Cross-situational word learning is based on the notion that a learner can determine the referent of a word by finding something in common across many observed uses of that word. Here we propose an adaptive learning algorithm that contains a parameter that controls the strength of the reinforcement applied to associations between concurrent words and referents, and a parameter that regulates inference, which includes built-in biases, such as mutual exclusivity, and information of past learning events. By adjusting these parameters so that the model predictions agree with data from representative experiments on cross-situational word learning, we were able to explain the learning strategies adopted by the participants of those experiments in ...
A child learning language must determine the correct mappings between spoken words and their referen...
Cross-situational learning is a mechanism for learning the meaning of words across multiple exposure...
Cross-situational word learning, like any statistical learning problem, involves tracking the reg-ul...
Cross-situational word learning is based on the notion that a learner can determine the referent of ...
Cross-situational word learning is based on the notion that a learner can determine the referent of ...
Cross-situational learning is a mechanism for learning the meaning of words across multiple exposure...
Cross-situational learning is a mechanism for learning the meaning of words across multiple exposure...
Word learning happens in everyday contexts with many words and many potential referents for those wo...
ABSTRACT—There are an infinite number of possible word-to-word pairings in naturalistic learning env...
Learners are able to infer the meanings of words by observ-ing the consistent statistical associatio...
The Mutual Exclusivity (ME) constraint – a preference for mapping one word to one object – has been ...
Being able to learn word meanings across multiple scenes consisting of multiple words and referents ...
One problem language learners face is extracting word meanings from scenes with many possible refere...
Item does not contain fulltextBeing able to learn word meanings across multiple scenes consisting of...
Abstract—Cross-situational learning, the ability to learn word meanings across multiple scenes consi...
A child learning language must determine the correct mappings between spoken words and their referen...
Cross-situational learning is a mechanism for learning the meaning of words across multiple exposure...
Cross-situational word learning, like any statistical learning problem, involves tracking the reg-ul...
Cross-situational word learning is based on the notion that a learner can determine the referent of ...
Cross-situational word learning is based on the notion that a learner can determine the referent of ...
Cross-situational learning is a mechanism for learning the meaning of words across multiple exposure...
Cross-situational learning is a mechanism for learning the meaning of words across multiple exposure...
Word learning happens in everyday contexts with many words and many potential referents for those wo...
ABSTRACT—There are an infinite number of possible word-to-word pairings in naturalistic learning env...
Learners are able to infer the meanings of words by observ-ing the consistent statistical associatio...
The Mutual Exclusivity (ME) constraint – a preference for mapping one word to one object – has been ...
Being able to learn word meanings across multiple scenes consisting of multiple words and referents ...
One problem language learners face is extracting word meanings from scenes with many possible refere...
Item does not contain fulltextBeing able to learn word meanings across multiple scenes consisting of...
Abstract—Cross-situational learning, the ability to learn word meanings across multiple scenes consi...
A child learning language must determine the correct mappings between spoken words and their referen...
Cross-situational learning is a mechanism for learning the meaning of words across multiple exposure...
Cross-situational word learning, like any statistical learning problem, involves tracking the reg-ul...