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Utilizing Dependency Language Models for Graph-based Dependency Parsing Models

机译:利用基于图形的依赖性解析模型的依赖语言模型

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Most previous graph-based parsing models increase decoding complexity when they use high-order features due to exact-inference decoding. In this paper, we present an approach to enriching high-order feature representations for graph-based dependency parsing models using a dependency language model and beam search. The dependency language model is built on a large-amount of additional auto-parsed data that is processed by a baseline parser. Based on the dependency language model, we represent a set of features for the parsing model. Finally, the features are efficiently integrated into the parsing model during decoding using beam search. Our approach has two advantages. Firstly we utilize rich high-order features defined over a view of large scope and additional large raw corpus. Secondly our approach does not increase the decoding complexity. We evaluate the proposed approach on English and Chinese data. The experimental results show that our new parser achieves the best accuracy on the Chinese data and comparable accuracy with the best known systems on the English data.
机译:大多数先前的基于图的解析模型在使用由于精确引起的解码引起的高阶功能时增加了解码复杂性。在本文中,我们使用依赖语言模型和光束搜索来提高用于基于图形的依赖性解析模型的高阶特征表示的方法。依赖语言模型基于由基线解析器处理的大量附加自动解析数据。基于依赖语言模型,我们代表了解析模型的一组功能。最后,在使用波束搜索的解码期间,该特征在解码期间有效地集成到解析模型中。我们的方法有两个优点。首先,我们利用丰富的高阶功能,在大型范围和额外的大型原料中定义。其次,我们的方法不会增加解码复杂性。我们评估了拟议的英语和中文数据方法。实验结果表明,我们的新解析器实现了中国数据的最佳准确性,以及与英语数据中最着名的系统的可比准确性。

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