Repository logo

Infoscience

  • English
  • French
Log In
Logo EPFL, École polytechnique fédérale de Lausanne

Infoscience

  • English
  • French
Log In
  1. Home
  2. Academic and Research Output
  3. Conferences, Workshops, Symposiums, and Seminars
  4. Can Feature Predictive Power Generalize? Benchmarking Early Predictors of Student Success across Flipped and Online Courses
 
conference paper

Can Feature Predictive Power Generalize? Benchmarking Early Predictors of Student Success across Flipped and Online Courses

Marras, Mirko  
•
Tu, Tuan
•
Vignoud, Julien
Show more
Hsiao, I-Han
•
Sahebi, Shaghayegh
Show more
July 2, 2021
Proceedings of the 14th International Conference on Educational Data Mining
14th International Conference on Educational Data Mining (EDM 2021)

Early predictors of student success are becoming a key tool in flipped and online courses to ensure that no student is left behind along course activities. However, with an increased interest in this area, it has become hard to keep track of what the state of the art in early success prediction is. Moreover, prior work on early success prediction based on clickstreams has mostly focused on implementing features and models for a specific online course (eg, a MOOC). It remains therefore under-explored how different features and models enable early predictions, based on the domain, structure, and educational setting of a given course. In this paper, we report the results of a systematic analysis of early success predictors for both flipped and online courses. In the first part, we focus on a specific flipped course. Specifically, we investigate eight feature sets, presented at top-level educational venues over the last few years, and a novel feature set proposed in this paper and tailored to this setting. We benchmark the performance of these feature sets using a RF classifier, and we provide and discuss an ensemble feature set optimized for the target flipped course. In the second part, we extend our analysis to courses with different educational settings (ie, MOOCs), domains, and structure. Our results show that (i) the ensemble of optimal features varies depending on the course setting and structure, and (ii) the predictive performance of the optimal ensemble feature set highly depends on the course activities.

  • Details
  • Metrics
Type
conference paper
Author(s)
Marras, Mirko  
Tu, Tuan
Vignoud, Julien
Käser, Tanja  
Editors
Hsiao, I-Han
•
Sahebi, Shaghayegh
•
Bouchet, François
•
Vie, Jill-Jênn
Date Issued

2021-07-02

Published in
Proceedings of the 14th International Conference on Educational Data Mining
Start page

150

End page

160

URL

Online Proceedings

https://educationaldatamining.org/EDM2021/EDM2021Proceedings.pdf
Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
ML4ED  
AVP-E-LEARN  
Event nameEvent placeEvent date
14th International Conference on Educational Data Mining (EDM 2021)

(Online from) Paris, France

June 29th - July 2nd, 2021

RelationURL/DOI

IsSupplementedBy

https://iris.unica.it/handle/11584/322791?mode=full.1225
Available on Infoscience
March 10, 2022
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/186153
Logo EPFL, École polytechnique fédérale de Lausanne
  • Contact
  • infoscience@epfl.ch

  • Follow us on Facebook
  • Follow us on Instagram
  • Follow us on LinkedIn
  • Follow us on X
  • Follow us on Youtube
AccessibilityLegal noticePrivacy policyCookie settingsEnd User AgreementGet helpFeedback

Infoscience is a service managed and provided by the Library and IT Services of EPFL. © EPFL, tous droits réservés