Humor recognition has been extensively studied with different methods in the past years. However, existing studies on humor recognition do not understand the mechanisms that generate humor. In this paper, inspired by the incongruity theory, any joke can be divided into two components (the setup and the punchline). Both components have multiple possible semantics, and there is an incongruous relationship between them. We use density matrices to represent the semantic uncertainty of the setup and the punchline, respectively, and design QE-Uncertainty and QE-Incongruity with the help of quantum entropy as features for humor recognition. The experimental results on the SemEval2021 Task 7 dataset show that the proposed features are more effective than the baselines for recognizing humorous and non-humorous texts.
翻译:在过去的几年里,人们用不同的方法广泛研究了悍马识别,但是,现有的幽默识别研究并不理解产生幽默的机制。在本文中,在不和谐理论的启发下,任何笑话都可以分为两个部分(设置和拳击线 ) 。 两个部分都有多种可能的语义,它们之间有着不和谐的关系。 我们使用密度矩阵分别代表设置和拳击线的语义不确定性,并且设计QE-不确定性和QE-融合作为幽默识别的特征。 SemEval2021任务7的实验结果显示,拟议的特征比承认幽默和非幽默文本的基线更有效。