Theories of word learning differentially weigh the role of repeated experience with a novel item, leading to internalization of statistical regularities over time, and the learners use of prior knowledge to infer in-the-moment. Bayesian theories suggest both are critical, but which is weighed more heavily depends on how ambiguous the situation is. To examine this interplay and how it relates to memory, we adapted a Bayesian model of learning (Tenanbaum, Kemp, Griffiths, & Goodman, 2011; Xu & Tenanbaum, 2007) to an inferential word learning task of novel animals, as outline in the following article: “Bayesians learn best: an inferred Bayesian model accounts for individual differences in prior knowledge use during word learning.” Briefly, the...
Current computational models of word learning make use of correspondences between words and observed...
Recent research has highlighted the ability of adults as well as infants to learn word-to-world mapp...
When learners are exposed to inconsistent input, do they reproduce the probabilities in the input (p...
Theories of word learning differentially weigh the role of repeated experience with a novel item, le...
Theories of word learning differentially weigh the role of repeated experience with a novel item, le...
Individuals may gain information about the meaning of novel words by using contextual clues. A Bayes...
The authors present a Bayesian framework for understanding how adults and children learn the meaning...
Most theories of word learning fall into one of two classes: hypothesis elimination or associationis...
Most theories of word learning fall into one of two classes: hypothesis elimination or associationis...
We develop a probabilistic model of human memory performance in free recall experiments. In these ex...
© The Author(s) 2011. This article is published with open access at Springerlink.com Abstract In rec...
A critical question about the nature of human learning is whether it is an all-or-none or a gradual,...
Bayesian theories of cognition assume that people can integrate probabilities rationally. However, s...
© The Author(s) 2011. This article is published with open access at Springerlink.com Abstract In rec...
Young language learners are able to map a word onto its ref-erent from an infinite number of possibl...
Current computational models of word learning make use of correspondences between words and observed...
Recent research has highlighted the ability of adults as well as infants to learn word-to-world mapp...
When learners are exposed to inconsistent input, do they reproduce the probabilities in the input (p...
Theories of word learning differentially weigh the role of repeated experience with a novel item, le...
Theories of word learning differentially weigh the role of repeated experience with a novel item, le...
Individuals may gain information about the meaning of novel words by using contextual clues. A Bayes...
The authors present a Bayesian framework for understanding how adults and children learn the meaning...
Most theories of word learning fall into one of two classes: hypothesis elimination or associationis...
Most theories of word learning fall into one of two classes: hypothesis elimination or associationis...
We develop a probabilistic model of human memory performance in free recall experiments. In these ex...
© The Author(s) 2011. This article is published with open access at Springerlink.com Abstract In rec...
A critical question about the nature of human learning is whether it is an all-or-none or a gradual,...
Bayesian theories of cognition assume that people can integrate probabilities rationally. However, s...
© The Author(s) 2011. This article is published with open access at Springerlink.com Abstract In rec...
Young language learners are able to map a word onto its ref-erent from an infinite number of possibl...
Current computational models of word learning make use of correspondences between words and observed...
Recent research has highlighted the ability of adults as well as infants to learn word-to-world mapp...
When learners are exposed to inconsistent input, do they reproduce the probabilities in the input (p...