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Verb Pattern: A Probabilistic Semantic Representation on Verbs

机译:动词模式:动词上的概率语义表示

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Verbs are important in semantic understanding of natural language. Traditional verb representations, such as FrameNet, PropBank, VerbNet, focus on verbs' roles. These roles are too coarse to represent verbs' semantics. In this paper, we introduce verb patterns to represent verbs' semantics, such that each pattern corresponds to a single semantic of the verb. First we analyze the principles for verb patterns: generality and specificity. Then we propose a nonparametric model based on description length. Experimental results prove the high effectiveness of verb patterns. We further apply verb patterns to context-aware conceptualization, to show that verb patterns are helpful in semantic-related tasks.
机译:动词在对自然语言的语义理解中很重要。传统的动词表示,如Framenet,Propbank,Verbnet,专注于动词的角色。这些角色太粗糙,无法代表动词的语义。在本文中,我们介绍动词模式来代表动词的语义,使得每个模式对应于动词的单个语义。首先,我们分析动词模式的原则:普遍性和特异性。然后我们基于描述长度提出非参数模型。实验结果证明了动词模式的高效性。我们进一步应用动词模式以上下文感知概念化,以显示动词模式有助于与语义相关的任务。

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