Computational investigation of early child language acquisition using multimodal neural networks: a review of three models
作者:Abel Nyamapfene
摘要
Current opinion suggests that language is a cognitive process in which different modalities such as perceptual entities, communicative intentions and speech are inextricably linked. As such, the process of child language acquisition is one in which the child learns to decipher this inextricability and to acquire language capabilities starting from gesturing, followed by language dominated by single word utterances, through to full-blown native language capability. In this paper I review three multimodal neural network models of early child language acquisition. Using these models, I show how computational modelling, in conjunction with the availability of empirical data, can contribute towards our understanding of child language acquisition. I conclude this paper by proposing a control theoretic approach towards modelling child language acquisition using neural networks.
论文关键词:Child language acquisition, Computational model, Neural network, Control system
论文评审过程:
论文官网地址:https://doi.org/10.1007/s10462-009-9125-6