| Literature DB >> 27873349 |
Eliana Colunga1, Clare E Sims1.
Abstract
In typical development, word learning goes from slow and laborious to fast and seemingly effortless. Typically developing 2-year-olds seem to intuit the whole range of things in a category from hearing a single instance named-they have word-learning biases. This is not the case for children with relatively small vocabularies (late talkers). We present a computational model that accounts for the emergence of word-learning biases in children at both ends of the vocabulary spectrum based solely on vocabulary structure. The results of Experiment 1 show that late-talkers' and early-talkers' noun vocabularies have different structures and that neural networks trained on the vocabularies of individual late talkers acquire different word-learning biases than those trained on early-talker vocabularies. These models make novel predictions about the word-learning biases in these two populations. Experiment 2 tests these predictions on late- and early-talking toddlers in a novel noun generalization task.Entities:
Keywords: Computational models; Early talkers; Late talkers; Neural networks; Word learning
Mesh:
Year: 2016 PMID: 27873349 PMCID: PMC6039116 DOI: 10.1111/cogs.12409
Source DB: PubMed Journal: Cogn Sci ISSN: 0364-0213