摘要
文章选取Web of Science数据库中2009—2019年与人工智能相关的文献作为研究对象,运用CiteSpace软件对合作国家及机构、关键词、共被引文献等多角度进行科学知识图谱分析,对人工智能研究领域的重要机构、作者、研究热点及研究趋势进行了讨论,并预测了人工智能的研究前沿,为后续研究提供了参考。
This paper uses the literature related to the artificial intelligence in the Web of Science database in 2009-2019 as the research object, and uses CiteSpace software to analyze the scientific knowledge maps of countries and institutions, keywords, cohotspots and the trends in the field of artificial intelligence are discussed, and the research front in artificial intelligence are predicted, which provides a reference for the follow-up study.
引文
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