Recommender systems for teachers: The relation between social ties and the effectiveness of socially-based features

IF 8.9 1区 教育学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Computers & Education Pub Date : 2023-12-06 DOI:10.1016/j.compedu.2023.104960
Elad Yacobson , Armando M. Toda , Alexandra I. Cristea , Giora Alexandron
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Abstract

Open Educational Resources (OER) repositories provide teachers with a wide range of learning resources (LRs), enabling them to design various learning sequences. However, search & select in large OER repositories can be a daunting task for teachers. Incorporating peer recommendations, as is common in online marketplaces, is becoming a popular solution that seeks to exploit the wisdom of the crowd for this task. However, teachers are often reluctant to take a contributory role and provide social recommendations. In addition, little is known about the actual value of social recommendations as a search aid. In this research, we implemented a “light-weight” socially-based recommender system (RS) within a large OER repository that includes social network features. We examined two aspects of the socially-based recommendation mechanisms. First, their utility as search aids that assist teachers in searching and selecting suitable LRs, and second, their impact on teachers' incentives to share recommendations that can assist fellow teachers. To study these two aspects, we examined two science teacher communities using this repository. The results demonstrated the incentivising power of social rewards, and the value of social recommendations as means for search & select. However, we also observed a heterogeneous effect of social features on teachers' behaviour. To explore the factors that may explain these differences, we employed a mixed-method approach, combining qualitative, quantitative, and Social Network Analysis methods. Triangulation of the findings underline the relation between the strength of the social ties within the teachers’ community and the effectiveness of socially-based features.

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教师推荐系统:社会关系与基于社会特征的有效性之间的关系
开放教育资源(OER)库为教师提供了大量学习资源(LR),使他们能够设计各种学习序列。然而,对教师来说,在大型开放教育资源库中搜索和amp; 选择是一项艰巨的任务。结合同行推荐(在线市场中常见的做法)正在成为一种流行的解决方案,旨在利用群众的智慧来完成这项任务。然而,教师往往不愿意扮演贡献者的角色,提供社会推荐。此外,人们对社交推荐作为搜索辅助工具的实际价值知之甚少。在这项研究中,我们在一个包含社交网络功能的大型开放源码资源库中实施了一个 "轻量级 "基于社交的推荐系统(RS)。我们考察了基于社交的推荐机制的两个方面。首先,它们作为搜索辅助工具在帮助教师搜索和选择合适的 LRs 方面的效用;其次,它们对教师分享可帮助其他教师的推荐的积极性的影响。为了研究这两个方面,我们考察了使用该资源库的两个科学教师社区。结果显示了社交奖励的激励作用,以及社交推荐作为搜索&选择手段的价值。不过,我们也观察到社交功能对教师行为的不同影响。为了探索可能解释这些差异的因素,我们采用了混合方法,将定性、定量和社交网络分析方法结合起来。研究结果的三角分析强调了教师群体内部社会联系的强度与基于社会的特征的有效性之间的关系。
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来源期刊
Computers & Education
Computers & Education 工程技术-计算机:跨学科应用
CiteScore
27.10
自引率
5.80%
发文量
204
审稿时长
42 days
期刊介绍: Computers & Education seeks to advance understanding of how digital technology can improve education by publishing high-quality research that expands both theory and practice. The journal welcomes research papers exploring the pedagogical applications of digital technology, with a focus broad enough to appeal to the wider education community.
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