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A Computational Model of the Lexical-Semantic System Based on a Grounded Cognition Approach

机译:基于扎实认知方法的词汇语义系统计算模型

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摘要

This work presents a connectionist model of the semantic-lexical system based on grounded cognition. The model assumes that the lexical and semantic aspects of language are memorized in two distinct stores. The semantic properties of objects are represented as a collection of features, whose number may vary among objects. Features are described as activation of neural oscillators in different sensory-motor areas (one area for each feature) topographically organized to implement a similarity principle. Lexical items are represented as activation of neural groups in a different layer. Lexical and semantic aspects are then linked together on the basis of previous experience, using physiological learning mechanisms. After training, features which frequently occurred together, and the corresponding word-forms, become linked via reciprocal excitatory synapses. The model also includes some inhibitory synapses: features in the semantic network tend to inhibit words not associated with them during the previous learning phase. Simulations show that after learning, presentation of a cue can evoke the overall object and the corresponding word in the lexical area. Moreover, different objects and the corresponding words can be simultaneously retrieved and segmented via a time division in the gamma-band. Word presentation, in turn, activates the corresponding features in the sensory-motor areas, recreating the same conditions occurring during learning. The model simulates the formation of categories, assuming that objects belong to the same category if they share some features. Simple exempla are shown to illustrate how words representing a category can be distinguished from words representing individual members. Finally, the model can be used to simulate patients with focalized lesions, assuming an impairment of synaptic strength in specific feature areas.
机译:这项工作提出了基于扎根认知的语义-词汇系统的连接主义模型。该模型假定语言的词汇和语义方面存储在两个不同的商店中。对象的语义属性表示为特征的集合,特征的数量在对象之间可能有所不同。特征被描述为在地形上组织以实现相似原理的不同感觉运动区域(每个特征一个区域)中神经振荡器的激活。词汇项表示为不同层中神经组的激活。然后,使用生理学习机制,根据以前的经验将词汇和语义方面链接在一起。训练后,经常相互出现的特征和相应的词形通过相互的兴奋性突触联系在一起。该模型还包括一些抑制性突触:语义网络中的功能倾向于抑制在先前的学习阶段中与它们不相关的单词。模拟表明,学习后,提示的呈现可以唤起整体对象和词汇区域中的相应单词。此外,可以通过伽马带中的时分同时检索和分割不同的对象和相应的单词。单词表达反过来激活了感觉运动区域中的相应功能,从而重新创造了学习过程中出现的相同条件。该模型模拟类别的形成,假设如果对象共享某些特征,则它们属于同一类别。显示了简单的示例以说明如何将代表类别的单词与代表单个成员的单词区分开。最后,假设特定特征区域的突触强度受损,该模型可用于模拟具有局灶性病变的患者。

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