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Zero-resource Dependency Parsing: Boosting Delexicalized Cross-lingual Transfer with Linguistic Knowledge

机译:零资源依赖关系解析:利用语言知识促进非专业化的跨语言迁移

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This paper studies cross-lingual transfer for dependency parsing, focusing on very low-resource settings where delexicalized transfer is the only fully automatic option. We show how to boost parsing performance by rewriting the source sentences so as to better match the linguistic regularities of the target language. We contrast a data-driven approach with an approach relying on linguistically motivated rules automatically extracted from the World Atlas of Language Structures. Our findings are backed up by experiments involving 40 languages. They show that both approaches greatly outperform the baseline, the knowledge-driven method yielding the best accuracies, with average improvements of +2.9 UAS, and up to +90 UAS (absolute) on some frequent PoS configurations.
机译:本文研究了跨语言传输以进行依赖关系分析,重点是资源非常少的设置,其中非词法化传输是唯一的全自动选项。我们展示了如何通过重写源语句来提高解析性能,从而更好地匹配目标语言的语言规律。我们将数据驱动的方法与依赖于从世界语言结构图集自动提取的基于语言动机的规则的方法进行了对比。我们的发现得到了涉及40种语言的实验的支持。他们表明,这两种方法都大大优于基线,知识驱动的方法产生了最佳的准确性,在某些频繁的PoS配置上,平均改进了+2.9 UAS,并且最高提高了+90 UAS(绝对值)。

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