AI technologies for education: Recent research & future directions

被引:0
作者
Zhang K. [1 ]
Aslan A.B. [2 ]
机构
[1] Wayne State University, 385Education, Detroit, 48202, MI
[2] Eastern Michigan University, 203Boone Hall, Ypsilanti, 48197, MI
来源
Zhang, Ke (Ke.zhang@wayne.edu) | 2021年 / Elsevier B.V.卷 / 02期
关键词
AI; AI in Education; Artificial intelligence;
D O I
10.1016/j.caeai.2021.100025
中图分类号
学科分类号
摘要
From unique educational perspectives, this article reports a comprehensive review of selected empirical studies on artificial intelligence in education (AIEd) published in 1993–2020, as collected in the Web of Sciences database and selected AIEd-specialized journals. A total of 40 empirical studies met all selection criteria, and were fully reviewed using multiple methods, including selected bibliometrics, content analysis and categorical meta-trends analysis. This article reports the current state of AIEd research, highlights selected AIEd technologies and applications, reviews their proven and potential benefits for education, bridges the gaps between AI technological innovations and their educational applications, and generates practical examples and inspirations for both technological experts that create AIEd technologies and educators who spearhead AI innovations in education. It also provides rich discussions on practical implications and future research directions from multiple perspectives. The advancement of AIEd calls for critical initiatives to address AI ethics and privacy concerns, and requires interdisciplinary and transdisciplinary collaborations in large-scaled, longitudinal research and development efforts. © 2021 The Authors
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