Educational Content Linking for Enhancing Learning Need Remediation in MOOCs
Shang-Wen Li

TL;DR
This paper proposes a framework for linking educational content in MOOCs to improve navigation and learning outcomes, supported by experiments with manual and machine learning-generated links showing positive effects.
Contribution
It introduces an educational content linking framework and demonstrates its effectiveness through both manual and automated linking methods in MOOC environments.
Findings
Manual linking improves content search efficiency and concept retention.
Automated linking via machine learning still enhances learning, though to a lesser extent.
The framework aids learners in navigating and understanding course materials better.
Abstract
Since its introduction in 2011, there have been over 4000 MOOCs on various subjects on the Web, serving over 35 million learners. MOOCs have shown the ability to democratize knowledge dissemination and bring the best education in the world to every learner. However, the disparate distances between participants, the size of the learner population, and the heterogeneity of the learners' backgrounds make it extremely difficult for instructors to interact with the learners in a timely manner, which adversely affects learning experience. To address the challenges, in this thesis, we propose a framework: educational content linking. By linking and organizing pieces of learning content scattered in various course materials into an easily accessible structure, we hypothesize that this framework can provide learners guidance and improve content navigation. Since most instruction and knowledge…
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Taxonomy
TopicsOnline Learning and Analytics · Video Analysis and Summarization · Image Retrieval and Classification Techniques
