基于LSTM的mooc个性化学习路径推荐系统

Yi-Hsien Chen, N. Huang, J. Tzeng, Chia-An Lee, You-Xuan Huang, Hao-Hsuan Huang
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引用次数: 4

摘要

mooc对当今的教育策略产生了巨大的影响。mooc使全球学习者能够不受时间和空间的限制进行学习,在参与在线课程时可以实现不同的学习特征。由于学习资源过于复杂,“信息过载”问题在网络教育中被广泛讨论。基于人工智能的推荐系统被认为是通过定制供应提高资源获取的有力解决方案,它通过提供个性化的学习策略被视为在线学习的助手。本文提出了一种基于LINE Bot的个性化学习路径推荐系统,以满足个人对学习路径的偏好。建立LSTM模型,综合考虑视频观看偏好特征、学生簇和学习路径,推荐适合每个学生的个性化学习路径。相关的推荐内容和预测结果会通过即时的LINE按摩被用户接收,达到及时主动推荐的目的。从评价部分来看,所提出的学习路径预测模型的f1得分为0.8,说明该模型具有一定的准确性。另一方面,将所提出的系统应用于北师大云的两门课程,进行个性化的学习路径引导。实验结果表明,学习路径推荐有助于学生有更强的学习意愿继续学习,并有助于规划适当的学习步骤来满足自己的学习需求。另一方面,这个系统提供了除了考试之外的另一种方法来判断一个人的学习状况,大多数学习者都认为这种推荐有助于复习不熟悉的概念,赶上别人。
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A Personalized Learning Path Recommender System with LINE Bot in MOOCs Based on LSTM
MOOCs has a great impact on nowadays educational strategies. MOOCs enable global learners to learn without time and space constraints, allowing distinct learning characteristics when participating in online courses. Overwhelmed by complicated learning resources, a problem named “information overload” was widely discussed in online education. AI-based Recommender System, which is recognized as the powerful solution to improve resource acquisition via customized supply, has been regarded as an assistant in online learning by giving personalized learning strategies. In this paper, a Personalized Learning Path Recommender System with LINE Bot is proposed to meet personal preferences on path of learning. A LSTM model is built to consider video-watching preference features, clusters of students and learning paths to recommend personal learning path suitable for each student. Related recommendation contents and prediction results will be received by users through in-time LINE massages, achieving the goal of making in-time and active recommendations. From the evaluation part, F1-score of the proposed Learning Path Prediction Model is 0.8, indicating this model has a certain degree of accuracy. On the other hand, the proposed system is used in two courses of NTHU Cloud to give personalized learning path guidance. The experimental results demonstrate that learning path recommendations will help students have stronger learning willingness to keep learning, and help plan proper study steps to fulfill their own learning needs. On the other hand, this system provides another way except examinations to make judgements about one's learning status, and most learners agree that this kind of recommendations is helpful to review unfamiliar concepts and catch up with others.
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