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Can Humor Prediction Datasets be used for Humor Generation? Humorous Headline Generation via Style Transfer

机译:幽默预测数据集可以用于幽默生成吗?通过风格转移的幽默标题

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Understanding and identifying humor has been increasingly popular, as seen by the number of datasets created to study humor. However, one area of humor research, humor generation, has remained a difficult task, with machine generated jokes failing to match human-created humor. As many humor prediction datasets claim to aid in generative tasks, we examine whether these claims are true. We focus our experiments on the most popular dataset, included in the 2020 SemEval's Task 7, and teach our model to take normal text and "translate" it into humorous text. We evaluate our model compared to humorous human generated headlines, finding that our model is preferred equally in A/B testing with the human edited versions, a strong success for humor generation, and is preferred over an intelligent random baseline 72% of the time. We also show that our model is assumed to be human written comparable with that of the human edited headlines and is significantly better than random, indicating that this dataset does indeed provide potential for future humor generation systems.
机译:理解和识别幽默已经越来越受欢迎,正如创建的数据集数量所见,以研究幽默。然而,一个幽默研究的一个领域,幽默的一代仍然是一项艰巨的任务,机器生成笑话未能匹配人类创造的幽默。随着许多幽默预测数据集要求援助生成任务,我们检查这些索赔是否属实。我们将我们的实验集中在2020个Semeval的任务7中包含的最受欢迎的数据集,并教导我们的模型采取正常文本并将其翻译成幽默文本。与幽默的人类生成的头条新闻相比,我们评估了我们的模型,发现我们的模型在与人类编辑版本中的A / B测试中的同样优选,对幽默生成的强烈成功,并且优于智能随机基线72%的时间。我们还表明,我们的模型被认为是人类写的,与人类编辑的头条新闻相当,明显优于随机,表明该数据集确实为未来幽默生成系统提供了潜力。

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