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Visual statistical learning in infancy: Discrimination of fine-grained regularities depends on early test trials

Authors :
Hermann Bulf
Arnaud Destrebecqz
Emeline Boursain
Julie Bertels
Estibaliz San Anton
Bertels, J
San Anton, E
Boursain, E
Bulf, H
Destrebecqz, A
Publication Year :
2022
Publisher :
John Wiley and Sons Inc, 2022.

Abstract

Infants' ability to detect statistical regularities between visual objects has been demonstrated in previous studies (e.g., Kirkham et al., Cognition, 83, 2002, B35). The extent to which infants extract and learn the actual values of the transitional probabilities (TPs) between these objects nevertheless remains an open question. In three experiments providing identical learning conditions but contrasting different types of sequences at test, we examined 8-month-old infants' ability to discriminate between familiar sequences involving high or low values of TPs, and new sequences that involved null TPs. Results showed that infants discriminate between these three types of sequences, supporting the existence of a statistical learning mechanism by which infants extract fine-grained statistical information from a stream of visual stimuli. Interestingly, the expression of this statistical knowledge varied between experiments and specifically depended on the nature of the first two test trials. We argue that the predictability of this early test arrangement-namely whether the first two test items were either predictable or unexpected based on the habituation phase-determined infants' looking behaviors.

Details

Language :
English
Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....b1d120ce3f1f7787520d5968b487cf9b