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Important words in the lexicon: The influence of closeness centrality on lexical processing.

机译:词典中的重要词:紧密度中心对词汇处理的影响。

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摘要

Network science is an interdisciplinary field drawing on computational and mathematical tools from mathematics, computer science, and physics. Network Science utilizes networks to examine real world complex systems. Within the network models nodes represent individual entities and links represent relationships between entities. A key finding of network science is that the underlying structure of a system will influence how that system functions. A network model of the phonological lexicon was created by Vitevitch (2008) using nodes to represent words and links to represent phonological similarity. The present work explores the influence of closeness centrality (a network measure of the average distance between a node and all other nodes in a network) on lexical processing. A word with a high closeness centrality value, such as CAN, will be centrally located and close to many other words in the lexicon. A word with a low closeness centrality value, such as CURE, will be located in a remote, sparse area of the lexicon and will be far from many other words in the lexicon. Three experiments were performed. Experiment 1 used a lexical search task in which participants were to turn one word into another by changing one sound at a time in the word. Participants were more successful at completing the task when it began at a word with low closeness centrality than at a word with high closeness centrality. Experiment 2 used an auditory lexical decision task and results show participants responded more quickly to words with high closeness centrality than to words with low closeness centrality. In Experiment 2, confounding variables were controlled during the initial selection of stimuli. However, in Experiment 3 an auditory lexical decision task was used again, but confounding variables were controlled via statistical analysis. In addition, a number of individual differences in participants were measured (e.g., vocabulary size, working memory span, processing speed, and inhibition processing). Experiment 3 results suggest an interaction between closeness centrality and frequency of occurrence on reaction times, but no impact of individual differences was observed on the closeness centrality effect. Results are explained in terms of a partial activation framework and implications of the work are discussed.
机译:网络科学是一个跨学科领域,它借鉴了数学,计算机科学和物理学中的计算和数学工具。网络科学利用网络来检查现实世界中的复杂系统。在网络模型中,节点表示单个实体,链接表示实体之间的关系。网络科学的关键发现是系统的底层结构将影响该系统的功能。语音词典的网络模型由维特维奇(Vitevitch,2008)创建,使用节点表示单词和链接来表示语音相似性。本工作探讨了词法处理中的接近中心性(网络中节点与所有其他节点之间的平均距离的网络度量)的影响。具有高度接近中心值的单词(例如CAN)将位于词典的中心位置并与其他单词接近。靠近中心度值较低的单词(例如CURE)将位于词典的一个偏远稀疏区域中,并且与词典中的许多其他单词相距甚远。进行了三个实验。实验1使用了词汇搜索任务,其中参与者通过一次改变单词中的一个声音来将一个单词变成另一个单词。与以紧密度为中心的单词开始相比,参加者在完成任务时从以紧密度为中心的单词开始更成功。实验2使用听觉词汇决策任务,结果表明,参与者对紧密度较高的单词的响应比对紧密度较低的单词的响应更快。在实验2中,在初始选择刺激过程中控制了混杂变量。但是,在实验3中,再次使用了听觉词汇决策任务,但是混淆变量是通过统计分析控制的。另外,测量了参与者的许多个体差异(例如,词汇量,工作记忆跨度,处理速度和抑制处理)。实验3的结果表明,紧密度中心性和发生频率对反应时间之间存在相互作用,但是没有观察到个体差异对紧密度中心性效应的影响。根据部分激活框架解释了结果,并讨论了工作的含义。

著录项

  • 作者

    Goldstein, Rutherford M.;

  • 作者单位

    University of Kansas.;

  • 授予单位 University of Kansas.;
  • 学科 Cognitive psychology.
  • 学位 Ph.D.
  • 年度 2015
  • 页码 81 p.
  • 总页数 81
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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