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Factors Influencing Undergraduate Students' Online Learning Outcomes: A Structural Equation Modeling
Melissa Ng Lee Yen Abdullah; Tan Saw Fen; Mohd Ali Samsudin; Sim Tze Ying; Fung Chorng Yuan – SAGE Open, 2024
Online learning is on the rise, and it is becoming an important mode of learning in higher education. However, there are limited models that explain the link between learners' characteristics, learning processes, and outcomes in an online learning environment. This study aims to examine the influence of online self-regulation on the experiences…
Descriptors: Undergraduate Students, Electronic Learning, Outcomes of Education, Higher Education
Li, Aixia; Islam, A. Y. M. Atiquil; Gu, Xiaoqing – SAGE Open, 2021
This study extended the Expectancy Confirmation model (ECM) to examine the factors that influence online learning stickiness. The structural equation modeling was used to reveal the relationships among the factors through a survey of 395 online consumers. The findings indicate that learning stickiness was significantly impacted by switching cost…
Descriptors: Undergraduate Students, Learner Engagement, Electronic Learning, Online Courses