从电子词典(WordNet)计算的语义距离规范。

William S Maki, Lauren N McKinley, Amber G Thompson
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引用次数: 64

摘要

WordNet,一个电子词典(或词汇数据库),是计算和认知科学家的宝贵资源。最近在WordNet中节点(synsets)之间的语义距离计算方面的工作使得建立一个大型的语义距离数据库成为可能,用于为心理学研究选择词对。数据库现在包含近50,000对具有语义距离、关联强度和基于共现的相似性值的单词。语义距离被发现与这些其他测量的相关性很弱,但与语义相关性的另一个测量,特征相似性的相关性更强。层次聚类分析表明,语义距离下的知识结构与特征相似度下的知识结构大体形式相似。在使用语义相似度评分的实验中,人类参与者能够区分语义距离。因此,从WordNet衍生出来的语义距离似乎不同于其他词汇对相关性的测量,并且具有心理功能。该数据库可从www.psychonomic.org/archive/下载。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semantic distance norms computed from an electronic dictionary (WordNet).

WordNet, an electronic dictionary (or lexical database), is a valuable resource for computational and cognitive scientists. Recent work on the computing of semantic distances among nodes (synsets) in WordNet has made it possible to build a large database of semantic distances for use in selecting word pairs for psychological research. The database now contains nearly 50,000 pairs of words that have values for semantic distance, associative strength, and similarity based on co-occurrence. Semantic distance was found to correlate weakly with these other measures but to correlate more strongly with another measure of semantic relatedness, featural similarity. Hierarchical clustering analysis suggested that the knowledge structure underlying semantic distance is similar in gross form to that underlying featural similarity. In experiments in which semantic similarity ratings were used, human participants were able to discriminate semantic distance. Thus, semantic distance as derived from WordNet appears distinct from other measures of word pair relatedness and is psychologically functional. This database may be downloaded from www.psychonomic.org/archive/.

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