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A lightweight Chinese semantic dependency parsing model based on sentence compression

机译:基于句子压缩的轻量级中文语义依赖解析模型

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This paper is concerned with lightweight semantic dependency parsing for Chinese. We propose a novel sentence compression based model for semantic dependency parsing without using any syntactic dependency information. Our model divides semantic dependency parsing into two sequential sub-tasks: sentence compression and semantic dependency recognition. Sentence compression method is used to get backbone information of the sentence, conveying candidate heads of arguments to the next step. The bilexical semantic relations between words in the compressed sentence and predicates are then recognized in a pairwise way. We present encouraging results on the Chinese data set from CoNLL 2009 shared task. Without any syntactic information, our semantic dependency parsing model still outperforms the best reported system in the literature.
机译:本文涉及中文的轻量级语义依赖解析。我们提出了一种新颖的基于句子压缩的模型,用于在不使用任何语法相关性信息的情况下进行语义相关性分析。我们的模型将语义依赖性解析分为两个连续的子任务:句子压缩和语义依赖性识别。句子压缩方法用于获取句子的主干信息,将候选参数的标题传递到下一步。然后以成对的方式识别压缩句子中的单词与谓语之间的双义语义关系。对于CoNLL 2009共享任务的中文数据集,我们给出了令人鼓舞的结果。在没有任何语法信息的情况下,我们的语义依赖性分析模型仍然优于文献中报告的最佳系统。

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