在线课程推荐的协同推荐系统

Raghad Obeidat, R. Duwairi, Ahmad Al-Aiad
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引用次数: 26

摘要

在本文中,我们提出了一个基于学生课程历史相似性为学生推荐在线课程的协同推荐系统。该系统采用数据挖掘技术来发现课程之间的模式。因此,我们已经注意到,与使用整个课程和学生集生成的关联规则相比,基于各自的课程选择将学生聚到相似的组中在生成高质量的关联规则方面起着至关重要的作用。其中,利用Apriori算法生成关联规则;一次使用整个数据集,一次使用基于学生选课而形成的聚类。结果表明,在聚类上生成的规则覆盖率较高。此外,为了评估课程依赖对推荐的影响,我们将SPADE算法应用于课程序列。所得结果与应用Apriori时的结果一致。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Collaborative Recommendation System for Online Courses Recommendations
In this paper, we present a collaborative recommender system that recommends online courses for students based on similarities of students' course history. The proposed system employs data mining techniques to discover patterns between courses. Consequently, we have noticed that clustering students into similar groups based on their respective course selections play a vital role in generating association rules of high quality when compared with the association rules generated using the whole set of courses and students. In particular, the Apriori algorithm was used to generate association rules; once using the whole dataset and once using the clusters which are formed based on students' choices of courses. The results reveal that the coverage of the rules generated on clusters are better. Also, to assess the effect of course dependency on recommendations, we applied the SPADE algorithm on course sequences. The results are in harmony with the results obtained when Apriori was applied.
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