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Implicit Acquisition of Grammars With Crossed and Nested Non-Adjacent Dependencies: Investigating the Push-Down Stack Model

机译:具有交叉和嵌套非相邻依存关系的语法的隐式获取:研究下推堆栈模型

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摘要

A recent hypothesis in empirical brain research on language is that the fundamental difference between animal and human communication systems is captured by the distinction between finite-state and more complex phrase-structure grammars, such as context-free and context-sensitive grammars. However, the relevance of this distinction for the study of language as a neurobiologi-cal system has been questioned and it has been suggested that a more relevant and partly analogous distinction is that between non-adjacent and adjacent dependencies. Online memory resources are central to the processing of non-adjacent dependencies as information has to be maintained across intervening material. One proposal is that an external memory device in the form of a limited push-down stack is used to process non-adjacent dependencies. We tested this hypothesis in an artificial grammar learning paradigm where subjects acquired non-adjacent dependencies implicitly. Generally, we found no qualitative differences between the acquisition of non-adjacent dependencies and adjacent dependencies. This suggests that although the acquisition of non-adjacent dependencies requires more exposure to the acquisition material, it utilizes the same mechanisms used for acquiring adjacent dependencies. We challenge the push-down stack model further by testing its processing predictions for nested and crossed multiple non-adjacent dependencies. The push-down stack model is partly supported by the results, and we suggest that stack-like properties are some among many natural properties characterizing the underlying neurophysiological mechanisms that implement the online memory resources used in language and structured sequence processing.
机译:关于语言的经验性大脑研究的最新假说是,动物与人类交流系统之间的根本差异是由有限状态语法和更复杂的短语结构语法(例如无上下文语法和上下文敏感语法)之间的区别所捕获的。然而,这种区别与作为神经生物学系统的语言研究的相关性受到质疑,并且已经提出,更相关和部分相似的区别是非相邻和相邻依赖之间的区别。在线信息资源对于处理非相邻的依赖关系至关重要,因为必须在所有中间材料中维护信息。一种建议是使用受限下推堆栈形式的外部存储设备来处理不相邻的依存关系。我们在人工语法学习范式中测试了该假设,其中受试者隐式地获得了非相邻的依存关系。通常,我们发现非相邻依赖项和相邻依赖项之间没有定性差异。这表明,尽管非相邻依赖项的获取需要更多地接触获取材料,但它利用了用于获取相邻依赖项的相同机制。我们通过测试嵌套和交叉的多个非相邻依赖项的处理预测来进一步挑战下推式堆栈模型。下推堆栈模型部分受结果支持,我们建议在许多自然属性中,类似堆栈的属性是一些特征,这些属性描述了实现语言和结构化序列处理中使用的在线内存资源的基本神经生理机制。

著录项

  • 来源
    《Cognitive Science》 |2012年第6期|p.1078-1101|共24页
  • 作者单位

    Max Planck Institute for Psycholinguistics, Nijmegen, The Netherlands,Cognitive Neurophysiology Research Group, Stockholm Brain Institute, Department of Clinical Neuroscience,Karolinska Institute,Donders Institute for Brain, Cognition and Behaviour, Centre for Cognitive Neuroimaging, Radboud University Nijmegen,Stockholm Brain Institute, A2:3, Retzius vaeg 8, 171 72 Stockholm, Sweden;

    Cognitive Neurophysiology Research Group, Stockholm Brain Institute, Department of Clinical Neuroscience,Karolinska Institute;

    Max Planck Institute for Psycholinguistics, Nijmegen, The Netherlands,Donders Institute for Brain, Cognition and Behaviour, Centre for Cognitive Neuroimaging, Radboud University Nijmegen;

    Max Planck Institute for Psycholinguistics, Nijmegen, The Netherlands,Cognitive Neurophysiology Research Group, Stockholm Brain Institute, Department of Clinical Neuroscience,Karolinska Institute,Donders Institute for Brain, Cognition and Behaviour, Centre for Cognitive Neuroimaging, Radboud University Nijmegen,Cognitive Neuroscience Research Group, Institute of Biotechnology & Bioengineering, Centre for Molecular and Structural Biomedicine, University of the Algarve;

  • 收录信息 美国《科学引文索引》(SCI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    artificial grammar learning; non-adjacent dependencies; crossed; nested; implicit learning;

    机译:人工语法学习;不相邻的依赖关系;越过嵌套内隐学习;

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