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Recognizing Humor Without Recognizing Meaning

机译:识别幽默而不识别含义

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摘要

We present a machine learning approach for classifying sentences as one-liner jokes or normal sentences. We use no deep analysis of the meaning to try to see if it is humorous, instead we rely on a combination of simple features to see if these are enough to detect humor. Features such as word overlap with other jokes, presence of words common in jokes, ambiguity and word overlap with common idioms turn out to be useful. When training and testing on equal amounts of jokes and sentences from the British National Corpus, a classification accuracy of 85% is achieved.
机译:我们提出了一种机器学习方法,用于将句子分类为单线笑话或普通句子。我们没有对含义进行深入的分析来尝试看看它是否幽默,而是依靠简单特征的组合来查看这些特征是否足以检测幽默。事实证明,单词与其他笑话重叠,笑话中常见单词的存在,歧义性和常见习语中单词重叠等特征非常有用。当对来自英国国家语料库的等量的笑话和句子进行培训和测试时,分类准确率达到了85%。

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