挖掘教师非正式在线学习网络:来自海量教育聊天推文的见解

IF 4 2区 教育学 Q1 EDUCATION & EDUCATIONAL RESEARCH Journal of Educational Computing Research Pub Date : 2023-03-01 DOI:10.1177/07356331221103764
Hanxiang Du, Wanli Xing, Gaoxia Zhu
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引用次数: 4

摘要

基于社交媒体的教师学习网络能够为教师的专业学习提供灵活的时间和空间,支持社交网络的发展和可持续性,满足教师在知识交流、意义协商和资源获取方面的即时需求。然而,现有的大多数关于教师在线学习网络的研究都依赖于定性方法和自我报告数据。目前还缺乏使用定量方法研究大型网络的研究,特别是使用来自社交媒体的真实数据。这项工作通过使用从Twitter检索的真实数据挖掘教师非正式在线学习网络来增加文献。具体来说,我们收集了大约50万条推文,并利用这些数据建立了一个网络。然后,利用各种社会网络分析技术来探讨网络结构和特征、参与者的行为模式以及个体之间的联系方式。我们发现,大规模教师非正式在线学习网络的成员倾向于与具有相似特征的其他人进行更多的交流,形成同质社区,而中心参与者连接了许多彼此明显不同的小社区,因此,这是在大型网络中程度异质性的关键。
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Mining Teacher Informal Online Learning Networks: Insights From Massive Educational Chat Tweets
Social-media-based teacher learning networks have the affordance to grant flexibility of time and space for teachers’ professional learning, support the development and sustainability of social networking, and meet their just-in-time needs for exchanging knowledge, negotiating meaning and accessing resources. However, most existing research on teacher online learning networks relies on qualitative methods and self-report data. There is a lack of study using quantitative methods to study large networks, especially using authentic data from social media. This work adds to the literature through mining teacher informal online learning networks using authentic data retrieved from Twitter. Specifically, we collected around half a million tweets and developed a network with the data. Then, various social network analysis techniques were utilized to explore the network structure and characteristics, participants’ behavioral patterns and how individuals connected with each other. We found that members of massive teacher informal online learning networks tended to communicate more with others of similar characteristics forming homogeneous communities, while hub participants connected many small communities which are significantly from one another, and hence, are the key to degree heterogeneity in a large network.
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来源期刊
Journal of Educational Computing Research
Journal of Educational Computing Research EDUCATION & EDUCATIONAL RESEARCH-
CiteScore
11.90
自引率
6.20%
发文量
69
期刊介绍: The goal of this Journal is to provide an international scholarly publication forum for peer-reviewed interdisciplinary research into the applications, effects, and implications of computer-based education. The Journal features articles useful for practitioners and theorists alike. The terms "education" and "computing" are viewed broadly. “Education” refers to the use of computer-based technologies at all levels of the formal education system, business and industry, home-schooling, lifelong learning, and unintentional learning environments. “Computing” refers to all forms of computer applications and innovations - both hardware and software. For example, this could range from mobile and ubiquitous computing to immersive 3D simulations and games to computing-enhanced virtual learning environments.
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