Journal of Jilin University (Information Science Edition) ›› 2026, Vol. 44 ›› Issue (2): 383-391.
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YUAN Man, SONG Jie, YUAN Jingshu
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Abstract:
The learner model is an important foundation for effectively recommending personalized learning resources. Although it has widely integrated multiple dimensions of learner characteristics, it has not incorporated online learning self-efficacy, a key indicator for measuring learners‘ psychology and learning motivation.Therefore, self-efficacy of online learning is introduced and a comprehensive evaluation method that combines static and dynamic approaches is proposed, using scales and a series of designed behavioral indicators to achieve a comprehensive assessment of online learning self-efficacy. Diversified features such as learning interests,current levels, and learning styles is integrated to construct a multi-dimensional learner model and an improved neural collaborative filtering method that incorporates the learner model is designed. Experimental results show that the multi-dimensional learner model has significantly better performance in recommendation methods than the comparison methods that do not consider this factor, providing a new perspective for the construction of learner models and enabling more effective personalized and precise learning resource recommendations for learners.
Key words: online learning self-efficacy, learner model, recommendation of learning resources, neural collaborative filtering
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YUAN Man, SONG Jie, YUAN Jingshu.
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http://xuebao.jlu.edu.cn/xxb/EN/Y2026/V44/I2/383
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