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Identifying Humor in Reviews using Background Text Sources

机译:使用背景文本来源识别幽默的评论中

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We study the problem of automatically identifying humorous text from a new kind of text data, i.e., online reviews. We propose a generative language model, based on the theory of incongruity, to model humorous text, which allows us to leverage background text sources, such as Wikipedia entry descriptions, and enables construction of multiple features for identifying humorous reviews. Evaluation of these features using supervised learning for classifying reviews into humorous and non-humorous reviews shows that the features constructed based on the proposed generative model are much more effective than the major features proposed in the existing literature, allowing us to achieve almost 86% accuracy These humorous review predictions can also supply good indicators for identifying helpful reviews.
机译:我们研究了从新的文本数据中自动识别幽默文本的问题,即,在线评论。我们提出了一种基于不协调理论的生成语言模型,以模型幽默文本,这使我们能够利用背景文本来源,例如维基百科进入描述,并实现构建多种功能来识别幽默评论。评估这些功能使用监督学习进行分类评审的幽默和非幽默评价,表明,基于所提出的生成模型构建的功能比现有文献中提出的主要特征更有效,使我们允许我们实现近86%的准确性这些幽默的评论预测还可以提供良好的指标来识别有用的评论。

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