电子学习与社会学习的推荐系统综述

IF 2.4 Q1 EDUCATION & EDUCATIONAL RESEARCH
Sonia Souabi, A. Retbi, M. Khalidi Idrissi, S. Bennani
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引用次数: 3

摘要

电子学习是一种非常有效的学习方式。反过来,社会学习被认为是非常重要的,因为它促进了学习者之间的合作。为了妥善管理学习资源,我们在网上学习中引入了推荐系统,以提高学习者的学习体验。虽然推荐系统在在线学习中受到广泛关注,但教育工作者仍然不清楚推荐系统如何改善学习过程并对学习产生积极影响。本文旨在概述2007年至2021年上半年在电子学习中提出的推荐系统。在最初确定的2007年至2021年上半年期间的100篇出版物中,根据具体标准,有51篇文章被纳入最终综合。描述性结果表明,教育推荐系统论文中涉及的大多数学科都以一般方式接近电子学习,而没有过多强调社会学习,并且基于明确反馈和评级的推荐系统在实证研究中最常用。综合结果提出了电子学习中的几种推荐系统类型:(1)基于内容的推荐系统;(2)协同过滤推荐系统;(3)混合推荐系统;(4)基于监督和无监督算法的推荐系统。结论反映了在社会学习和社会教育网络中解决推荐系统的重要性几乎缺乏批判性反思,特别是在社会学习具有特殊要求的情况下,一些研究工作中使用的数据库规模薄弱,承认每种推荐系统在教育背景下的优缺点的重要性,以及进一步探索隐性反馈而不是显性学习者反馈的必要性,以获得更准确的推荐。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recommendation Systems on E-Learning and Social Learning: A Systematic Review
E-learning is renowned as one of the highly effective modalities of learning. Social learning, in turn, is considered to be of major importance as it promotes collaboration between learners. For properly managing learning resources, recommender systems have been implemented in e-learning to enhance learners' experience. Whilst recommender systems are of widespread concern in online learning, it is still unclear to educators how recommender systems can improve the learning process and have a positive impact on learning. This paper seeks to provide an overview of the recommender systems proposed in e-learning between 2007 and the first part of 2021. Out of 100 initially identified publications for the period between 2007 and the first part of 2021, 51 articles were included for final synthesis, according to specific criteria. The descriptive results show that most of the disciplines involved in educational recommender systems papers have approached e-learning in a general way without putting as much emphasis on social learning, and that recommender systems based on explicit feedbacks and ratings were the most frequently used in empirical studies. The synthesis of results presents several recommender systems types in e-learning: (1) Content-based recommender systems, (2) Collaborative-filtering recommender systems, (3) Hybrid recommender systems and (4) Recommender systems based on supervised and unsupervised algorithms. The conclusions reflect on the almost lack of critical reflection on the importance of addressing recommender systems in social learning and social educational networks in particular, especially as social learning has particular requirements, the weak databases size used in some research work, the importance of acknowledging the strengths and weaknesses of each type of recommender system in an educational context and the need for further exploration of implicit feedbacks more than explicit learners’ feedbacks for more accurate recommendations.
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来源期刊
Electronic Journal of e-Learning
Electronic Journal of e-Learning EDUCATION & EDUCATIONAL RESEARCH-
CiteScore
5.90
自引率
18.20%
发文量
34
审稿时长
20 weeks
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