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Review of Deep Learning-Based Personalized Learning Recommendation

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Published:03 May 2020Publication History

ABSTRACT

Online learning has become a significant way for learners to acquire knowledge, which enables anybody to learn anywhere and anytime. However, how to choose appropriate content for learning is an interesting issue, especially when one faces massive online learning resources. With this regard, deep learning-based personalized learning resources recommendation has become an effective approach to handle this problem. In this paper, deep learning-based personalized learning recommendation technology in the field of education is thoroughly analyzed, and some limitations of recent studies as well as future works, then, are reported and predicted respectively. The study would provide suggestions for future research on deep learning-based personalized learning recommendations.

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    • Published in

      cover image ACM Other conferences
      IC4E '20: Proceedings of the 2020 11th International Conference on E-Education, E-Business, E-Management, and E-Learning
      January 2020
      441 pages
      ISBN:9781450372947
      DOI:10.1145/3377571

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      Publication History

      • Published: 3 May 2020

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