Learning analytics to predict student achievement in online learning during Covid-19 mitigation

Dwi, Sulisworo and Prima, Suci Rohmadheny and Nur, Fatimah and Dikdik Baehaqi Arif, DBA and Fuad, Saifuddin Learning analytics to predict student achievement in online learning during Covid-19 mitigation. [Artikel Dosen]

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Abstract

This study aims to make predictions of online learning during the COVID-19 mitigation period by using Analytic Learning Techniques. Learning is done using Moodle as the learning management system. The primary statistical technique used in this study is cluster analysis, which groups students in three different characteristics based on the activity components. The results of the study indicate that the activity components that support social presence are the determining components in predicting learning success. Another consequence is that the three clusters formed can be identified as high, medium, and low groups in progress with the identifier of activity components. Chatting, Forum, Choice, and Assignment are the practical activity components in this finding. The result of this study is too early to state that the e-learning is successful during COVID-19 mitigation. More information is still needed for further analysis.

Item Type: Artikel Dosen
Subjects: L Education > L Education (General)
Depositing User: Prof. Dr Dwi Sulisworo
Date Deposited: 27 May 2020 09:26
Last Modified: 27 May 2020 09:26
URI: http://eprints.uad.ac.id/id/eprint/18917

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