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A LOCALIST NEURAL NETWORK MODEL FOR EARLY CHILD LANGUAGE ACQUISITION FROM MOTHERESE

机译:母语早期儿童习得的局部神经网络模型

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This paper presents a localist multimodal neural network that uses Hebbian learning to acquire one-word child language from child directed speech (CDS) comprising multiword utterances and queries in addition to one-word utterances. The model implements cross-situational learning between linguistic words used in child directed speech, the accompanying perceptual entities, conceptual relations and inferred communicative intentions. In 90 cases out of 117, the network successfully generates one-word utterances that may be viewed as being semantically equivalent to the CDS input used to train the network. The model also successfully emulates the one-word speech of a child in 12 out of 28 cases, despite its localist nature, thereby suggesting that Hebbian learning, as used in most models of cognitive development, is capable of cross-situational learning, a key component of multimodal temporal cognitive acquisition tasks, of which child language acquisition is one.
机译:本文介绍了一个局部多模式神经网络,它使用Hebbian学习从儿童定向语音(CD)中获取单词儿童语言,除了单词话语之外还包括多字发音和查询。该模型实现了儿童定向言论中使用的语言词语的交叉情境学习,随附的感知实体,概念性关系和推断交际意图。在117中的90个案例中,网络成功地生成了一个单词话语,该话语可以被视为语义等同于用于训练网络的CDS输入。该模型还成功地模拟了28个案例中的12个孩子的单词演讲,尽管其地方性本质,因此暗示了在大多数认知发展模型中使用的Hebbian学习,能够交叉情境学习,是一个关键多模式时间认知采集任务的组成部分,其中子语言获取是一个。

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