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Improving Parsing and PP attachment Performance with Sense Information

机译:用感测信息改进解析和PP附件性能

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To date, parsers have made limited use of semantic information, but there is evidence to suggest that semantic features can enhance parse disambiguation. This paper shows that semantic classes help to obtain significant improvement in both parsing and PP attachment tasks. We devise a gold-standard sense- and parse tree-annotated dataset based on the intersection of the Penn Treebank and SemCor, and experiment with different approaches to both semantic representation and disambiguation. For the Bikel parser, we achieved a maximal error reduction rate over the baseline parser of 6.9% and 20.5%, for parsing and PP-attachment respectively, using an unsuper-vised WSD strategy. This demonstrates that word sense information can indeed enhance the performance of syntactic disambiguation.
机译:迄今为止,解析器已经有限使用了语义信息,但有证据表明语义特征可以增强解析消歧。本文表明,语义课程有助于获得解析和PP附件任务的重大改进。我们基于Penn TreeBank和Semcor的交叉点设计了金标准的感觉和解析树木注释的数据集,并试验不同的语义表示和消歧的方法。对于Bikel Parser,我们通过不卫生的WSD策略分别实现了6.9%和20.5%的基线解析器的最大误差减少率为6.9%和20.5%。这表明字词感知信息确实可以增强句法消歧的性能。

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