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Detecting authority bids in online discussions

机译:在在线讨论中检测授权投标

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This paper looks at the problem of detecting a particular type of social behavior in discussions: attempts to establish credibility as an authority on a particular topic. Using maximum entropy modeling, we explore questions related to feature extraction and turn vs. discussion-level modeling in experiments with online discussion text given only a small amount of labeled training data. We also introduce a method for learning interaction words from unlabeled data. Preliminary experiments show that a word-based approach (as used in topic classification) can be used successfully for turn-level modeling, but is less effective at the discussion level. We also find that sentence complexity features are almost as useful as lexical features, and that interaction words are more robust than the full vocabulary when combined with other features.
机译:本文介绍了检测讨论中特定类型的社会行为的问题:试图将可信度作为特定主题的权威。使用最大熵建模,我们探讨了与特征提取和逆向与在线讨论文本的讨论级别建模相关的问题,只有少量标记的培训数据。我们还介绍了一种学习从未标记数据的互动词的方法。初步实验表明,基于词的方法(如主题分类所用)可以成功地用于转动级模型,但在讨论级别效果较低。我们还发现句子复杂性功能几乎与词汇功能一样有用,并且在与其他功能结合时,互动词比完整的词汇更加强大。

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