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Bayesian networks for supply chain risk, resilience and ripple effect analysis: A literature review

Authors :
Dmitry Ivanov
Seyed Mohsen Hosseini
Source :
Expert Systems with Applications
Publication Year :
2020
Publisher :
Elsevier BV, 2020.

Abstract

Highlights • We presented the first review of application of BN in SC risk and resilience. • We analyzed reviewed journal papers using network analysis and clustering analysis. • The gaps and future research gaps are identified and discussed.<br />In the broad sense, the Bayesian networks (BN) are probabilistic graphical models that possess unique methodical features to model dependencies in complex networks, such as forward and backward propagation (inference) of disruptions. BNs have transitioned from an emerging topic to a growing research area in supply chain (SC) resilience and risk analysis. As a result, there is an acute need to review existing literature to ascertain recent developments and uncover future areas of research. Despite the increasing number of publications on BNs in the domain of SC uncertainty, an extensive review on their application to SC risk and resilience is lacking. To address this gap, we analyzed research articles published in peer-reviewed academic journals from 2007 to 2019 using network analysis, visualization-based scientometric analysis, and clustering analysis. Through this study, we contribute to literature by discussing the challenges of current research, and, more importantly, identifying and proposing future research directions. The results of our survey show that further debate on the theory and application of BNs to SC resilience and risk management is a significant area of interest for both academics and practitioners. The applications of BNs, and their conjunction with machine learning algorithms to solve big data SC problems relating to uncertainty and risk, are also discussed.

Details

ISSN :
09574174
Volume :
161
Database :
OpenAIRE
Journal :
Expert Systems with Applications
Accession number :
edsair.doi.dedup.....fdcfda83f62971ab8b7895681bb788c7