Feedback Collection Tool for Online Classes
DOI:
https://doi.org/10.63345/Keywords:
Feedback, Online Classes, E-learning, Learning Analytics, Student Engagement, Teaching EffectivenessAbstract
The unprecedented rise of online education has underscored the necessity of structured and continuous feedback mechanisms to maintain instructional quality and ensure meaningful student engagement. Traditional classroom feedback methods—such as informal teacher-student interactions or end-of-course surveys—often fail to capture the nuances of digital learning environments where immediacy, inclusivity, and adaptability are paramount. This study develops and evaluates a Feedback Collection Tool for Online Classes that leverages real-time analytics, multi-modal response formats, and user-centered design principles to enhance both teaching effectiveness and learner satisfaction. Drawing upon theoretical insights from pedagogy, e-learning, and learning analytics, the research integrates design-based methodology with empirical testing across diverse academic cohorts
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