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Co‐occurrence statistics as a language‐dependent cue for speech segmentation
Author(s) -
Saksida Amanda,
Langus Alan,
Nespor Marina
Publication year - 2017
Publication title -
developmental science
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 2.801
H-Index - 127
eISSN - 1467-7687
pISSN - 1363-755X
DOI - 10.1111/desc.12390
Subject(s) - speech segmentation , statistical learning , language acquisition , psychology , segmentation , associative learning , natural language processing , associative property , statistical model , computer science , text segmentation , statistical analysis , artificial intelligence , cognitive psychology , statistics , mathematics , mathematics education , pure mathematics
To what extent can language acquisition be explained in terms of different associative learning mechanisms? It has been hypothesized that distributional regularities in spoken languages are strong enough to elicit statistical learning about dependencies among speech units. Distributional regularities could be a useful cue for word learning even without rich language‐specific knowledge. However, it is not clear how strong and reliable the distributional cues are that humans might use to segment speech. We investigate cross‐linguistic viability of different statistical learning strategies by analyzing child‐directed speech corpora from nine languages and by modeling possible statistics‐based speech segmentations. We show that languages vary as to which statistical segmentation strategies are most successful. The variability of the results can be partially explained by systematic differences between languages, such as rhythmical differences. The results confirm previous findings that different statistical learning strategies are successful in different languages and suggest that infants may have to primarily rely on non‐statistical cues when they begin their process of speech segmentation.