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The Large-Scale Structure of Semantic Networks: Statistical Analyses and a Model of Semantic Growth

机译:语义网络的大规模结构:统计分析和语义增长模型

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We present statistical analyses of the large-scale structure of 3 types of semantic networks: word associations, WordNet, and Roget's Thesaurus. We show that they have a small-world structure, characterized by sparse connectivity, short average path lengths between words, and strong local clustering. In addition, the distributions of the number of connections follow power laws that indicate a scale-free pattern of connectivity, with most nodes having relatively few connections joined together through a small number of hubs with many connections. These regularities have also been found in certain other complex natural networks, such as the World Wide Web, but they are not consistent with many conventional models of semantic organization, based on inheritance hierarchies, arbitrarily structured networks, or high-dimensional vector spaces. We propose that these structures reflect the mechanisms by which semantic networks grow. We describe a simple model for semantic growth, in which each new word or concept is connected to an existing network by differentiating the connectivity pattern of an existing node. This model generates appropriate small-world statistics and power-law connectivity distributions, and it also suggests one possible mechanistic basis for the effects of learning history variables (age of acquisition, usage frequency) on behavioral performance in semantic processing tasks.
机译:我们提供了对三种类型的语义网络的大规模结构的统计分析:单词关联,WordNet和Roget词库。我们证明它们具有小世界的结构,其特征是连接稀疏,单词之间的平均路径长度短以及强大的局部聚类。另外,连接数量的分布遵循幂律,该幂定律表明连接的无标度模式,大多数节点具有相对较少的连接通过少数具有许多连接的集线器连接在一起。这些规则还可以在某些其他复杂的自然网络(例如,万维网)中找到,但它们与基于继承层次结构,任意结构的网络或高维向量空间的语义组织的许多常规模型不一致。我们建议这些结构反映语义网络增长的机制。我们描述了一个简单的语义增长模型,其中每个新单词或概念都通过区分现有节点的连接模式而连接到现有网络。该模型生成适当的小世界统计数据和幂律连通性分布,并且还为学习历史变量(获取的年龄,使用频率)对语义处理任务中的行为性能的影响提供了一种可能的机制基础。

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