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Context-aware factorization machine for recommendation in Massive Open Online Courses(MOOCs)

机译:在大规模开放在线课程(MOOC)中推荐的上下文感知分解机

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Personalization in the field of e-learning is a topic that receives a lot of interest from researchers. In the same time, the Massive Open Online Course(MOOCs) have witnessed fast development in recent years due to their high flexibility. In this paper, we aim to create a contextual modelling recommender system in a MOOC platform that relies on analysing cognitive acquisition of learners across the learning period. Using context-aware factorization machine algorithm, our approach is designed to be sensitive to the characteristics of each individual learner since this last have different intellectual capabilities, skills, modes of learning, preferences, and needs; in order to make the suitable decision corresponding to each learner's profile.
机译:电子学习领域的个性化是一个引起研究人员极大兴趣的话题。同时,由于其高度的灵活性,近年来的大规模开放在线课程(MOOC)取得了快速发展。在本文中,我们旨在在MOOC平台上创建一个上下文建模推荐系统,该系统依赖于分析整个学习期间学习者的认知习得。使用上下文感知分解机算法,我们的方法旨在对每个学习者的特征敏感,因为该学习者具有不同的智力,技能,学习方式,偏好和需求;为了做出与每个学习者的个人资料相对应的合适决定。

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