首页> 外文会议>Association for Computational Linguistics Annual Meeting(ACL-04); 20040721-26; Barcelona(ES) >Corpus-Based Induction of Syntactic Structure: Models of Dependency and Constituency
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Corpus-Based Induction of Syntactic Structure: Models of Dependency and Constituency

机译:基于语料库的句法结构归纳:依存和选区模型

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摘要

We present a generative model for the unsupervised learning of dependency structures. We also describe the multiplicative combination of this dependency model with a model of linear constituency. The product model outperforms both components on their respective evaluation metrics, giving the best published figures for unsupervised dependency parsing and unsupervised constituency parsing. We also demonstrate that the combined model works and is robust cross-linguistically, being able to exploit either attachment or distributional regularities that are salient in the data.
机译:我们提出了一种用于依赖结构的无监督学习的生成模型。我们还描述了此依赖性模型与线性选区模型的乘法组合。该产品模型在其各自的评估指标上均优于两个组件,从而为无监督的依赖关系分析和无监督的选区分析提供了最佳的公开数据。我们还证明了组合模型在语言上的有效性,并且在语言方面具有鲁棒性,能够利用数据中显着的附件或分布规律。

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