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Construction of an Objective Hierarchy of Abstract Concepts via Directional Similarity

机译:通过方向相似性构建抽象概念的客观层次

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The method of organization of word meanings is a crucial issue with lexical databases. Our purpose in this research is to extract word hierarchies from corpora automatically. Our initial task to this end is to determine adjective hyperonyms. In order to find adjective hyperonyms, we utilize abstract nouns. We constructed linguistic data by extracting semantic relations between abstract nouns and adjectives from corpus data and classifying abstract nouns based on adjective similarity using a self-organizing semantic map, which is a neural network model (Kohonen 1995). In this paper we describe how to hierarchically organize abstract nouns (adjective hyperonyms) in a semantic map mainly using CSM. We compare three hierarchical organizations of abstract nouns, according to CSM, frequency (Tf.CSM) and an alternative similarity measure based on coefficient overlap, to estimate hyperonym relations between words.
机译:词义的组织方法是词汇数据库的关键问题。我们在这项研究中的目的是自动从语料库中提取单词层次结构。为此,我们的首要任务是确定形容词的同义词。为了找到形容词超名,我们使用抽象名词。我们通过从语料库数据中提取抽象名词和形容词之间的语义关系并使用自组织语义映射图(基于神经网络模型,基于形容词相似性)对抽象名词进行分类来构造语言数据(Kohonen 1995)。在本文中,我们描述了如何主要使用CSM在语义图中分层组织抽象名词(形容词超名)。我们根据CSM,频率(Tf.CSM)和基于系数重叠的替代相似性度量,比较了三个抽象名词的层次结构,以估计单词之间的同义关系。

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