The ability to discover groupings in continuous stimuli on the basis of distributional information is present across species and across perceptual modalities. We investigate the nature of the computations underlying this ability using statistical word segmentation experiments in which we vary the length of sentences, the amount of exposure, and the number of words in the languages being learned. Although the results are intuitive from the perspective of a language learner (longer sentences, less training, and a larger language all make learning more difficult), standard computational proposals fail to capture several of these results. We describe how probabilistic models of segmentation can be modified to take into account some notion of me...
Humans, even from infancy, are capable of unsupervised (“sta- tistical”) learning of linguistic info...
One of the challenges that infants have to solve when learn- ing their native language is to identif...
We present the Retention and Recognition model (R&R), a probabilistic exemplar model that accounts f...
Studies of computational models of language acquisition depend to a large part on the input availabl...
International audience: There is large evidence that infants are able to exploit statistical cues to...
Lexical dependencies abound in natural language: words tend to follow particular words or word categ...
Recovering discrete words from continuous speech is one of the first challenges facing language lear...
Abstract In studies of human cognition, Bayesian models are increasingly popular tools for understan...
Theories of language acquisition and perceptual learning increasingly rely on statistical learning m...
© The Author(s) 2011. This article is published with open access at Springerlink.com Abstract In rec...
International audienceIn language acquisition research, the prevailing position is that listeners ex...
From a cognitive point of view, words can be recognized based on learned data which can be obtained ...
This study investigates the joint influences of three factors on the discovery of new word-like unit...
Recovering discrete words from continuous speech is one of the first challenges facing language lear...
This paper presents an unsupervised and incremental model of learning segmentation that combines mul...
Humans, even from infancy, are capable of unsupervised (“sta- tistical”) learning of linguistic info...
One of the challenges that infants have to solve when learn- ing their native language is to identif...
We present the Retention and Recognition model (R&R), a probabilistic exemplar model that accounts f...
Studies of computational models of language acquisition depend to a large part on the input availabl...
International audience: There is large evidence that infants are able to exploit statistical cues to...
Lexical dependencies abound in natural language: words tend to follow particular words or word categ...
Recovering discrete words from continuous speech is one of the first challenges facing language lear...
Abstract In studies of human cognition, Bayesian models are increasingly popular tools for understan...
Theories of language acquisition and perceptual learning increasingly rely on statistical learning m...
© The Author(s) 2011. This article is published with open access at Springerlink.com Abstract In rec...
International audienceIn language acquisition research, the prevailing position is that listeners ex...
From a cognitive point of view, words can be recognized based on learned data which can be obtained ...
This study investigates the joint influences of three factors on the discovery of new word-like unit...
Recovering discrete words from continuous speech is one of the first challenges facing language lear...
This paper presents an unsupervised and incremental model of learning segmentation that combines mul...
Humans, even from infancy, are capable of unsupervised (“sta- tistical”) learning of linguistic info...
One of the challenges that infants have to solve when learn- ing their native language is to identif...
We present the Retention and Recognition model (R&R), a probabilistic exemplar model that accounts f...