从论坛讨论中无监督地发现反对意见网络

Yue Lu, Hongning Wang, ChengXiang Zhai, D. Roth
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引用次数: 36

摘要

随着越来越多的人在讨论区自由表达意见,积极互动,网络论坛正成为人们观点和社会行为信息丰富的金矿。在本文中,我们研究了一个有趣的新问题,即从论坛讨论中自动发现用户的对立意见网络,这些用户是在某个话题上强烈反对对方的用户的子集。为了实现这一目标,我们建议使用来自文本内容(例如,谁说了什么)和社会互动(例如,谁与谁交谈)的信号,这些信号在在线论坛中都很丰富。我们还设计了一个优化公式,以无监督的方式组合所有信号。我们通过手动标注五个争议话题的论坛数据创建了一个数据集,我们的实验结果表明,所提出的优化方法优于几种基线和现有方法,展示了结合文本分析和社会网络分析在分析和生成对立意见网络方面的强大功能。
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Unsupervised discovery of opposing opinion networks from forum discussions
With more and more people freely express opinions as well as actively interact with each other in discussion threads, online forums are becoming a gold mine with rich information about people's opinions and social behaviors. In this paper, we study an interesting new problem of automatically discovering opposing opinion networks of users from forum discussions, which are subset of users who are strongly against each other on some topic. Toward this goal, we propose to use signals from both textual content (e.g., who says what) and social interactions (e.g., who talks to whom) which are both abundant in online forums. We also design an optimization formulation to combine all the signals in an unsupervised way. We created a data set by manually annotating forum data on five controversial topics and our experimental results show that the proposed optimization method outperforms several baselines and existing approaches, demonstrating the power of combining both text analysis and social network analysis in analyzing and generating the opposing opinion networks.
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