Student Performance and Engagement Prediction in eLearning datasets

Citation Author(s):
Abdallah
Moubayed
University of Western Ontario
MohammadNoor
Injadat
University of Western Ontario
Abdallah
Shami
University of Western Ontario
Ali Bou
Nassif
University of Sharjah
Hanan
Lutfiyya
University of Western Ontario
Submitted by:
Abdallah Moubayed
Last updated:
Sun, 12/20/2020 - 14:39
DOI:
10.21227/4xkr-0f88
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Abstract 

Description:

This repository contains the datasets used as part of the OC2 lab's work on Student Performance prediction and student engagement prediction in eLearning environments using machine learning methods.

Instructions: 

This repository contains 4 folders:

Student Performance Prediction - Binary Scenario: Contains the dataset and description used as part of our work to predict student performance using binary ML models.
Student Performance Prediction - Multiclass Case: Contains the dataset and description used as part of our work to predict student performance using multiclass ML models.
Student Engagement Level Prediction - Binary Case: Contains the dataset and description used as part of our work to predict student engagement using binary ML models.
Student Engagement Level Prediction - Multiclass Case: Contains the dataset and description used as part of our work to predict student engagement using multiclass ML models.

The data can be accessed and downloaded at the following link: https://github.com/Western-OC2-Lab/Student-Performance-and-Engagement-Pr...

Please cite the following works when using these datasets:
- M. Injadat, A. Moubayed, A. B. Nassif, and A. Shami, “Systematic ensemble model selection approach for educational data mining,” Knowledge-based Systems, vol. 200, p. 105992, Jul. 2020.
- M. Injadat, A. Moubayed, A. B. Nassif, and A. Shami, “Multi-split optimized bagging ensemble model selection for multiclass educational data mining,” Applied Intelligence, 50, pp. 4506–4528, Jul. 2020.
- A. Moubayed, M. Injadat, A. B. Nassif, H. Lutfiyya and A. Shami, "E-Learning: Challenges and Research Opportunities Using Machine Learning & Data Analytics," in IEEE Access, vol. 6, pp. 39117-39138, 2018.
- A. Moubayed, M. Injadat, A. Shami, and H. Lutfiyya, “Student Engagement Level in an e-Learning Environment: Clustering Using K-means”, American Journal of Distance Education, 34:2, pp. 137-156, Mar. 2020
- A. Moubayed, M. Injadat, A. Shami, and H. Lutfiyya, "Relationship Between Student Engagement and Performance in E-Learning Environment Using Association Rules," 2018 IEEE World Engineering Education Conference (EDUNINE), Buenos Aires, 2018, pp. 1-6.

Contact Information:

Feel free to contact us for any questions or collaboration opportunities.

Dr. MohammadNoor Injadat: minjadat@uwo.ca

Dr. Abdallah Moubayed: amoubaye@uwo.ca

Comments

thank you

Submitted by Animesh Joshi on Sun, 03/07/2021 - 01:39

Thanks 

Submitted by Aditya Koul on Sat, 03/16/2024 - 12:07

Dataset Files

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