A Hybridized Deep Learning Strategy for Course Recommendation

IF 0.5 Q4 EDUCATION & EDUCATIONAL RESEARCH
G. Deepak, Ishdutt Trivedi
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引用次数: 0

Abstract

Recommender systems have been actively used in many areas like e-commerce, movie and video suggestions, and have proven to be highly useful for its users. But the use of recommender systems in online learning platforms is often underrated and less likely used. But many of the times it lacks personalisation especially in collaborative approach while content-based doesn't work well for new users. Therefore, the authors propose a hybrid course recommender system for this problem which takes content as well as collaborative approaches and tackles their individual limitations. The authors see recommendation as a sequential problem and thus have used RNNs for solving the problem. Each recommendation can be seen as the new course in the sequence. The results suggest it outperforms other recommender systems when using LSTMs instead of RNNs. The authors develop and test the recommendation system using the Kaggle dataset of users for grouping similar users as historical data and search history of different users' data.
一种用于课程推荐的混合深度学习策略
推荐系统已被积极应用于电子商务、电影和视频推荐等许多领域,并已被证明对用户非常有用。但推荐系统在在线学习平台中的使用往往被低估,也不太可能被使用。但很多时候,它缺乏个性化,尤其是在协作方法中,而基于内容的方法对新用户来说效果不佳。因此,作者针对这个问题提出了一个混合课程推荐系统,该系统采用内容和协作方法,并解决了各自的局限性。作者将推荐视为一个顺序问题,因此使用RNN来解决该问题。每个推荐都可以被视为序列中的新课程。结果表明,当使用LSTM而不是RNN时,它的性能优于其他推荐系统。作者使用Kaggle用户数据集开发并测试了推荐系统,用于将相似用户分组为历史数据和不同用户数据的搜索历史。
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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