Unlike most bibliometric studies focusing on publications, taking Big Data research as a case study, we introduce a novel bibliometric approach to unfold the status of a given scientific community from an individual level perspective. We study the academic age, production, and research focus of the community of authors active in Big Data research. Artificial Intelligence (AI) is selected as a reference area for comparative purposes. Results show that the academic realm of "Big Data" is a growing topic with an expanding community of authors, particularly of new authors every year. Compared to AI, Big Data attracts authors with a longer academic age, who can be regarded to have accumulated some publishing experience before entering the community. Despite the highly skewed distribution of productivity amongst researchers in both communities, Big Data authors have higher values of both research focus and production than those of AI. Considering the community size, overall academic age, and persistence of publishing on the topic, our results support the idea of Big Data as a research topic with attractiveness for researchers. We argue that the community-focused indicators proposed in this study could be generalized to investigate the development and dynamics of other research fields and topics.
翻译:“大数据”学术领域是一个日益扩大的课题,有越来越多的作者,特别是每年的新作者。与AI相比,“大数据”吸引了学龄较长的作者,他们被认为在进入该社区之前积累了一些出版经验。尽管这两个社区的研究人员的生产率分布高度偏差,但大数据作者的研究重点和生产价值都高于AI。考虑到社区规模、总体学术年龄和关于这个主题的出版的持久性,我们的结果支持大数据作为一个研究主题的概念,因为对于研究人员来说具有吸引力。我们认为,这项研究提出的以社区为重点的指标可以被概括为调查其他研究领域和专题的发展和动态。