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Common weights data envelopment analysis with uncertain data: A robust optimization approach

机译:具有不确定数据的通用权重数据包络分析:鲁棒的优化方法

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摘要

One of the primary issues on data envelopment analysis (DEA) models is the reduction of weights flexibility. There are literally several studies to determine common weights in DEA but none of them considers uncertainty in data. This paper introduces a robust optimization approach to find common weights in DEA with uncertain data. The uncertainty is considered in both inputs and outputs and a suitable robust counterpart of DEA model is developed. The proposed robust DEA model is solved and the ideal solution is found for each decision making units (DMUs). Then, the common weights are found for all DMUs by utilizing the goal programming technique. To illustrate the performance of the proposed model, a numerical example is solved. Also, the proposed model of this paper is implemented by using some actual data from provincial gas companies in Iran.
机译:数据包络分析(DEA)模型的主要问题之一是权重灵活性的降低。从字面上看,有几项研究可以确定DEA中的通用权重,但是没有一项研究考虑到数据的不确定性。本文介绍了一种鲁棒的优化方法,用于在不确定数据中找到DEA中的常见权重。在输入和输出中都考虑了不确定性,并开发了DEA模型的合适鲁棒对应物。解决了提出的鲁棒DEA模型,并为每个决策单元(DMU)找到了理想的解决方案。然后,利用目标编程技术找到所有DMU的通用权重。为了说明所提出模型的性能,求解了一个数值示例。此外,本文提出的模型是通过使用伊朗省级天然气公司的一些实际数据实施的。

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