Towards Portability of Models for Predicting Students’ Final Performance in University Courses Starting from Moodle Logs

Author:

López-Zambrano Javier,Lara Juan A.ORCID,Romero Cristóbal

Abstract

Predicting students’ academic performance is one of the older challenges faced by the educational scientific community. However, most of the research carried out in this area has focused on obtaining the best accuracy models for their specific single courses and only a few works have tried to discover under which circumstances a prediction model built on a source course can be used in other different but similar courses. Our motivation in this work is to study the portability of models obtained directly from Moodle logs of 24 university courses. The proposed method intends to check if grouping similar courses by the degree or the similar level of usage of activities provided by the Moodle logs, and if the use of numerical or categorical attributes affect in the portability of the prediction models. We have carried out two experiments by executing the well-known classification algorithm over all the datasets of the courses in order to obtain decision tree models and to test their portability to the other courses by comparing the obtained accuracy and loss of accuracy evaluation measures. The results obtained show that it is only feasible to directly transfer predictive models or apply them to different courses with an acceptable accuracy and without losing portability under some circumstances.

Publisher

MDPI AG

Subject

Fluid Flow and Transfer Processes,Computer Science Applications,Process Chemistry and Technology,General Engineering,Instrumentation,General Materials Science

Reference34 articles.

1. Moodle: Using learning communities to create an open source course management system;Dougiamas,2003

2. Data mining in course management systems: Moodle case study and tutorial

3. 2020. Educational Data mining and Learning Analytics: An updated survey;Romero,2011

4. Data mining in education

5. Educational Data Mining: A Review of the State of the Art

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