A two-staged SEM: artificial neural network approach for understanding and predicting the factors of students’ satisfaction with emergency remote teaching

Anupma Sangwan, Anurag Sangwan, Anju Sangwan, Poonam Punia
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Abstract

This study seeks to address knowledge gaps regarding the role of self-regulated learning as a mediator in the relationship between interactions, internet self-efficacy, and student satisfaction. We conducted a survey of 1590 students from north Indian universities about their level of satisfaction, self-regulated learning, internet self-efficacy, and different interactions (learner-learner interaction, learner-content interaction, and learner-instructor interaction) during emergency remote teaching. By employing a two-stage SEM-ANN approach, this study contributes to methodological advancements and provides a comprehensive analysis of complex relationships. According to the findings, the identified factors are significant predictors of students’ satisfaction with online education in synchronous settings. Our research also shows that self-regulated learning fully mediates the effect of internet self-efficacy on student satisfaction during emergency remote teaching. This suggests that internet self-efficacy alone may not guarantee student satisfaction unless accompanied by self-regulated learning skills.

Abstract Image

了解和预测学生对应急远程教学满意度因素的两阶段 SEM:人工神经网络方法
本研究旨在填补有关自我调节学习在互动、网络自我效能感和学生满意度之间的中介作用的知识空白。我们对来自北印度大学的 1590 名学生进行了一项调查,内容涉及他们在紧急远程教学过程中的满意度、自我调节学习、网络自我效能以及不同的互动(学习者-学习者互动、学习者-内容互动和学习者-教师互动)。通过采用两阶段 SEM-ANN 方法,本研究为方法论的进步做出了贡献,并提供了对复杂关系的全面分析。研究结果表明,所确定的因素是学生对同步环境下在线教育满意度的重要预测因素。我们的研究还表明,在紧急远程教学中,自我调节学习完全调节了网络自我效能对学生满意度的影响。这表明,除非同时具备自我调节学习技能,否则仅凭网络自我效能感可能无法保证学生的满意度。
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