An approach for learning resource recommendation using deep matrix factorization

IF 2.7 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
Tran Thanh Dien, Nguyen Thanh Hai, Nguyen Thai-Nghe
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引用次数: 1

Abstract

ABSTRACT In traditional learning, learners and their lecturers, or tutors can meet face-to-face. In such lectures, the lecturers, or tutors can introduce printed book tutorials. However, in several circumstances, such as distance education, learners cannot interact with their teachers. Therefore, online learning resources would be helpful for learners to get knowledge. With a large and diverse number of learning resources, selecting appropriate learning resources to learn is very important. This study presents a deep matrix decomposition model extended from standard matrix decomposition to recommend learning resources based on learners' abilities and requirements. We test the proposed model on two groups of experimental data, including the data group of students' learning outcomes at a university for course recommendation and another group of 5 datasets of user learning resources to provide valuable recommendations for supporting learners. The experiments have revealed promising results compared to some baselines. The work is expected to be a good choice for large-scale datasets.
一种基于深度矩阵分解的学习资源推荐方法
摘要在传统学习中,学习者和他们的讲师或导师可以面对面交流。在这样的讲座中,讲师或导师可以介绍印刷书籍教程。然而,在一些情况下,例如远程教育,学习者无法与老师互动。因此,在线学习资源将有助于学习者获得知识。在拥有大量多样的学习资源的情况下,选择合适的学习资源进行学习是非常重要的。本研究提出了一个从标准矩阵分解扩展而来的深度矩阵分解模型,以根据学习者的能力和需求推荐学习资源。我们在两组实验数据上测试了所提出的模型,包括一组用于课程推荐的大学学生学习结果数据组和另一组5个用户学习资源数据集,为支持学习者提供有价值的建议。与一些基线相比,实验显示出了有希望的结果。这项工作有望成为大规模数据集的良好选择。
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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来源期刊
CiteScore
7.50
自引率
0.00%
发文量
18
审稿时长
27 weeks
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