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Improving Feature-Rich Transition-Based Constituent Parsing Using Recurrent Neural Networks

机译:使用递归神经网络改进基于特征丰富过渡的成分解析

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Conventional feature-rich parsers based on manually tuned features have achieved state-of-the-art performance. However, these parsers are not good at handling long-term dependencies using only the clues captured by a prepared feature template. On the other hand, recurrent neural network (RNN)-based parsers can encode unbounded history information effectively, but they perform not well for small tree structures, especially when low-frequency words are involved, and they cannot use prior linguistic knowledge. In this paper, we propose a simple but effective framework to combine the merits of feature-rich transition-based parsers and RNNs. Specifically, the proposed framework incorporates RNN-based scores into the feature template used by a feature-rich parser. On English WSJ treebank and SPMRL 2014 German treebank, our framework achieves state-of-the-art performance (91.56 F-score for English and 83.06 F-score for German), without requiring any additional unlabeled data.
机译:基于手动调整的功能的常规功能丰富的解析器已经实现了最新的性能。但是,这些解析器不擅长仅使用准备好的功能模板捕获的线索来处理长期依赖关系。另一方面,基于递归神经网络(RNN)的解析器可以有效地对无限制的历史信息进行编码,但是它们在小型树结构中表现不佳,尤其是在涉及低频单词时,并且它们不能使用先验的语言知识。在本文中,我们提出了一个简单而有效的框架,以结合基于功能丰富的基于过渡的解析器和RNN的优点。具体而言,提出的框架将基于RNN的分数合并到功能丰富的解析器使用的功能模板中。在英文WSJ树库和SPMRL 2014德国树库中,我们的框架实现了最先进的性能(英语为91.56 F分数,德语为83.06 F分数),而无需任何其他未标记的数据。

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