This paper aims to propose a novel network model, probabilistic Boolean networks (PBN), for supply chain reasoning. We demonstrate how relationships between the variables can be learned from their behaviors and discuss the equivalence between dynamic Bayesian networks (DBN). Compared with the findings of previous investigations, this work emphasizes the advantages of PBN and its roles in leaning DBN in complex temporal settings
Probabilistic graphical models, e.g. Bayesian Networks, have been traditionally introduced to model ...
The paper develops and operationalises a supply chain risk network management (SCRNM) process that c...
Several models combining Bayesian networks with logic exist. The two most developed models are Proba...
While there is growing interest in supply chain resilience, conceptualization of the main constructs...
Bayesian networks have been widely used as knowledge bases under uncertainty. However, in previous w...
Purpose: Supply chain risks (SCRs) do not work in isolation and have impact both on each member of a...
To effectively manage risk in supply chains, it is important to understand the interrelationships be...
In the broad sense, the Bayesian networks (BN) are probabilistic graphical models that possess uniqu...
To effectively manage risk in supply chains, it is important to understand the interrelationships be...
The supply chain is an integrated process of suppliers, plants, warehouses, and manufacturers all wo...
Inventory management at a single or multiple levels of a supply chain is usually performed with comp...
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 uncertainty of operations for supply chain involved companies is becoming more complex with the ...
Paper describes modelling supply network reliability using dynamic Bayesian networks
Probabilistic graphical models, e.g. Bayesian Networks, have been traditionally introduced to model ...
The paper develops and operationalises a supply chain risk network management (SCRNM) process that c...
Several models combining Bayesian networks with logic exist. The two most developed models are Proba...
While there is growing interest in supply chain resilience, conceptualization of the main constructs...
Bayesian networks have been widely used as knowledge bases under uncertainty. However, in previous w...
Purpose: Supply chain risks (SCRs) do not work in isolation and have impact both on each member of a...
To effectively manage risk in supply chains, it is important to understand the interrelationships be...
In the broad sense, the Bayesian networks (BN) are probabilistic graphical models that possess uniqu...
To effectively manage risk in supply chains, it is important to understand the interrelationships be...
The supply chain is an integrated process of suppliers, plants, warehouses, and manufacturers all wo...
Inventory management at a single or multiple levels of a supply chain is usually performed with comp...
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 uncertainty of operations for supply chain involved companies is becoming more complex with the ...
Paper describes modelling supply network reliability using dynamic Bayesian networks
Probabilistic graphical models, e.g. Bayesian Networks, have been traditionally introduced to model ...
The paper develops and operationalises a supply chain risk network management (SCRNM) process that c...
Several models combining Bayesian networks with logic exist. The two most developed models are Proba...