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Cats Rule and Dogs Drool!: Classifying Stance in Online Debate

机译:猫规则和狗流口水!:在在线辩论中分类姿态

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A growing body of work has highlighted the challenges of identifying the stance a speaker holds towards a particular topic, a task that involves identifying a holistic subjective disposition. We examine stance classification on a corpus of 4873 posts across 14 topics on ConvinceMe.net, ranging from the playful to the ideological. We show that ideological debates feature a greater share of rebuttal posts, and that rebuttal posts are significantly harder to classify for stance, for both humans and trained classifiers. We also demonstrate that the number of subjective expressions varies across debates, a fact correlated with the performance of systems sensitive to sentiment-bearing terms. We present results for iden-tifing rebuttals with 63% accuracy, and for identifying stance on a per topic basis that range from 54% to 69%, as compared to un-igram baselines that vary between 49% and 60%. Our results suggest that methods that take into account the dialogic context of such posts might be fruitful.
机译:越来越多的工作突显了确定发言人对特定主题的立场所面临的挑战,这项任务涉及确定整体主观性格。我们在ConvinceMe.net上涵盖14个主题的4873个帖子的语料库中检查了姿态分类,从嬉戏到意识形态。我们表明,意识形态辩论在反驳职位中所占的比例更高,而对反驳职位而言,无论是对于人类还是受过训练的分类者,其立场立场都很难进行分类。我们还证明,在不同的辩论中,主观表达的数量是不同的,这一事实与对带有情感条件的术语敏感的系统的性能有关。我们提出的结果具有63%的准确度,而针对每个主题确定立场的结果范围则在54%至69%之间,而非igram基准则介于49%和60%之间。我们的结果表明,考虑到此类帖子的对话环境的方法可能会富有成果。

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