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Solving Relational Similarity Problems Using the Web as a Corpus

机译:使用Web作为语料库解决关系的相似性问题

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We present a simple linguistically-motivated method for characterizing the semantic relations that hold between two nouns. The approach leverages the vast size of the Web in order to build lexically-specific features. The main idea is to look for verbs, prepositions, and coordinating conjunctions that can help make explicit the hidden relations between the target nouns. Using these features in instance-based classifiers, we demonstrate state-of-the-art results on various relational similarity problems, including mapping noun-modifier pairs to abstract relations like TIME, LOCATION and CONTAINER, characterizing noun-noun compounds in terms of abstract linguistic predicates like CAUSE, USE, and FROM, classifying the relations between nominals in context, and solving SAT verbal analogy problems. In essence, the approach puts together some existing ideas, showing that they apply generally to various semantic tasks, finding that verbs are especially useful features.
机译:我们提出了一种简单的语言动力方法,用于表征在两个名词之间保持的语义关系。该方法利用了大尺寸的网络,以便构建词汇特定的功能。主要思想是寻找可以帮助明确目标名词之间的隐性关系的动词,介词和协调的连词。在基于实例的分类器中使用这些特征,我们展示了各种关系相似性问题的最先进的结果,包括映射Noun-Modifier对与抽象关系,如时间,位置和容器,表征抽象的名词化合物语言谓词等原因,使用,以及分类名称在上下文中的关系,解决饱和态度的语言类比问题。从本质上讲,该方法将一些现有的想法汇集在一起​​,表明它们通常适用于各种语义任务,发现动词尤其有用的功能。

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