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Supporting Users of Open Online Courses with Recommendations: An Algorithmic Study

机译:通过建议为在线公开课程的用户提供支持:算法研究

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Almost all studies on course recommenders in online platforms target closed online platforms that belong to a University or other provider. Recently, a demand has developed that targets open platforms. Such platforms lack rich user profiles with content metadata. Instead they log user interactions. We report on how user interactions and activities tracked in open online learning platforms may generate recommendations. We use data from the OpenU open online learning platform in use by the Open University of the Netherlands to investigate the application of several state-of-the-art recommender algorithms, including a graph-based recommender approach. It appears that user-based and memory-based methods perform better than model-based and factorization methods. Particularly, the graph-based recommender system outperforms the classical approaches on prediction accuracy of recommendations in terms of recall.
机译:在线平台上关于课程推荐者的几乎所有研究都针对属于大学或其他提供商的封闭在线平台。最近,针对开放平台的需求已经发展。这样的平台缺少带有内容元数据的丰富用户配置文件。相反,它们记录用户交互。我们报告了在开放式在线学习平台中跟踪的用户互动和活动如何产生建议。我们使用来自荷兰开放大学使用的OpenU开放式在线学习平台的数据来研究几种最新的推荐器算法的应用,包括基于图的推荐器方法。似乎基于用户和基于内存的方法比基于模型和因式分解方法的性能更好。特别是,基于图表的推荐系统在召回方面优于传统的推荐预测精度方法。

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