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research article

Temporal analysis of multimodal data to predict collaborative learning outcomes

Olsen, Jennifer K.
•
Sharma, Kshitij  
•
Rummel, Nikol
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July 20, 2020
British Journal Of Educational Technology

The analysis of multiple data streams is a long-standing practice within educational research. Both multimodal data analysis and temporal analysis have been applied successfully, but in the area of collaborative learning, very few studies have investigated specific advantages of multiple modalities versus a single modality, especially combined with temporal analysis. In this paper, we investigate how both the use of multimodal data and moving from averages and counts to temporal aspects in a collaborative setting provides a better prediction of learning gains. To address these questions, we analyze multimodal data collected from 25 9-11-year-old dyads using a fractions intelligent tutoring system. Assessing the relation of dual gaze, tutor log, audio and dialog data to students' learning gains, we find that a combination of modalities, especially those at a smaller time scale, such as gaze and audio, provides a more accurate prediction of learning gains than models with a single modality. Our work contributes to the understanding of how analyzing multimodal data in temporal manner provides additional information around the collaborative learning process.

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Type
research article
DOI
10.1111/bjet.12982
Web of Science ID

WOS:000550388500001

Author(s)
Olsen, Jennifer K.
Sharma, Kshitij  
Rummel, Nikol
Aleven, Vincent
Date Issued

2020-07-20

Publisher

WILEY

Published in
British Journal Of Educational Technology
Volume

51

Issue

5

Start page

1527

End page

1547

Subjects

Education & Educational Research

•

analytics

•

patterns

•

time

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
CHILI  
Available on Infoscience
August 5, 2020
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/170609
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