Bibliometric mining of research directions and trends for big data

Author:

Lundberg Lars

Abstract

AbstractIn this paper a program and methodology for bibliometric mining of research trends and directions is presented. The method is applied to the research area Big Data for the time period 2012 to 2022, using the Scopus database. It turns out that the 10 most important research directions in Big Data are Machine learning, Deep learning and neural networks, Internet of things, Data mining, Cloud computing, Artificial intelligence, Healthcare, Security and privacy, Review, and Manufacturing. The role of Big Data research in different fields of science and technology is also analysed. For four geographic regions (North America, European Union, China, and The Rest of the World) different activity levels in Big Data during different parts of the time period are analysed. North America was the most active region during the first part of the time period. During the last years China is the most active region. The citation scores for documents from different regions and from different research directions within Big Data are also compared. North America has the highest average citation score among the geographic regions and the research direction Review has the highest average citation score among the research directions. The program and methodology for bibliometric mining developed in this study can be used also for other large research areas. Now that the program and methodology have been developed, it is expected that one could perform a similar study in some other research area in a couple of days.

Funder

Blekinge Institute of Technology

Publisher

Springer Science and Business Media LLC

Subject

Information Systems and Management,Computer Networks and Communications,Hardware and Architecture,Information Systems

Reference36 articles.

1. Lohr S. (1 February 2013), “The Origins of ‘Big Data’: An Etymological Detective Story”. The New York Times. Archived from the original on 6 March 2016. https://archive.nytimes.com/bits.blogs.nytimes.com/2013/02/01/the-origins-of-big-data-an-etymological-detective-story/, Retrieved 26 April 2023.

2. Marr B. “How much data do we create every day? The mind-blowing stats everyone should read,“ https://www.forbes.com/sites/bernardmarr/2018/05/21/how-much-data-do-we-create-every-day-the-mind-blowing-stats-everyone-should-read/?sh=661e274e60ba, 2018.

3. Lundberg L, Grahn H. “Research Trends, Enabling Technologies and Application Areas for Big Data,” Algorithms, vol. 15, no. 8, p. 280, 2022, DOI: https://doi.org/10.3390/a15080280.

4. Speretta M, Gauch S, Lakkaraju P. “Using CiteSeer to analyze trends in the ACM’s computing classification system,“ in 2010,. DOI: https://doi.org/10.1109/HSI.2010.5514510.

5. Dong Y. “NLP-Based Detection of Mathematics subject classification,” In: Davenport J, Kauers M, Labahn G, Urban J, editors Mathematical Software – ICMS 2018. ICMS 2018. Lecture notes in Computer Science(), vol 10931. Springer, Cham. https://doi.org/10.1007/978-3-319-96418-8_18.

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