Development of an integrated blended learning model and its performance prediction on students’ learning using Bayesian network

With the spread of the COVID-19 pandemic, the importance of online learning has grown up worldwide and many higher education institutions used this mode of learning to save the timings of students. Just Online learning does not fulfill all the learning requirements of undergraduate students, therefo...

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Veröffentlicht in:Journal of intelligent & fuzzy systems 2022, Vol.43 (2), p.2015-2023
Hauptverfasser: Lakho, Shamshad, Jalbani, Akhtar Hussain, Memon, Imran Ali, Soomro, Saima Siraj, Chandio, Asghar Ali
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container_end_page 2023
container_issue 2
container_start_page 2015
container_title Journal of intelligent & fuzzy systems
container_volume 43
creator Lakho, Shamshad
Jalbani, Akhtar Hussain
Memon, Imran Ali
Soomro, Saima Siraj
Chandio, Asghar Ali
description With the spread of the COVID-19 pandemic, the importance of online learning has grown up worldwide and many higher education institutions used this mode of learning to save the timings of students. Just Online learning does not fulfill all the learning requirements of undergraduate students, therefore, there is a need for the blended learning (BL) method to be adopted in higher educational institutes for the enhancement of students’ learning outcomes. This research paper focuses on the development of an integrated blended learning model and the performance of the model on students’ learning has been predicted using a Bayesian network (BN) classifier. The proposed model is based on the medium impact blend of the Rotation model and the Enriched Virtual Model and applied to undergraduate computing students. The Data Structures and Algorithms course is targeted for the prediction of students’ performance. The findings of the proposed Integrated BL model show that when students properly attend the classroom lectures followed by their associated lab practical in the Rotation Model and follow the online learning activities in the Enriched Virtual Model properly, then their learning outcomes may be increased as predicted using BN method. The proposed model also reports an overall accuracy of 88.5% on the collected data.
doi_str_mv 10.3233/JIFS-219301
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subjects Algorithms
Bayesian analysis
Blended learning
COVID-19
Data collection
Data structures
Distance learning
Educational objectives
Higher education institutions
Machine learning
Performance prediction
Rotation
Scientific papers
Students
Undergraduate study
title Development of an integrated blended learning model and its performance prediction on students’ learning using Bayesian network
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