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MCRS: A course recommendation system for MOOCs

机译:MCRS:MOOC的课程推荐系统

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摘要

With the popularization development of MOOC platform, the number of online courses grows rapidly. Efficient and appropriate course recommendation can improve learning efficiency. Traditional recommendation system is applied to the closed educational environment in which the quantity of courses and users is relatively stable. Recommendation model and algorithm cannot directly be applied to MOOC platform efficiently. With the light of the characteristics of MOOC platform, MCRS proposed in this paper has made great improvement in the course recommendation model and recommendation algorithm. MCRS is based on distributed computation framework. The basic algorithm of MCRS is distributed association rules mining algorithm, which based on the improvement of Apriori algorithm. In addition, it is useful to mine the hidden courses rules in course enrollment data. Firstly, the data is pre-processed into a standard form by Hadoop. It aims to improve the efficiency of the basic algorithm. Then it mines association rules of the standard data by Spark. Consequently, course recommendation information is transferred into MySQL through Sqoop, which makes timely feedback and improves user's courses retrieval efficiency. Finally, to validate the efficiency of MCRS, a series of experiments are carried out on Hadoop and Spark, and the results shows that MCRS is more efficient than traditional Apriori algorithm and Apriori algorithm based on Hadoop, and the MCRS is suitable for current MOOC platform.
机译:随着MOOC平台的普及发展,在线课程数量迅速增长。有效和适当的课程推荐可以提高学习效率。传统推荐系统应用于课程和用户数量相对稳定的封闭式教育环境。推荐模型和算法不能直接有效地应用于MOOC平台。针对MOOC平台的特点,本文提出的MCRS在课程推荐模型和推荐算法上有了很大的改进。 MCRS基于分布式计算框架。 MCRS的基本算法是基于Apriori算法的改进的分布式关联规则挖掘算法。此外,在课程注册数据中挖掘隐藏的课程规则很有用。首先,Hadoop将数据预处理为标准格式。目的在于提高基本算法的效率。然后,它通过Spark挖掘标准数据的关联规则。因此,课程推荐信息通过Sqoop传输到MySQL中,可以及时反馈并提高用户的课程检索效率。最后,为了验证MCRS的效率,在Hadoop和Spark上进行了一系列实验,结果表明MCRS比传统的Apriori算法和基于Hadoop的Apriori算法效率更高,并且MCRS适用于当前的MOOC平台。

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