Literature DB >> 33497512

Vocal development in a large-scale crosslinguistic corpus.

Margaret Cychosz1, Alejandrina Cristia2, Elika Bergelson3, Marisa Casillas4, Gladys Baudet3, Anne S Warlaumont5, Camila Scaff2,6, Lisa Yankowitz7, Amanda Seidl8.   

Abstract

This study evaluates whether early vocalizations develop in similar ways in children across diverse cultural contexts. We analyze data from daylong audio recordings of 49 children (1-36 months) from five different language/cultural backgrounds. Citizen scientists annotated these recordings to determine if child vocalizations contained canonical transitions or not (e.g., "ba" vs. "ee"). Results revealed that the proportion of clips reported to contain canonical transitions increased with age. Furthermore, this proportion exceeded 0.15 by around 7 months, replicating and extending previous findings on canonical vocalization development but using data from the natural environments of a culturally and linguistically diverse sample. This work explores how crowdsourcing can be used to annotate corpora, helping establish developmental milestones relevant to multiple languages and cultures. Lower inter-annotator reliability on the crowdsourcing platform, relative to more traditional in-lab expert annotators, means that a larger number of unique annotators and/or annotations are required, and that crowdsourcing may not be a suitable method for more fine-grained annotation decisions. Audio clips used for this project are compiled into a large-scale infant vocalization corpus that is available for other researchers to use in future work.
© 2021 John Wiley & Sons Ltd.

Entities:  

Keywords:  babbling; crosslinguistic; crowdsourcing; infants; naturalistic recording; speech; vocal development

Year:  2021        PMID: 33497512     DOI: 10.1111/desc.13090

Source DB:  PubMed          Journal:  Dev Sci        ISSN: 1363-755X


  2 in total

1.  Infants later diagnosed with autism have lower canonical babbling ratios in the first year of life.

Authors:  L D Yankowitz; V Petrulla; S Plate; B Tunc; W Guthrie; S S Meera; K Tena; J Pandey; M R Swanson; J R Pruett; M Cola; A Russell; N Marrus; H C Hazlett; K Botteron; J N Constantino; S R Dager; A Estes; L Zwaigenbaum; J Piven; R T Schultz; J Parish-Morris
Journal:  Mol Autism       Date:  2022-06-27       Impact factor: 6.476

2.  Describing Vocalizations in Young Children: A Big Data Approach Through Citizen Science Annotation.

Authors:  Chiara Semenzin; Lisa Hamrick; Amanda Seidl; Bridgette L Kelleher; Alejandrina Cristia
Journal:  J Speech Lang Hear Res       Date:  2021-06-07       Impact factor: 2.297

  2 in total

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