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Deep Contextualized Word Embeddings in Transition-Based and Graph-Based Dependency Parsing - A Tale of Two Parsers Revisited

机译:基于转换和基于图形的依赖性解析的深层语境化词嵌入 - 重新审视两个解析器的故事

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Transition-based and graph-based dependency parsers have previously been shown to have complementary strengths and weaknesses: transition-based parsers exploit rich structural features but suffer from error propagation, while graph-based parsers benefit from global optimization but have restricted feature scope. In this paper, we show that, even though some details of the picture have changed after the switch to neural networks and continuous representations, the basic trade-off between rich features and global optimization remains essentially the same. Moreover, we show that deep contextualized word embeddings, which allow parsers to pack information about global sentence structure into local feature representations, benefit transition-based parsers more than graph-based parsers, making the two approaches virtually equivalent in terms of both accuracy and error profile. We argue that the reason is that these representations help prevent search errors and thereby allow transition-based parsers to better exploit their inherent strength of making accurate local decisions. We support this explanation by an error analysis of parsing experiments on 13 languages.
机译:先前已经显示过渡和基于图形的依赖性解析器具有互补的优势和缺点:基于转换的解析器利用丰富的结构特征,但遭受误差传播,而基于图形的解析器受益于全局优化,但具有限制特征范围。在本文中,我们表明,即使在切换到神经网络和连续表示后图像的一些细节已经改变,富有功能和全局优化之间的基本权衡仍然是相同的。此外,我们显示深刻的语境化词嵌入品,它允许解析器将关于全局句子结构的信息包装到本地特征表示中,比基于图形的解析器多于基于转换的解析器,使这两个方法几乎相当于精度和错误的方法轮廓。我们认为原因是这些表示有助于防止搜索错误,从而允许基于转换的解析器更好地利用其制定准确的本地决策的固有强度。我们通过对13种语言的解析实验进行错误分析来支持这种解释。

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