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Broad-Coverage Parsing with Neural Networks

机译:使用神经网络进行广泛的解析

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Subsymbolic systems have been successfully used to model several aspects of human language processing. Such parsers are appealing because they allow revising the interpretation as words are incrementally processed. Yet, it has been very hard to scale them up to realistic language due to training time, limited memory, and the difficulty of representing linguistic structure. In this study, we show that it is possible to keep track of long-distance dependencies and to parse into deeper structures than before based on two techniques: a localist encoding of the input sequence and a dynamic unrolling of the network according to the parse tree. With these techniques, the system can nonmonotonically parse a corpus of realistic sentences into parse trees labelled with grammatical tags from a broad-coverage Head-driven Phrase Structure Grammar of English.
机译:亚符号系统已成功用于建模人类语言处理的多个方面。这样的解析器之所以吸引人,是因为它们允许在逐步处理单词时修改解释。然而,由于训练时间,有限的记忆力和难以表达语言结构的原因,很难将它们扩展到现实语言。在这项研究中,我们展示了基于两种技术可以跟踪远距离依赖关系并解析为比以前更深的结构:输入序列的本地编码和根据解析树对网络的动态展开。借助这些技术,系统可以从一个广泛的英语头部驱动的短语结构语法中,非单调地将现实句子的语料库解析为带有语法标记的树。

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