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Dominance stochastic models in data envelopment analysis

机译:数据包络分析中的优势随机模型

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In this paper stochastic models in data envelopment analysis (DEA) are developed by taking into account the possibility of random variations in input-output data, and dominance structures on the DEA envelopment side are used to incorporate the modelbuilder's preferences and to discriminate efficiencies among decision making units (DMUs). The efficiency measure for a DMU is defined via joint dominantly probabilistic comparisons of inputs and outputs with other DMUs and can be characterized by solving a chance constrained programming problem. Deterministic equivalents are obtained for multivariate symmetric random errors and for a single random factor in the production relationships. The goal programming technique is utilized in deriving linear deterministic equivalents and their dual forms. The relationship between the general stochastic DEA models and the conventional DEA models is also discussed.
机译:在本文中,数据包络分析(DEA)中的随机模型是通过考虑输入-输出数据中随机变化的可能性而开发的,DEA包络侧的优势结构用于合并模型构建者的偏好并区分决策之间的效率制造单元(DMU)。 DMU的效率度量是通过与其他DMU的输入和输出的联合显性概率比较来定义的,并且可以通过解决机会受限的编程问题来表征。对于生产关系中的多元对称随机误差和单个随机因素,可以获得确定性等价物。目标编程技术用于推导线性确定性等价物及其对偶形式。还讨论了一般随机DEA模型和​​常规DEA模型之间的关系。

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