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BiLSTM-Based Models for Metaphor Detection

机译:基于Bilstm的隐喻检测模型

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Metaphor is a pervasive phenomenon in our daily use of natural language. Metaphor detection has been playing an important role in a variety of NLP tasks. Most existing approaches to this task rely heavily on the use of human-crafted features built from linguistic knowledge resource, which greatly limits their applicability. This paper presents four BiLSTM-based models for metaphor detection. The first three models use a sub-sequence as the input to BiLSTM network, each with a special kind of sub-sequence extracted from the input sentence. The last model is an ensemble model which aggregate the outputs from the first three models to get the final output. Experimental results have shown the effectiveness of our models.
机译:隐喻是我们日常使用自然语言的普遍存存现象。隐喻检测一直在各种NLP任务中发挥着重要作用。大多数现有的这项任务的方法严重依赖于使用语言知识资源构建的人工制作的功能,这极大地限制了他们的适用性。本文介绍了四种基于Bilstm的隐喻检测模型。前三个模型使用子序列作为Bilstm网络的输入,每个次数都有一种从输入句中提取的特殊子序列。最后一个模型是一个集合模型,它从前三个模型中聚合输出以获得最终输出。实验结果表明了我们模型的有效性。

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