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Language acquisition is model-based rather than model-free
Published online by Cambridge University Press: 02 June 2016
Abstract
Christiansen & Chater (C&C) propose that learning language is learning to process language. However, we believe that the general-purpose prediction mechanism they propose is insufficient to account for many phenomena in language acquisition. We argue from theoretical considerations and empirical evidence that many acquisition tasks are model-based, and that different acquisition tasks require different, specialized models.
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- Copyright © Cambridge University Press 2016
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Target article
The Now-or-Never bottleneck: A fundamental constraint on language
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