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The Impact of Word Representations on Sequential Neural MWE Identification

机译:词语表示对顺序神经MWE识别的影响

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Recent initiatives such as the PARSEME shared task have allowed the rapid development of MWE identification systems. Many of those are based on recent NLP advances, using neural sequence models that take continuous word representations as input. We study two related questions in neural verbal MWE identification: (a) the use of lemmas and/or surface forms as input features, and (b) the use of word-based or character-based em-beddings to represent them. Our experiments on Basque, French, and Polish show that character-based representations yield systematically better results than word-based ones. In some cases, character-based representations of surface forms can be used as a proxy for lemmas, depending on the morphological complexity of the language.
机译:最近的举措,如Parseme共享任务所允许快速发展MWE识别系统。其中许多是基于最近的NLP进步,使用将连续字表示作为输入的神经序列模型。我们在神经言语MWE中研究了两个相关问题:(a)使用LEMMAS和/或表面形式作为输入特征,(b)使用基于词的或基于字符的EM-BEDDING来表示它们。我们对巴斯克,法国和波兰语的实验表明,基于性质的表示从基于词的展示来产生更好的结果。在某些情况下,根据语言的形态复杂性,可以将基于性状的表面形式的表示作为lemmas的代理。

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