2024
DOI: 10.3390/healthcare12060611
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Performance Evaluation of Hospitals under Data Uncertainty: An Uncertain Common-Weights Data Envelopment Analysis

Pejman Peykani,
Mir Saman Pishvaee

Abstract: In the context of healthcare systems, the performance evaluation of hospitals plays a crucial role in assessing the quality of healthcare systems and facilitating informed decision-making processes. However, the presence of data uncertainty poses significant challenges to accurate performance measurement. This paper presents a novel uncertain common-weights data envelopment analysis (UCWDEA) approach for evaluating the performance of hospitals under uncertain environments. The proposed UCWDEA approach addresse… Show more

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Cited by 2 publications
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“…Future studies could overcome this limitation by embracing a more comprehensive approach that considers the broader contextual factors influencing the performance of insurance companies in uncertain environments. Alos, for the future studies, the other popular and powerful uncertain programming approaches such as robust optimization [ 82 87 ], uncertainty theory [ 88 92 ], interval programming [ 93 – 99 ], and stochastic optimization [ 100 105 ], can also be employed to deal with different type of data uncertainty.…”
Section: Conclusion and Future Research Directionsmentioning
confidence: 99%
“…Future studies could overcome this limitation by embracing a more comprehensive approach that considers the broader contextual factors influencing the performance of insurance companies in uncertain environments. Alos, for the future studies, the other popular and powerful uncertain programming approaches such as robust optimization [ 82 87 ], uncertainty theory [ 88 92 ], interval programming [ 93 – 99 ], and stochastic optimization [ 100 105 ], can also be employed to deal with different type of data uncertainty.…”
Section: Conclusion and Future Research Directionsmentioning
confidence: 99%