Extracting Course Features and Learner Profiling for Course Recommendation Systems: A Comprehensive Literature Review

Amir Narimani, Elena Barberà
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Abstract

As education has evolved towards online learning, the availability of learning materials has expanded and consequently, learners’ behavior in choosing resources has changed. The need to offer personalized learning experiences and content has never been greater. Research has explored methods to personalize learning paths and match learning materials with learners’ profiles. Course recommendation systems have emerged as a solution to help learners select courses that suit their interests and aptitude. A comprehensive review study was required to explore the implementation of course recommender systems, with the specifics of courses and learners as the main focal points. This study provided a framework to explain and categorize data sources for course feature extraction, and described the information sources used in previous research to model learner profiles for course recommendations. This review covered articles published between 2015 and 2022 in the repositories most relevant to education and computer science. It revealed increased attention paid to combining course features from different sources. The creation of multi-dimensional learner profiles using multiple learner characteristics and implementing machine-learning-based recommenders has recently gained momentum. As well, a lack of focus on learners’ micro-behaviors and learning actions to create precise models was noted in the literature. Conclusions about recent course recommendation systems development are also discussed.
为课程推荐系统提取课程特征和学习者特征分析:综合文献综述
随着教育朝着在线学习的方向发展,学习材料的可用性不断扩大,学习者选择资源的行为也随之发生了变化。现在比以往任何时候都更需要提供个性化的学习体验和内容。已有研究探索了个性化学习路径和将学习材料与学习者档案相匹配的方法。课程推荐系统已成为帮助学习者选择适合其兴趣和能力的课程的一种解决方案。需要开展一项全面的回顾研究,以课程和学习者的具体情况为重点,探讨课程推荐系统的实施情况。本研究提供了一个框架来解释和分类用于课程特征提取的数据源,并描述了以往研究中用于为课程推荐建立学习者档案模型的信息源。本综述涵盖了2015年至2022年期间在与教育和计算机科学最相关的资料库中发表的文章。综述显示,人们越来越关注将不同来源的课程特征结合起来。利用多种学习者特征创建多维学习者档案并实施基于机器学习的推荐器的工作近来势头强劲。此外,文献还指出,在创建精确模型方面,缺乏对学习者微观行为和学习行动的关注。此外,还讨论了有关近期课程推荐系统开发的结论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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