Authors
Fei Xu, Joshua B Tenenbaum
Publication date
2007/4
Journal
Psychological review
Volume
114
Issue
2
Pages
245
Publisher
American Psychological Association
Description
The authors present a Bayesian framework for understanding how adults and children learn the meanings of words. The theory explains how learners can generalize meaningfully from just one or a few positive examples of a novel word's referents, by making rational inductive inferences that integrate prior knowledge about plausible word meanings with the statistical structure of the observed examples. The theory addresses shortcomings of the two best known approaches to modeling word learning, based on deductive hypothesis elimination and associative learning. Three experiments with adults and children test the Bayesian account's predictions in the context of learning words for object categories at multiple levels of a taxonomic hierarchy. Results provide strong support for the Bayesian account over competing accounts, in terms of both quantitative model fits and the ability to explain important qualitative …
Total citations
20062007200820092010201120122013201420152016201720182019202020212022202320249183388567275765361608371948492678741
Scholar articles