计算机科学
个性化学习
图形
人工智能
机器学习
多任务学习
主动学习
加权
合作学习
开放式学习
机器人学习
理论计算机科学
数学教育
教学方法
任务(项目管理)
数学
机器人
放射科
医学
经济
移动机器人
管理
作者
Xiaoming Zhang,Shan Liu,Huiyong Wang
标识
DOI:10.1142/s0218194022500681
摘要
In e-learning, the increasing number of learning resources makes it difficult for learners to find suitable learning resources. In addition, learners may have different preferences and cognitive abilities for learning resources, where differences in learners’ cognitive abilities will lead to different importance of learning resources. Therefore, recommending personalized learning paths for learners has become a research hotspot. Considering learners’ preferences and the importance of learning resources, this paper proposes a learning path recommendation algorithm based on knowledge graph. We construct a multi-dimensional courses knowledge graph in computer field (MCCKG), and then propose a method based on graph convolutional network for modeling high-order correlations on the knowledge graph to more accurately capture learners’ preferences. Furthermore, the importance of learning resources is calculated by using the characteristics of learning resources in the MCCKG and learners’ characteristics. Finally, by weighting the two factors of learners’ preferences and the importance of learning resources, we recommend the optimal learning path for learners. Our method is evaluated from the aspects of learner’s satisfaction, algorithm effectiveness, etc. The experimental results show that the method proposed in this paper can recommend a personalized learning path to satisfy the needs of learners, thus reducing the workload of manually planning learning paths.
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