Research themes in machine learning applications in supply chain management using bibliometric analysis tools
Benchmarking: An International Journal
ISSN: 1463-5771
Article publication date: 1 April 2022
Issue publication date: 21 March 2023
Abstract
Purpose
This paper conducts a Systematic Literature Review (SLR) of Machine Learning (ML) in Supply Chain Management through bibliometric and network analysis, the authors are able to grasp key features of the contemporary literature. The study makes use of state-of-the-art analytical framework based on a unified approach to reveal insights from the present body of knowledge and the potentials for future research developments.
Design/methodology/approach
Unlike standard literature reviews, in SLR, a structured approach is followed. The approach enables utilizing contemporary tools and software packages such as R-package “bibliometrix” and Gephi for exploratory and visual analytics. A number of clustering methods are employed to form clusters. Later, multivariate analysis methodologies are adopted to determine the dominant clusters for the influential co-cited references.
Findings
Using contemporary tools from Bibliometric Analysis (BA), the authors identify in an exploratory analysis, the influential authors, sources, regions, affiliations and papers. In addition, the use of network analysis tools reveals research clusters, topological analysis, key research topics, interrelation and authors’ collaboration along with their patterns. Finally, the optimum number of clusters computed for cluster analysis is decided using a systematic procedure based on multivariate analysis such as k-means and factor analysis.
Originality/value
Modern-day supply chains increasingly depend on developing superior insights from large amounts of data available from diverse sources in unstructured and semi-structured formats. In order to maintain a competitive edge, the supply chains need to perform speedy analysis of big data using efficient tools that provide real-time decision-making insights. Such an analysis necessitates automated processing using intelligent ML algorithms. Through a BA followed by a detailed data visualization in a network analysis enabled grasping key features of the contemporary literature. The analysis is based on 155 documents from the period 2008 to 2018 selected using a systematic selection procedure.
Keywords
Acknowledgements
Financial disclosure: No financial disclosure for this study.
Conflict of interest disclosure: No conflict of interests to be disclosed.
Citation
Raza, S.A., Govindaluri, S.M. and Bhutta, M.K. (2023), "Research themes in machine learning applications in supply chain management using bibliometric analysis tools", Benchmarking: An International Journal, Vol. 30 No. 3, pp. 834-867. https://doi.org/10.1108/BIJ-12-2021-0755
Publisher
:Emerald Publishing Limited
Copyright © 2022, Emerald Publishing Limited