A Probabilistic Approach to Modeling Students’ Interactions in a Learning Management System for Facilitating Distance Learning
Abstract
:1. Introduction
- Finding out whether the activity increases in the periods close to the deadlines of the written assignments or close to the dates of the final exams;
- Investigating whether there is a timely response to the posts in the forum;
- Associating the general forum activity of students with their academic progress.
2. Related Work
3. Methodology
3.1. Description of the Data Set
3.2. Theoretical Background
4. Experimental Results
- The deadline of the first written assignment, 2 December 2020 (the deadline expires at 23:59);
- The deadline of the second written assignment, 20 January 2021;
- The deadline of the third written assignment, 24 February 2021;
- The deadline of the fourth written assignment, 7 April 2021;
- The deadline of the fifth written assignment, 12 May 2021;
- The date of the first exam, 6 June 2021;
- The date of the resit exam, 30 June 2021.
- The fifth, third, and the day before the deadlines of each assignment;
- The dates of the deadlines of each assignment;
- The dates of the two exams.
4.1. Activity during the Days before the Deadlines of Each Assignment
4.1.1. Activity during the Deadlines of Each Assignment
4.1.2. Relationship of Students’ Activity with Their Academic Progress
4.1.3. Elapsed Time between Posts
5. Discussion and Pedagogical Reflections
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Karapiperis, D.; Tzafilkou, K.; Tsoni, R.; Feretzakis, G.; Verykios, V.S. A Probabilistic Approach to Modeling Students’ Interactions in a Learning Management System for Facilitating Distance Learning. Information 2023, 14, 440. https://doi.org/10.3390/info14080440
Karapiperis D, Tzafilkou K, Tsoni R, Feretzakis G, Verykios VS. A Probabilistic Approach to Modeling Students’ Interactions in a Learning Management System for Facilitating Distance Learning. Information. 2023; 14(8):440. https://doi.org/10.3390/info14080440
Chicago/Turabian StyleKarapiperis, Dimitrios, Katerina Tzafilkou, Rozita Tsoni, Georgios Feretzakis, and Vassilios S. Verykios. 2023. "A Probabilistic Approach to Modeling Students’ Interactions in a Learning Management System for Facilitating Distance Learning" Information 14, no. 8: 440. https://doi.org/10.3390/info14080440
APA StyleKarapiperis, D., Tzafilkou, K., Tsoni, R., Feretzakis, G., & Verykios, V. S. (2023). A Probabilistic Approach to Modeling Students’ Interactions in a Learning Management System for Facilitating Distance Learning. Information, 14(8), 440. https://doi.org/10.3390/info14080440