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Compositional Semantics Network With Multi-Task Learning for Pun Location

机译:具有双关语位置的组成语义网络

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摘要

A pun is always humorous and has strong interactive value in people & x2019;s daily communication. It creates a humorous effect in a certain context, in which a word implies two or more meanings by using polysemy (homographic pun) or phonological similarity to another word (heterographic pun). Pun location is a task to identify the pun word in a given text, which is of great significance to understand humorous texts. Existing methods generally adopt single long sequence structure but cannot well capture the rich semantics of pun words in sentences. We present an approach that considers long-distance and short-distance semantic relations between words simultaneously. For the long-distance semantic relation, we introduce multi-level embeddings to represent the most relevant aspects of the data. For the short-distance semantic relation, we exploit the complex-valued model with a self-adaptive selection mechanism based on multi-scale of input information. Meanwhile, we propose a new classification task to distinguish the homographic pun and heterographic pun. We introduce it as an auxiliary to jointly train the original pun location task, which first learns the location of different types of puns together. Experiment results show that the latest state-of-the-art results can be achieved through our model.
机译:双关语总是幽默,在人们的日常沟通中具有强大的互动价值。它在某种情况下创造了一种幽默的效果,其中一个词暗示了通过使用多义(同类色谱)或语音相似性与另一个单词(异发明双语)的语音相似。双关语是一个任务,可以在给定文本中识别双关语,这是了解幽默文本的重要意义。现有方法通常采用单长序列结构,但不能很好地捕获句子中的双关语的富语。我们提出了一种在同时考虑单词之间的长距离和短距离语义关系的方法。对于长途语义关系,我们引入了多级嵌入物来代表数据的最相关方面。对于短距离语义关系,我们利用基于多标准输入信息的自适应选择机制来利用复数型模型。同时,我们提出了一种新的分类任务,以区分同类双关语和异教双关语。我们将其作为辅助介绍,共同列车,首先将不同类型双关语的位置一起学习。实验结果表明,最新的最先进的结果可以通过我们的模型实现。

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