首页> 外文会议>Annual Meeting of the Association for Computational Linguistics;International Joint Conference on natural Language Processing >Uncertainty and Surprisal Jointly Deliver the Punchline: Exploiting Incongruity-Based Features for Humor Recognition
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Uncertainty and Surprisal Jointly Deliver the Punchline: Exploiting Incongruity-Based Features for Humor Recognition

机译:不确定性和惊喜共同提供妙语:利用基于不协调的幽默识别功能

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Humor recognition has been widely studied as a text classification problem using data-driven approaches. However, most existing work does not examine the actual joke mechanism to understand humor. We break down any joke into two distinct components: the set-up and the punchline, and further explore the special relationship between them. Inspired by the incongruity theory of humor, we model the setup as the part developing semantic uncertainty, and the punchline disrupting audience expectations. With increasingly powerful language models, we were able to feed the set-up along with the punchline into the GPT-2 language model, and calculate the uncertainty and surprisal values of the jokes. By conducting experiments on the SemEval 2021 Task 7 dataset, we found that these two features have better capabilities of telling jokes from non-jokes, compared with existing baselines.
机译:幽默识别已被广泛研究用数据驱动方法作为文本分类问题。 然而,大多数现有的工作都没有检查实际的笑话机制以了解幽默。 我们将任何笑话分解为两个不同的组件:设置和妙语,并进一步探索它们之间的特殊关系。 灵感来自于幽默的不协调理论,我们将设置建模为开发语义不确定性的零件,以及打扰观众期望的妙语。 凭借越来越强大的语言模型,我们能够将建议与较小的语言模型一起提供,并计算笑话的不确定性和惊喜值。 通过在Semeval 2021任务7 DataSet上进行实验,我们发现这两个功能与现有基准相比,这两个功能具有从非笑话中讲笑话的更好能力。

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