我们表明使用减少的功能集的LSTM可以胜过其他顺序分类器。这种性能在数据集和立场类型之间是一致的。总而言之,我们的工作还分析了正在研究的不同特征,确定了最能帮助表征和区分立场的特征,例如支持推文比拒绝推文更有可能附有证据。我们还提出了一些未来研究的方向。

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