首页> 外文会议>Annual meeting of the Association for Computational Linguistics;ACL 2012 >Genre Independent Subgroup Detection in Online Discussion Threads: A Pilot Study of Implicit Attitude using Latent Textual Semantics
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Genre Independent Subgroup Detection in Online Discussion Threads: A Pilot Study of Implicit Attitude using Latent Textual Semantics

机译:在线讨论话题中的体裁独立子组检测:使用潜在文本语义的内隐态度试点研究

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We describe an unsupervised approach to the problem of automatically detecting subgroups of people holding similar opinions in a discussion thread. An intuitive way of identifying this is to detect the attitudes of discussants towards each other or named entities or topics mentioned in the discussion. Sentiment tags play an important role in this detection, but we also note another dimension to the detection of people's attitudes in a discussion: if two persons share the same opinion, they tend to use similar language content. We consider the latter to be an implicit attitude. In this paper, we investigate the impact of implicit and explicit attitude in two genres of social media discussion data, more formal wikipedia discussions and a debate discussion forum that is much more informal. Experimental results strongly suggest that implicit attitude is an important complement for explicit attitudes (expressed via sentiment) and it can improve the sub-group detection performance independent of genre.
机译:我们描述了一种在讨论线程中自动检测持有相似观点的人的子组的问题的无监督方法。识别此问题的一种直观方法是检测讨论者彼此之间的态度或讨论中提到的命名实体或主题的态度。情感标签在这种检测中起着重要的作用,但是我们在讨论中也注意到了人们态度检测的另一个方面:如果两个人有相同的意见,他们倾向于使用相似的语言内容。我们认为后者是一种隐含态度。在本文中,我们调查了两种类型的社交媒体讨论数据,更正式的Wikipedia讨论和更为非正式的辩论讨论论坛中内隐和显露态度的影响。实验结果强烈表明,隐性态度是显性态度(通过情感表达)的重要补充,并且可以提高独立于体裁的子组检测性能。

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