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Stance Detection in Web and Social Media: A Comparative Study

机译:网站和社交媒体的立场检测:比较研究

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摘要

Online forums and social media platforms are increasingly being used to discuss topics of varying polarities where different people take different stances. Several methodologies for automatic stance detection from text have been proposed in literature. To our knowledge, there has not been any systematic investigation towards their reproducibility, and their comparative performances. In this work, we explore the reproducibility of several existing stance detection models, including both neural models and classical classifier-based models. Through experiments on two datasets - (ⅰ) the popular SemEval microblog dataset, and (ⅱ) a set of health-related online news articles - we also perform a detailed comparative analysis of various methods and explore their shortcomings.
机译:在线论坛和社交媒体平台越来越多地用于讨论不同人采取不同立场的不同极性的主题。在文献中提出了从文本中自动姿态检测的几种方法。据我们所知,他们对其重现性并没有任何系统调查,以及它们的比较表演。在这项工作中,我们探讨了几种现有立场检测模型的再现性,包括神经模型和基于古典分类器的模型。通过两个数据集的实验 - (Ⅰ)流行的Semeval MicroBlog数据集,(Ⅱ)一套与健康相关的在线新闻文章 - 我们还对各种方法进行了详细的比较分析,探索了他们的缺点。

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