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Augmenting Neural Metaphor Detection with Concreteness

机译:用具体性增强神经隐喻检测

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The idea that a shift in concreteness within a sentence indicates the presence of a metaphor has been around for a while. However, recent methods of detecting metaphor that have relied on deep neural models have ignored concreteness and related psycholinguistic information. We hypothesis that this information is not available to these models and that their addition will boost the performance of these models in detecting metaphor. We test this hypothesis on the Metaphor Detection Shared Task 2020 and find that the addition of concreteness information does in fact boost deep neural models. We also run tests on data from a previous shared task and show similar results.
机译:在句子中,在句子中的具体程度的想法表明了隐喻的存在已经存在一段时间。然而,最近检测依赖深神经模型的隐喻的方法已经忽略了具体和相关的心理语言信息。我们假设这些信息不适用于这些模型,并且它们的添加将提高这些模型在检测隐喻中的性能。我们在隐喻检测共享任务2020上测试这个假设,并发现添加具体信息的添加促进了深度神经模型。我们还从先前的共享任务运行对数据的测试,并显示类似的结果。

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