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Unsupervised Learning of Prototypical Fillers for Implicit Semantic Role Labeling

机译:隐含语义角色标记的难证学习原型填充物

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Gold annotations for supervised implicit semantic role labeling are extremely sparse and costly. As a lightweight alternative, this paper describes an approach based on unsupervised parsing which can do without iSRL-specific training data: We induce prototypical roles from large amounts of explicit SRL annotations paired with their distributed word representations. An evaluation shows competitive performance with supervised methods on the SemEval 2010 data, and our method can easily be applied to predicates (or languages) for which no training annotations are available.
机译:用于监督隐式语义角色标签的金注释非常稀疏和昂贵。作为一种轻量级替代方案,本文介绍了一种基于无监督解析的方法,该方法可以在没有ISRL特定的培训数据的情况下,我们从大量的显式SRL注释引起原型角色与分布式字表示。评估显示在Semeval 2010数据上具有监督方法的竞争性能,我们的方法可以很容易地应用于谓词(或语言),没有培训注释。

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