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Adapting Unsupervised Syntactic Parsing Methodology for Discourse Dependency Parsing

机译:适应话语依赖解析的无监督句法解析方法

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摘要

One of the main bottlenecks in developing discourse dependency parsers is the lack of annotated training data. A potential solution is to utilize abundant unlabeled data by using unsupervised techniques, but there is so far little research in unsupervised discourse dependency parsing. Fortunately, unsupervised syntactic dependency parsing has been studied for decades, which could potentially be adapted for discourse parsing. In this paper, we propose a simple yet effective method to adapt unsupervised syntactic dependency parsing methodology for unsupervised discourse dependency parsing. We apply the method to adapt two state-of-the-art unsupervised syntactic dependency parsing methods. Experimental results demonstrate that our adaptation is effective. Moreover, we extend the adapted methods to the semi-supervised and supervised setting and surprisingly, we find that they outperform previous methods specially designed for supervised discourse parsing. Further analysis shows our adaptations result in superiority not only in parsing accuracy but also in time and space efficiency.
机译:开发话语依赖性解析器的主要瓶颈之一是缺乏注释的培训数据。潜在的解决方案是通过使用无监督的技术利用丰富的未标记数据,但到目前为止在无监督的话语依赖性解析中尚未研究。幸运的是,几十年来研究了无监督的句法依赖解析,这可能适用于话语解析。在本文中,我们提出了一种简单但有效的方法,以适应无监督的话语依赖性解析的无监督句法依赖解析方法。我们应用该方法来调整两个最先进的无监督句法依赖解析方法。实验结果表明我们的适应是有效的。此外,我们将适应的方法扩展到半监督和监督的环境,令人惊讶的是,我们发现他们以前专为监督的话语解析设计了以前的方法。进一步的分析表明我们的适应性不仅在解析精度方面导致优越性,而且在时间和空间效率上产生优势。

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