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Explicitly modeling case improves neural dependency parsing

机译:显式建模案例可改善神经依赖性解析

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Neural dependency parsing models that compose word representations from characters can presumably exploit morphosyntax when making attachment decisions. How much do they know about morphology? We investigate how well they handle morphological case, which is important for parsing. Our experiments on Czech, German and Russian suggest that adding explicit morphological case-either oracle or predicted-improves neural dependency parsing, indicating that the learned representations in these models do not fully encode the morphological knowledge that they need, and can still benefit from targeted forms of explicit linguistic modeling.
机译:在做出附件决策时,由字符组成单词表示的神经相关性解析模型可能可以利用词法语法。他们对形态学了解多少?我们调查了它们如何很好地处理形态学案例,这对于解析很重要。我们在捷克语,德语和俄语上的实验表明,添加显式形态案例(oracle或预测的)可改善神经依赖性解析,这表明这些模型中的学习表示不能完全编码其所需的形态学知识,并且仍然可以受益于针对性语言建模的形式。

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