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Semi-supervised Learning of Dependency Parsers using Generalized Expectation Criteria

机译:使用广义期望标准的依赖分析器的半监督学习

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摘要

In this paper, we propose a novel method for semi-supervised learning of non-projective log-linear dependency parsers using directly expressed linguistic prior knowledge (e.g. a noun's parent is often a verb). Model parameters are estimated using a generalized expectation (GE) objective function that penalizes the mismatch between model predictions and linguistic expectation constraints. In a comparison with two prominent "unsupervised" learning methods that require indirect biasing toward the correct syntactic structure, we show that GE can attain better accuracy with as few as 20 intuitive constraints. We also present positive experimental results on longer sentences in multiple languages.
机译:在本文中,我们提出了一种使用直接表达的语言先验知识(例如名词的父母通常是动词)对非投影对数线性依赖解析器进行半监督学习的新方法。使用广义期望(GE)目标函数估算模型参数,该目标函数可惩罚模型预测与语言期望约束之间的不匹配。与需要间接偏向正确句法结构的两种著名的“无监督”学习方法进行比较,我们表明GE可以在少至20个直观约束的情况下获得更高的准确性。我们还针对多种语言的较长句子提出了积极的实验结果。

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