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On using learning analytics to personalise learning in virtual learning environments

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Date
2017
Author
Mamčenko, Jelena
Kurilov, Jevgenij
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Abstract
The paper aims to analyse application of learning analytics (LA) to support learning personalisation in virtual learning environments, namely Moodle. In the paper, first of all, literature review was performed on LA methods and techniques used to personalise students’ e-learning activities. Literature review has revealed that LA are known as the measurement, collection, analysis, and reporting of data about learners and their contexts to understand and optimise learning and environments in which it occurs. In the paper, an original methodology to personalise learning is presented. Second, existing Moodle-based learning activities and tools were interlinked with students’ learning styles according to Felder-Silverman learning styles model using expert evaluation method. Third, a group of students was analysed to identify their individual learner profiles, and probabilistic suitability indexes were calculated for each analysed student and each Moodle-based learning activity to identify which learning activities or tools are the most suitable for particular student. The higher is suitability index the better learning activity or tool fits particular student’s needs. Fourth, using appropriate LA methods and techniques, we could analyse what particular learning activities or tools were practically used by these students in Moodle, and to what extent. Fifth, the data on practical use of Moodle-based learning activities or tools should be compared with students’ suitability indexes. In the case of any noticeable discrepancies, students’ profiles and accompanied suitability indexes should be identified more precisely, and students’ personal leaning paths in Moodle should be corrected according to new identified data. Thus, using LA, we could noticeably enhance students’ learning quality and effectiveness.
Issue date (year)
2017
URI
https://etalpykla.vilniustech.lt/handle/123456789/119034
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