To effectively manage risk in supply chains, it is important to understand the interrelationships between events that might affect the flow of material, products and information. We present a quantitative modelling process using Bayesian Belief Networks to represent probabilistic dependency relationships between events. A visual modelling process, grounded in Bayesian Network theory and the decision context of supply chain risk management, is developed to capture the knowledge and probability judgements of relevant stakeholders. Building causal maps provides a good basis for translating stakeholder cause-effect knowledge about possible events into a formal graphical probability model. A protocol for eliciting subjective probabilities from r...
In the broad sense, the Bayesian networks (BN) are probabilistic graphical models that possess uniqu...
We propose a modeling approach based on belief networks to capture and understand the systemic natur...
The uncertainty of operations for supply chain involved companies is becoming more complex with the ...
To effectively manage risk in supply chains, it is important to understand the interrelationships be...
Supply chains have become complex and vulnerable and therefore, researchers are developing effective...
Supply chains have become complex and vulnerable and therefore, researchers are developing effective...
The paper develops and operationalises a supply chain risk network management (SCRNM) process that c...
Purpose: Supply chain risks (SCRs) do not work in isolation and have impact both on each member of a...
A structured review of the supply chain and risk management literature supports an analysis of the s...
Purpose Globally expanding supply chains (SCs) have grown in complexity increasing the nature and ma...
The supply chain is an integrated process of suppliers, plants, warehouses, and manufacturers all wo...
The article of record may be found at https://doi.org/10.1007/s12247-019-09396-2Purpose: Clinical tr...
Supply chain risk management is an active area of research and there is a research gap of exploring ...
In this paper, we introduce an integrated supply chain risk management process that is grounded in t...
AbstractIn recent years natural and man-made disasters have highlighted the need for robust supply c...
In the broad sense, the Bayesian networks (BN) are probabilistic graphical models that possess uniqu...
We propose a modeling approach based on belief networks to capture and understand the systemic natur...
The uncertainty of operations for supply chain involved companies is becoming more complex with the ...
To effectively manage risk in supply chains, it is important to understand the interrelationships be...
Supply chains have become complex and vulnerable and therefore, researchers are developing effective...
Supply chains have become complex and vulnerable and therefore, researchers are developing effective...
The paper develops and operationalises a supply chain risk network management (SCRNM) process that c...
Purpose: Supply chain risks (SCRs) do not work in isolation and have impact both on each member of a...
A structured review of the supply chain and risk management literature supports an analysis of the s...
Purpose Globally expanding supply chains (SCs) have grown in complexity increasing the nature and ma...
The supply chain is an integrated process of suppliers, plants, warehouses, and manufacturers all wo...
The article of record may be found at https://doi.org/10.1007/s12247-019-09396-2Purpose: Clinical tr...
Supply chain risk management is an active area of research and there is a research gap of exploring ...
In this paper, we introduce an integrated supply chain risk management process that is grounded in t...
AbstractIn recent years natural and man-made disasters have highlighted the need for robust supply c...
In the broad sense, the Bayesian networks (BN) are probabilistic graphical models that possess uniqu...
We propose a modeling approach based on belief networks to capture and understand the systemic natur...
The uncertainty of operations for supply chain involved companies is becoming more complex with the ...