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Exploiting Web-Derived Selectional Preference to Improve Statistical Dependency Parsing

机译:利用网络派生的选择偏好来改善统计依赖性解析

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In this paper, we present a novel approach which incorporates the web-derived selectional preferences to improve statistical dependency parsing. Conventional selectional preference learning methods have usually focused on word-to-class relations, e.g., a verb selects as its subject a given nominal class. This paper extends previous work to word-to-word selectional preferences by using web-scale data. Experiments show that web-scale data improves statistical dependency parsing, particularly for long dependency relationships. There is no data like more data, performance improves log-linearly with the number of parameters (unique N-grams). More importantly, when operating on new domains, we show that using web-derived selectional preferences is essential for achieving robust performance.
机译:在本文中,我们提出了一种新颖的方法,该方法结合了Web派生的选择偏好来改善统计依存关系的解析。常规的选择偏好学习方法通​​常集中于词与类的关系,例如,动词选择给定的名义类作为其主语。本文通过使用网络规模的数据将先前的工作扩展到了逐词选择偏好。实验表明,网络规模的数据可以改善统计依存关系的解析,尤其是对于长依存关系而言。没有像其他数据一样的数据,性能随着参数数量(唯一的N元语法)呈对数线性提高。更重要的是,当在新域上运行时,我们证明了使用Web派生的选择首选项对于实现强大的性能至关重要。

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