A thorough evaluation of the Language Environment Analysis (LENA) system.

Published

Journal Article

In the previous decade, dozens of studies involving thousands of children across several research disciplines have made use of a combined daylong audio-recorder and automated algorithmic analysis called the LENAⓇ system, which aims to assess children's language environment. While the system's prevalence in the language acquisition domain is steadily growing, there are only scattered validation efforts on only some of its key characteristics. Here, we assess the LENAⓇ system's accuracy across all of its key measures: speaker classification, Child Vocalization Counts (CVC), Conversational Turn Counts (CTC), and Adult Word Counts (AWC). Our assessment is based on manual annotation of clips that have been randomly or periodically sampled out of daylong recordings, collected from (a) populations similar to the system's original training data (North American English-learning children aged 3-36 months), (b) children learning another dialect of English (UK), and (c) slightly older children growing up in a different linguistic and socio-cultural setting (Tsimane' learners in rural Bolivia). We find reasonably high accuracy in some measures (AWC, CVC), with more problematic levels of performance in others (CTC, precision of male adults and other children). Statistical analyses do not support the view that performance is worse for children who are dissimilar from the LENAⓇ original training set. Whether LENAⓇ results are accurate enough for a given research, educational, or clinical application depends largely on the specifics at hand. We therefore conclude with a set of recommendations to help researchers make this determination for their goals.

Full Text

Duke Authors

Cited Authors

  • Cristia, A; Lavechin, M; Scaff, C; Soderstrom, M; Rowland, C; Räsänen, O; Bunce, J; Bergelson, E

Published Date

  • July 29, 2020

Published In

PubMed ID

  • 32728916

Pubmed Central ID

  • 32728916

Electronic International Standard Serial Number (EISSN)

  • 1554-3528

International Standard Serial Number (ISSN)

  • 1554-351X

Digital Object Identifier (DOI)

  • 10.3758/s13428-020-01393-5

Language

  • eng