CIKM 2013 Paper Modeling interaction features for debate side clustering

本文研究了如何通过统计建模来分析在线论坛中用户的互动关系。重点在于从文本内容中自动识别帖子或用户的立场,并利用隐含的支持和争议信息来改进立场识别任务。通过两阶段的方法,首先识别互动特征,然后进行聚类分析。

中文简介:本文对如何对网上论坛讨论中用户交互关系进行统计建模分析进行了研究。

论文出处:CIKM‘13.

英文摘要: Online discussion forums are popular social media platforms for users to express their opinions and discuss controversial issues with each other. To automatically identify the sides/stances of posts or users from textual content in forums is an important task to help mine online opinions. To tackle the task, it is important to exploit user posts that implicitly contain support and dispute (interaction) information. The challenge we face is how to mine such interaction information from the content of posts and how to use them to help identify stances. This paper proposes a two-stage solution based on latent variable models: an interaction feature identification stage to mine interaction features from structured debate posts with known sides and reply intentions; and a clustering stage to incorporate interaction features and model the interplay between interactions and sides for debate side clustering. Empirical evaluation shows that the learned interaction features provide good insights into user interactions and that with these features our debate side model shows significant improvement over other baseline methods.

下载链接:http://dl.acm.org/citation.cfm?id=2505634   https://yangliuy.github.io/files/papers/13-CIKM-InteractionFeatures.pdf

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