Estimating most productive scale size decomposition in a fuzzy network data envelopment analysis model: assessing the sustainability and resilience of the supply chain
DOI10.1051/ro/2024047zbMATH Open1542.90046MaRDI QIDQ6550923
Mohammad Tavassoli, Mahsa Ghandehari
Publication date: 5 June 2024
Published in: RAIRO. Operations Research (Search for Journal in Brave)
supply chainsustainabilityresiliencemost productive scale sizefuzzy network data envelopment analysis
Transportation, logistics and supply chain management (90B06) Special problems of linear programming (transportation, multi-index, data envelopment analysis, etc.) (90C08) Fuzzy and other nonstochastic uncertainty mathematical programming (90C70)
Cites Work
- Measuring the efficiency of decision making units
- Developing a model for determining optimal \(\eta\) in DEA-discriminant analysis for predicting suppliers' group membership in supply chain
- A new fuzzy DEA model for evaluation of efficiency and effectiveness of suppliers in sustainable supply chain management context
- A taxonomy and review of the fuzzy data envelopment analysis literature: two decades in the making
- Efficiency analysis and ranking of DMUs with fuzzy data
- Estimating most productive scale size using data envelopment analysis
- Equivalence in two-stage DEA approaches
- Network DEA: additive efficiency decomposition
- Using input--output orientation model for determining most productive scale size in DEA.
- Assessing sustainability of supply chains by double frontier network DEA: a big data approach
- Developing a novel model of data envelopment analysis-discriminant analysis for predicting group membership of suppliers in sustainable supply chain
- Assessing sustainability of supply chains by chance-constrained two-stage DEA model in the presence of undesirable factors
- Developing a new chance-constrained DEA model for suppliers selection in the presence of undesirable outputs
This page was built for publication: Estimating most productive scale size decomposition in a fuzzy network data envelopment analysis model: assessing the sustainability and resilience of the supply chain