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Measuring the efficiency of two-stage network processes: A satisficing DEA approach

机译:测量两级网络流程的效率:令人满意的DEA方法

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Regular network data envelopment analysis (DEA) models deal with evaluating the performance of a set of decision-making units with a two-stage construction in the context of a deterministic data set. In the real world, however, observations may display a stochastic behavior. To the best of our knowledge, despite the existing research done with different data types, studies on two-stage processes with stochastic data are still very limited. This article proposes a two-stage network DEA model with stochastic data. The stochastic two-stage network DEA model is formulated based on the satisficing DEA models of chance-constrained programming and the leader-follower concepts. According to the probability distribution properties and under the assumption of the single random factor of the data, the probabilistic form of the model is transformed into its equivalent deterministic linear programming model. In addition, the relationship between the two stages as the leader and the follower, respectively, at different confidence levels and under different aspiration levels, is discussed. The proposed model is applied to a real case concerning 16 commercial banks in China in order to confirm the applicability of the proposed approach.
机译:常规网络数据包络分析(DEA)模型处理在确定性数据集的上下文中评估一组决策单元的性能,其具有两阶段结构。然而,在现实世界中,观察可能会显示出随机行为。据我们所知,尽管采用不同的数据类型完成了现有的研究,但对随机数据的两级过程的研究仍然非常有限。本文提出了一种具有随机数据的两级网络DEA模型。基于令人满意的DEA模型和​​领导追随者概念的令人满意的DEA模型配制了随机两级网络DEA模型。根据概率分布特性并且在数据的单个随机因子的假设下,模型的概率形式被转换为其等效的确定性线性编程模型。此外,讨论了两个阶段与追随者之间的两个阶段之间的关系,分别在不同的置信水平和不同的抽吸水平下。该拟议的模型适用于关于中国16个商业银行的实际案例,以确认提出的方法的适用性。

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