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. Resu...
Most work on language acquisition treats word segmentation---the identification of linguistic segmen...
For infants, early word learning is a chicken-and-egg problem. One way to learn a word is to observe...
How Bayesian inference might be used as the basis of a system for learning and representing the mean...
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...
Current computational models of word learning make use of correspondences between words and observed...
Words are the essence of communication: They are the building blocks of any language. Learning the m...
We present a hierarchical Bayesian framework for modeling the acqui-sition of verb argument construc...
By the time children begin to rapidly acquire new word mean-ings they are already able to determine ...
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 productivity of language lies in the ability to generalize linguistic knowledge to new situation...
Word learning is a language component that usually appears to be impaired in children with developme...
Theories of word learning differentially weigh the role of repeated experience with a novel item, le...
Recent studies (e.g. Yu & Smith, in press; Smith & Yu, submitted) show that both adults and ...
Most work on language acquisition treats word segmentation---the identification of linguistic segmen...
For infants, early word learning is a chicken-and-egg problem. One way to learn a word is to observe...
How Bayesian inference might be used as the basis of a system for learning and representing the mean...
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...
Current computational models of word learning make use of correspondences between words and observed...
Words are the essence of communication: They are the building blocks of any language. Learning the m...
We present a hierarchical Bayesian framework for modeling the acqui-sition of verb argument construc...
By the time children begin to rapidly acquire new word mean-ings they are already able to determine ...
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 productivity of language lies in the ability to generalize linguistic knowledge to new situation...
Word learning is a language component that usually appears to be impaired in children with developme...
Theories of word learning differentially weigh the role of repeated experience with a novel item, le...
Recent studies (e.g. Yu & Smith, in press; Smith & Yu, submitted) show that both adults and ...
Most work on language acquisition treats word segmentation---the identification of linguistic segmen...
For infants, early word learning is a chicken-and-egg problem. One way to learn a word is to observe...
How Bayesian inference might be used as the basis of a system for learning and representing the mean...