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Verb Classification using Distributional Similarity in Syntactic and Semantic Structures

机译:在句法和语义结构中使用分布相似性进行动词分类

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In this paper, we propose innovative representations for automatic classification of verbs according to mainstream linguistic theories, namely VerbNet and FrameNet. First, syntactic and semantic structures capturing essential lexical and syntactic properties of verbs are defined. Then, we design advanced similarity functions between such structures, i.e., semantic tree kernel functions, for exploiting distributional and grammatical information in Support Vector Machines. The extensive empirical analysis on VerbNet class and frame detection shows that our models capture meaningful syntactic/semantic structures, which allows for improving the state-of-the-art.
机译:在本文中,我们提出了根据主流语言理论(即VerbNet和FrameNet)对动词进行自动分类的创新表示形式。首先,定义了捕获动词的基本词汇和句法属性的句法和语义结构。然后,我们设计了这种结构之间的高级相似性函数,即语义树内核函数,以利用支持向量机中的分布和语法信息。对VerbNet类和框架检测进行的广泛经验分析表明,我们的模型捕获了有意义的句法/语义结构,从而可以改进现有技术。

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