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A Semantic Model to Study Neural Organization of Language in Bilingualism

机译:研究双语中语言神经组织的语义模型

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A neural network model of object semantic representation is used to simulate learning of new words from a foreign language. The network consists of feature areas, devoted to description of object properties, and a lexical area, devoted to words representation. Neurons in the feature areas are implemented as Wilson-Cowan oscillators, to allow segmentation of different simultaneous objects via gamma-band synchronization. Excitatory synapses among neurons in the feature and lexical areas are learned, during a training phase, via a Hebbian rule. In this work, we first assume that some words in the first language (L1) and the corresponding object representations are initially learned during a preliminary training phase. Subsequently, second-language (L2) words are learned by simultaneously presenting the new word together with the L1 one. A competitive mechanism between the two words is also implemented by the use of inhibitory interneurons. Simulations show that, after a weak training, the L2 word allows retrieval of the object properties but requires engagement of the first language. Conversely, after a prolonged training, the L2 word becomes able to retrieve object per se. In this case, a conflict between words can occur, requiring a higher-level decision mechanism.
机译:对象语义表示的神经网络模型用于模拟从外语学习新单词。该网络由专门用于对象属性描述的特征区域和专门用于单词表示的词汇区域组成。特征区域中的神经元被实现为Wilson-Cowan振荡器,以允许通过伽马波段同步来分割不同的同时对象。在训练阶段,通过Hebbian规则学习特征和词汇区域中神经元之间的兴奋性突触。在这项工作中,我们首先假设在初步训练阶段最初学习了第一语言(L1)的某些单词和相应的对象表示形式。随后,通过同时显示新单词和L1单词来学习第二语言(L2)单词。这两个词之间的竞争机制也通过使用抑制性中间神经元来实现。模拟显示,在经过较弱的训练后,L2词允许检索对象属性,但需要第一语言的参与。相反,经过长时间的训练,L2单词本身就能够检索对象。在这种情况下,单词之间可能会发生冲突,因此需要更高级别的决策机制。

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