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Paraphrase to Explicate: Revealing Implicit Noun-Compound Relations

机译:释义:揭示内隐名词-复合关系

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Revealing the implicit semantic relation between the constituents of a noun-compound is important for many NLP applications. It has been addressed in the literature either as a classification task to a set of pre-defined relations or by producing free text paraphrases explicating the relations. Most existing paraphrasing methods lack the ability to generalize, and have a hard time interpreting infrequent or new noun-compounds. We propose a neural model that generalizes better by representing paraphrases in a continuous space, generalizing for both unseen noun-compounds and rare paraphrases. Our model helps improving performance on both the noun-compound paraphrasing and classification tasks.
机译:对于许多NLP应用而言,揭示名词-化合物的成分之间的隐式语义关系很重要。在文献中,它已经作为对一组预定义关系的分类任务,或者通过生成说明该关系的自由文本复述来解决。大多数现有的释义方法缺乏概括的能力,并且很难解释不常见的或新的名词化合物。我们提出了一种神经模型,该模型可以通过表示连续空间中的释义来泛化更好的泛化,同时泛化不可见的名词化合物和稀有释义。我们的模型有助于提高名词复合释义和分类任务的性能。

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