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Bayesian Networks for Supply Chain Risk, Resilience and Ripple Effect Analysis: A Literature Review

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Date 2020 Aug 25
PMID 32834558
Citations 16
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Abstract

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.

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References
1.
Petousis P, Han S, Aberle D, Bui A . Prediction of lung cancer incidence on the low-dose computed tomography arm of the National Lung Screening Trial: A dynamic Bayesian network. Artif Intell Med. 2016; 72:42-55. PMC: 5082434. DOI: 10.1016/j.artmed.2016.07.001. View

2.
Johnson S, Tomlinson G, Hawker G, Granton J, Feldman B . Methods to elicit beliefs for Bayesian priors: a systematic review. J Clin Epidemiol. 2009; 63(4):355-69. DOI: 10.1016/j.jclinepi.2009.06.003. View

3.
Constantinou A, Fenton N, Neil M . Integrating Expert Knowledge with Data in Bayesian Networks: . Expert Syst Appl. 2016; 56:197-208. PMC: 4930146. DOI: 10.1016/j.eswa.2016.02.050. View

4.
Haddawy P, Hasan A, Kasantikul R, Lawpoolsri S, Sa-Angchai P, Kaewkungwal J . Spatiotemporal Bayesian networks for malaria prediction. Artif Intell Med. 2017; 84:127-138. DOI: 10.1016/j.artmed.2017.12.002. View

5.
Pournader M, Kach A, Talluri S . A Review of the Existing and Emerging Topics in the Supply Chain Risk Management Literature. Decis Sci. 2021; 51(4):867-919. PMC: 7283689. DOI: 10.1111/deci.12470. View