University Students' home-based learning engagement in the live-online course: the perspective of educational ecology

Author(s):  
Jing Li
SAGE Open ◽  
2020 ◽  
Vol 10 (1) ◽  
pp. 215824401990125
Author(s):  
Fatima Khalid ◽  
Sultan Sikandar Mirza ◽  
Chai Bin-Feng ◽  
Nighat Saeed

The objective of this study is to determine the relationship between learning engagement, academic motivation, and academic performance in undergraduate students and the importance of religion in determining the academic motivation and academic performance. A sample of 840 university students from different regions (provinces) of Pakistan is pooled through a convenient sampling technique. Engagement Versus Disaffection (EVD) and the Academic Motivation Scale (AMS) are administered for learning engagement and academic motivation, respectively. After applying analysis of variance (ANOVA), Pearson product-moment correlation analysis, and hierarchical regression, the findings of this research reveal that learning engagement and academic motivation have significant relationships with academic performance. Furthermore, it is also found that, in religiosity, academic motivation for both Muslims and non-Muslims do not induce learning engagement, but Muslim students have shown better academic performance than non-Muslims. This study can be beneficial for policymakers and practitioners to analyze the determinants of learning engagements and improve the academic performance of university students.


2022 ◽  
Vol 14 (2) ◽  
pp. 714
Author(s):  
Mahdi Mohammed Alamri

Students’ learning environments are significantly influenced by massive open online courses (MOOCs). To better understand how students could implement learning technology for educational purposes, this study creates a structural equation model and tests confirmatory factor analysis. Therefore, the aim of this study was to develop a model through investigating observability (OB), complexity (CO), trialability (TR), and perceived usefulness (PU) with perceived ease-of-use (PEU) of MOOCs adoption by university students to measure their academic self-efficacy (ASE), learning engagement (LE), and learning persistence (LP). As a result, the study used an expanded variant of the innovation diffusion theory (IDT) and the technology acceptance model (TAM) as the research model. Structural Equation Modeling (SEM) with Smart-PLS was applied to quantitative data collection and analysis of 540 university students as respondents. Student responses were grouped into nine factors and evaluated to decide the students’ ASE, LE, and LP. The findings revealed a clear correlation between OB, CO, and TR, all of which were important predictors of PU and PEU. Students’ ASE, LE, and LP were affected by PEU and PU. This study’s established model was effective in explaining students’ ASE, LE, and LP on MOOC adoption. These findings suggest implications for designing and developing effective instructional and learning strategies in MOOCs in terms of learners’ perceptions of themselves, their instructors, and learning support systems.


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