Construction of a personalised online learning resource recommendation model based on self-adaptation Online publication date: Tue, 12-Sep-2023
by Zhipeng Chang; Kai Liu
International Journal of Knowledge-Based Development (IJKBD), Vol. 13, No. 2/3/4, 2023
Abstract: With the constant advancement of digital technology, the educational paradigm has experienced seismic shifts. Individuals are becoming more comfortable with using network information technology for online learning. This study proposes an adaptive-based personalised online learning resource recommendation system and constructs an adaptive-based generalised matrix factorisation model-long short-term memory (G-LSTM) model. This model combines generalized matrix decomposition with a long short-term memory network, so the fused model can effectively deal with information timing and cold start problems. The results show that in the RN dataset, when K = 10, the hit rate of the G-LSTM model is 80%, and the normalised loss cumulative gain value can reach 0.48. It can be seen that the recommendation model proposed in this study can meet the purpose of recommending online learning resources according to the different needs of users. And it can further promote the development of school education.
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