Leveraging interest-driven embodied practices to build quantitative literacies: A case study using motion and audio capture from dance

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Bibliographic Details
Published in:Educational technology research and development. - Springer US, 1989. - 69(2020), 4 vom: 14. Juli, Seite 2013-2036
Main Author: Bergner, Yoav (Author)
Other Authors: Mund, Shiri (Author) Chen, Ofer (Author) Payne, Willie (Author)
Format: electronic Article
Language:English
Published: 2020
ISSN:1556-6501
External Sources:lizenzpflichtig
Description
Summary:Abstract We report on an exploratory effort to design an interest-based learning experience for high school (step) dancers to engage with concepts in mathematics and data science. We hypothesized that generating and analyzing data from their own dance movement, through motion and audio capture, would (a) enable learners to form analogies between off-line embodied experiences and new abstract concepts and (b) support motivation to learn due to perceived relevance and usefulness of data science to dance practice. Based on initial interviews to understand the specific needs and interests of the steppers, we developed some early prototypes for visual and acoustic analysis, concentrating on pose precision, tempo, and spectral characteristics (timbre) for. Teacher and student reactions to the tools demonstrated support for our hypotheses that off-line embodied cognition would help with new knowledge acquisition and that the perceived usefulness of data science would motivate learning. Several promising future directions remain to develop an interest-based and embodied data science curriculum.
Item Description:© Association for Educational Communications and Technology 2020
DOI:10.1007/s11423-020-09804-2