Conceptual network of teachers' talk : Automatic analysis and quantitative measures

Abstract
Educational field can take advantage of the improvements of Automatic Speech Recognition (ASR), since we can apply ASR algorithms in non-ideal conditions such as real classrooms. In the context of QuIP project, we used ASR systems to translate audio from teachers’ talk into text to study conceptual networks based on what the teacher says during his/her lecture, particularly the key concepts mentioned and their temporal co-occurrence. In the present study, quantitative metrics are provided, such as centrality measures and PageRank, which can be used to analyse the conceptual networks in a broaden way. With a case-study design, two teachers’ talk are described quantitatively and qualitatively using the metrics, suggesting that PageRank could be a good metric to find differences in teachers’ talk. Finally, we discuss about the potential of this kind of analysis.
Main Authors
Format
Articles Research article
Published
2020
Series
Subjects
Publication in research information system
Publisher
The Finnish Matehematics and Science Education Research Association
Original source
https://journal.fi/fmsera/article/view/79630
The permanent address of the publication
https://urn.fi/URN:NBN:fi:jyu-202005053042Use this for linking
Review status
Peer reviewed
ISSN
2490-158X
Language
English
Published in
FMSERA Journal
Citation
  • Caballero, D., Pikkarainen, T., Araya, R., Viiri, J., & Espinoza, C. (2020). Conceptual network of teachers' talk : Automatic analysis and quantitative measures. FMSERA Journal, 3(1), 18-31. https://journal.fi/fmsera/article/view/79630
License
CC BY-SA 4.0Open Access
Copyright© 2020 the Author(s)

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