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Not Only Size Matters: Early‐Talker and Late‐Talker Vocabularies Support Different Word‐Learning Biases in Babies and Networks
Author(s) -
Colunga Eliana,
Sims Clare E.
Publication year - 2017
Publication title -
cognitive science
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.498
H-Index - 114
eISSN - 1551-6709
pISSN - 0364-0213
DOI - 10.1111/cogs.12409
Subject(s) - vocabulary , vocabulary development , word learning , generalization , word (group theory) , psychology , noun , task (project management) , language acquisition , computer science , cognitive psychology , linguistics , artificial intelligence , natural language processing , mathematics , mathematical analysis , philosophy , mathematics education , management , economics
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.