Uncovering the structures of privacy research using bibliometric network analysis and topic modelling

Publication date

2023-02-14

Authors

Dijk, F. vanISNI 0000000527813009
Gadellaa, Joost
Toledo, C. vanISNI 0000000527855495
Spruit, MarcoISNI 0000000077172004
Brinkkemper, SjaakISNI 0000000374861981
Brinkhuis, Matthieu J. S.ORCID 0000-0003-1054-6683ISNI 0000000419480083

Editors

Advisors

Supervisors

Document Type

Article
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License

cc_by

Abstract

Purpose This paper aims that privacy research is divided in distinct communities and rarely considered as a singular field, harming its disciplinary identity. The authors collected 119.810 publications and over 3 million references to perform a bibliometric domain analysis as a quantitative approach to uncover the structures within the privacy research field. Design/methodology/approach The bibliometric domain analysis consists of a combined directed network and topic model of published privacy research. The network contains 83,159 publications and 462,633 internal references. A Latent Dirichlet allocation (LDA) topic model from the same dataset offers an additional lens on structure by classifying each publication on 36 topics with the network data. The combined outcomes of these methods are used to investigate the structural position and topical make-up of the privacy research communities. Findings The authors identified the research communities as well as categorised their structural positioning. Four communities form the core of privacy research: individual privacy and law, cloud computing, location data and privacy-preserving data publishing. The latter is a macro-community of data mining, anonymity metrics and differential privacy. Surrounding the core are applied communities. Further removed are communities with little influence, most notably the medical communities that make up 14.4% of the network. The topic model shows system design as a potentially latent community. Noteworthy is the absence of a centralised body of knowledge on organisational privacy management. Originality/value This is the first in-depth, quantitative mapping study of all privacy research.

Keywords

Privacy, Bibliometric, Mapping, Network, Topic model

Citation

Dijk, F V, Gadellaa, J, Toledo, C V, Spruit, M, Brinkkemper, S & Brinkhuis, M 2023, 'Uncovering the structures of privacy research using bibliometric network analysis and topic modelling', Organizational Cybersecurity Journal: Practice, Process and People. https://doi.org/10.1108/OCJ-11-2021-0034