2015-2019年《教育中的人工智能》期刊论文计量分析

Clare Baek, Tenzin Doleck
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引用次数: 12

摘要

为了分析人工智能在教育领域的研究现状和趋势,我们采用文献计量学方法对该领域代表性期刊《International Journal of artificial intelligence in education》2015 - 2019年发表的文章进行了分析。我们分析了从Web of Science数据库中检索到的135篇文章,并检查了多产的国家、合作网络、多产的作者、关键词和文章收到的引用。通过对关键词的考察,我们发现作者主要关注的是学生和学习。通过对高产作者和国家的考察,我们发现美国、英国、加拿大和德国的通讯作者都在积极发表文章。我们发现了一些研究人员和机构之间的国际合作,例如美国和加拿大之间的强大合作网络。我们建议加强建立更广泛的国际伙伴关系,扩大包括不同机构在内的合作网络。国际合作和扩大的机构网络可以通过整合各种观点和专业知识来改进研究。
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A Bibliometric Analysis of the Papers Published in the Journal of Artificial Intelligence in Education from 2015-2019
To analyze the current research status and trends of the artificial intelligence in education field, we applied bibliometric methods to examine the articles published in one of the representative journals of the field, International Journal of Artificial Intelligence in Education, from 2015 to 2019. We analyzed 135 articles retrieved from the Web of Science database and examined prolific countries, collaboration networks, prolific authors, keywords, and the citations the articles received. Through examining keywords, we found that the authors largely focused on students and learning. Through examining prolific authors and countries, we found active publication of corresponding authors from United States, United Kingdom, Canada, and Germany. We found international collaboration among some researchers and institutions, such as strong collaboration network between United States and Canada. We suggest reinforcement in building more widespread international partnership and expanding collaboration network by including diverse institutions. International collaboration and expanded institutional network can improve research by incorporating various perspectives and expertise.
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