Top-N personalized recommendation with graph neural networks in MOOCs

被引:0
|
作者
Wang J. [1 ]
Xie H. [2 ]
Wang F.L. [1 ]
Lee L.-K. [1 ]
Au O.T.S. [1 ]
机构
[1] School of Science and Technology, The Open University of Hong Kong, Ho Man Tin
[2] Department of Computing and Decision Sciences, Lingnan University, Tuen Mun
关键词
Graph neural networks; MOOCs; Personalized learning; Recommender Systems;
D O I
10.1016/j.caeai.2021.100010
中图分类号
学科分类号
摘要
Top-N personalized recommendation has been extensively studied in assisting learners in finding interesting courses in MOOCs. Although existing Top-N personalized recommendation methods have achieved comparable performance, these models have two major shortcomings. First, these models seldom learn an explicit representation of the structural relation of items. Second, most of these models typically obtain a user's general preference and neglect the recency of items. This paper proposes a Top-N personalized Recommendation with Graph Neural Network (TP-GNN) in the Massive Open Online Course (MOOCs) as a solution to tackle this problem. We explore two different aggregate functions to deal with the user's sequence neighbors and then use an attention mechanism to generate the final item representations. The experiments on a real-world course dataset demonstrated that TP-GNN could improve the performances. Furthermore, the system developed based on our method obtains positive feedback from the participants, which denotes that our method effectively predicts learners’ preferences and needs. © 2021 The Authors
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