METHODOLOGY FOR ANALYSING LMS DATA TO PREDICT STUDENT DROPOUT RISK IN HIGHER EDUCATION
Dublin Core | PKP Metadata Items | Metadata for this Document | |
1. | Title | Title of document | METHODOLOGY FOR ANALYSING LMS DATA TO PREDICT STUDENT DROPOUT RISK IN HIGHER EDUCATION |
2. | Creator | Author's name, affiliation, country | Linda Luīze Barbare; Institute of Applied Computer Systems, Riga Technical University; Latvia |
2. | Creator | Author's name, affiliation, country | Aleksejs Jurenoks; Institute of Applied Computer Systems, Riga Technical University; Latvia |
2. | Creator | Author's name, affiliation, country | Magone Una Rauba; Institute of Applied Computer Systems, Riga Technical University; Latvia |
2. | Creator | Author's name, affiliation, country | Zane Viskere; Institute of Applied Computer Systems, Riga Technical University; Latvia |
3. | Subject | Discipline(s) | |
3. | Subject | Keyword(s) | learning management system, student dropout, e-learning, education theories |
4. | Description | Abstract | Nowadays, educational institutions use Learning Management Systems (LMS) to support students in the learning process. LMS technical data analysis enables the monitoring of student activities and early identification of those at risk of failing a course. Data gathered during the educational process facilitates the adaptation of learning content to meet each student's individual needs. By leveraging this data, institutions can implement adaptive education, allowing study programs to be structured based on personalized learning pathways, intelligent recommendation systems, and dynamic curriculum adjustments. Additionally, by analyzing student model data, it is possible to assess dropout risks. As a result, research on student attrition rates has gained increased attention. This paper examines the methodology for analyzing Moodle LMS data to adaptively detect factors influencing student dropout risk. The research explores the potential of analyzing log file data generated by Moodle LMS to identify student model parameters and their impact on student success throughout the entire educational process. By utilizing learning patterns and engagement indicators, activity log data from more than seven hundred students at Riga Technical University's Moodle e-learning system was analyzed. The research aimed to identify correlations and relationships between several factors, including the availability of resources for students, the number of graded activities, activity types, views, and other relevant data. By analyzing correlations between fluctuations in students' learning achievements and behavioral patterns in e-learning platforms, the study aims to identify key indicators and metrics for predicting dropout tendencies. The findings suggest that a decline in engagement, the presence of negative patterns, or the absence of consistent learning behaviors serve as reliable indicators of students at risk of dropping out.
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5. | Publisher | Organizing agency, location | |
6. | Contributor | Sponsor(s) | This study was partly supported by Project No. 5.2.1.1.i.0/2/24/I/CFLA/003 –Implementation of consolidation and governance changes at Riga Technical University, LiepU, RTA, LJA, and LJK for advancement towards excellence in higher education, science, and innovation |
7. | Date | (YYYY-MM-DD) | 18.05.2025 |
8. | Type | Status & genre | Peer-reviewed Paper |
8. | Type | Type | |
9. | Format | File format | |
10. | Identifier | Universal Resource Indicator | https://conferences.rta.lv/index.php/ETR/ETR2025/paper/view/7002 |
11. | Source | Journal/conference title; vol., no. (year) | ENVIRONMENT. TECHNOLOGY. RESOURCES; Environment. Technology. Resources. 16th International Scientific and Practical Conference |
12. | Language | English=en | en |
14. | Coverage | Geo-spatial location, chronological period, research sample (gender, age, etc.) | |
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