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Online mobile learning resource recommendation method based on deep reinforcement learning

Author

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  • Pingyang Li
  • Juan Zhang

Abstract

In order to improve the recommendation effect of learning resources, this paper designs an online mobile learning resource recommendation method based on deep reinforcement learning. Firstly, the similarity between learners and learning resources, and the similarity between learners' search preference results and learning resources are calculated. Secondly, based on the results of similarity calculation, a multi-agent deep reinforcement learning network is designed, which includes a recommendation agent and a classification agent. Finally, according to the learners interest preferences (states) of different learning resources, the online mobile learning resources (execution actions) are recommended to the learners, and the final recommendation scheme is obtained through the recommendation agent. According to the experimental results, the maximum recommendation result hit rate of this method is 95.5%, and the highest average ranking degree is 0.926, indicating that the recommendation effect of this method is better.

Suggested Citation

  • Pingyang Li & Juan Zhang, 2025. "Online mobile learning resource recommendation method based on deep reinforcement learning," International Journal of Innovation and Sustainable Development, Inderscience Enterprises Ltd, vol. 19(1), pages 1-12.
  • Handle: RePEc:ids:ijisde:v:19:y:2025:i:1:p:1-12
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