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A stochastic cross‐efficiency data envelopment analysis approach for supplier selection under uncertainty
66
Citations
50
References
2015
Year
Supply Chain OptimizationSupply Chain RiskSupplier SelectionClosed-loop Supply ChainOperations ResearchMonte Carlo ApproachManagementEconomic AnalysisLogisticsSupply ChainSourcing ManagementQuantitative ManagementPotential SuppliersSupply Chain DesignSupply Chain ManagementManufacturing StrategySupply ManagementSupplier RelationshipBusinessStrategic SourcingSupply Chain Analysis
Abstract This paper addresses one of the key objectives of the supply chain strategic design phase, that is, the optimal selection of suppliers. A methodology for supplier selection under uncertainty is proposed, integrating the cross‐efficiency data envelopment analysis (DEA) and Monte Carlo approach. The combination of these two techniques allows overcoming the deterministic feature of the classical cross‐efficiency DEA approach. Moreover, we define an indicator of the robustness of the determined supplier ranking. The technique is able to manage the supplier selection problem considering nondeterministic input and output data. It allows the evaluation of suppliers under uncertainty, a particularly significant circumstance for the assessment of potential suppliers. The novel approach helps buyers in choosing the right partners under uncertainty and ranking suppliers upon a multiple sourcing strategy, even when considering complex evaluations with a high number of suppliers and many input and output criteria.
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