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Modeling Human Word Recognition with Sequences of Artificial Neurons

机译:用人工神经元序列对人类单词识别进行建模

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摘要

A new psycholinguistically motivated and neural network based model of human word recognition is presented. In contrast to earlier models it uses real speech as input. At the word layer acoustical and temporal information is stored by sequences of connected sensory neurons which pass on sensor potentials to a word neuron. In experiments with a small lexicon which includes groups of very similar word forms, the model meets high standards with respect to word recognition and simulates a number of well-known psycholinguistical effects.
机译:提出了一种基于心理语言动机和神经网络的人类单词识别模型。与早期模型相比,它使用真实语音作为输入。在单词层,声音和时间信息由连接的感觉神经元序列存储,这些序列将传感器电势传递给单词神经元。在包含一组非常相似的单词形式的小型词典进行的实验中,该模型在单词识别方面达到了很高的标准,并模拟了许多众所周知的心理语言效应。

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