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Automatic Generation of High Quality CCGbanks for Parser Domain Adaptation

机译:自动生成用于解析器域适配的高质量CCGbank

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We propose a new domain adaptation method for Combinatory Categorial Grammar (CCG) parsing, based on the idea of automatic generation of CCG corpora exploiting cheaper resources of dependency trees. Our solution is conceptually simple, and not relying on a specific parser architecture, making it applicable to the current best-performing parsers. We conduct extensive parsing experiments with detailed discussion; on top of existing benchmark datasets on (1) biomedical texts and (2) question sentences, we create experimental datasets of (3) speech conversation and (4) math problems. When applied to the proposed method, an off-the-shelf CCG parser shows significant performance gains, improving from 90.7% to 96.6% on speech conversation, and from 88.5% to 96.8% on math problems.
机译:我们提出了一种新的领域自适应方法,用于组合分类语法(CCG)解析,它基于利用依赖树便宜资源自动生成CCG语料库的思想。我们的解决方案从概念上讲是简单的,并且不依赖于特定的解析器体系结构,因此适用于当前性能最佳的解析器。我们进行了广泛的解析实验,并进行了详细讨论;在(1)生物医学文本和(2)疑问句的现有基准数据集的基础上,我们创建(3)语音对话和(4)数学问题的实验数据集。当应用于所提出的方法时,现成的CCG解析器显示出显着的性能提升,语音对话从90.7%提高到96.6%,数学问题从88.5%提高到96.8%。

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