CLUE: Contextualised Unified Explainable Learning of User Engagement in Video Lectures
Sujit Roy, Gnaneswara Rao Gorle, Vishal Gaur, Haider Raza, Shoaib, Jameel

TL;DR
CLUE is a unified, explainable model that predicts user engagement in educational videos by leveraging multi-modal features and provides constructive feedback to content creators.
Contribution
The paper introduces CLUE, a novel ensemble-based, unified framework that models multiple features for predicting engagement and offers explainable feedback in online educational videos.
Findings
Effective multi-modal feature integration improves engagement prediction.
The model provides explainable feedback to enhance video content quality.
Transfer learning enhances model adaptability across different videos.
Abstract
Predicting contextualised engagement in videos is a long-standing problem that has been popularly attempted by exploiting the number of views or the associated likes using different computational methods. The recent decade has seen a boom in online learning resources, and during the pandemic, there has been an exponential rise of online teaching videos without much quality control. The quality of the content could be improved if the creators could get constructive feedback on their content. Employing an army of domain expert volunteers to provide feedback on the videos might not scale. As a result, there has been a steep rise in developing computational methods to predict a user engagement score that is indicative of some form of possible user engagement, i.e., to what level a user would tend to engage with the content. A drawback in current methods is that they model various features…
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Taxonomy
TopicsOnline Learning and Analytics · Video Analysis and Summarization · Image and Video Quality Assessment
