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conference paper

Meta Transfer Learning for Early Success Prediction in MOOCs

Swamy, Vinitra  
•
Marras, Mirko  
•
Käser, Tanja  
May 31, 2022
L@S '22: Proceedings of the Ninth ACM Conference on Learning @ Scale
9th ACM Conference on Learning at Scale

Despite the increasing popularity of massive open online courses (MOOCs), many suffer from high dropout and low success rates. Early prediction of student success for targeted intervention is therefore essential to ensure no student is left behind in a course. There exists a large body of research in success prediction for MOOCs, focusing mainly on training models from scratch for individual courses. This setting is impractical in early success prediction as the performance of a student is only known at the end of the course. In this paper, we aim to create early success prediction models that can be transferred between MOOCs from different domains and topics. To do so, we present three novel strategies for transfer: 1) pre-training a model on a large set of diverse courses, 2) leveraging the pre-trained model by including meta information about courses, and 3) fine-tuning the model on previous course iterations. Our experiments on 26 MOOCs with over 145,000 combined enrollments and millions of interactions show that models combining interaction data and course information have comparable or better performance than models which have access to previous iterations of the course. With these models, we aim to effectively enable educators to warm-start their predictions for new and ongoing courses.

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Type
conference paper
DOI
10.1145/3491140.3528273
ArXiv ID

2205.01064v1

Author(s)
Swamy, Vinitra  
Marras, Mirko  
Käser, Tanja  
Date Issued

2022-05-31

Publisher

ACM

Published in
L@S '22: Proceedings of the Ninth ACM Conference on Learning @ Scale
Total of pages

12

Subjects

Transfer Learning

•

Meta Learning

•

Student Success Prediction

Note

Accepted at the 2022 ACM Conference on Learning at Scale (L@S 2022).

URL

Code

https://github.com/epfl-ml4ed/meta-transfer-learning
Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
ML4ED  
AVP-E-LEARN  
Event nameEvent placeEvent date
9th ACM Conference on Learning at Scale

New York, USA

June 1-3, 2022

Available on Infoscience
May 3, 2022
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/187558
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