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A new approach in the network DEA models for measurement of productivity of decision-making units using multi-objective programming method

机译:网络DEA模型中的一种新方法,用于测量使用多目标规划方法测量决策单元的生产率

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So far, numerous studies have been developed to evaluate the performance of "Decision-Making Units (DMUs)" through "Data Envelopment Analysis (DEA)" and "Network Data Envelopment Analysis (NDEA)" models in different places, but most of these studies have measured the performance of DMUs by efficiency criteria. The productivity is considered as a key factor in the success and development of DMUs and its evaluation is more comprehensive than efficiency evaluation. Recently, studies have been developed to evaluate the productivity of DMUs through the mentioned models but firstly, the number of these studies especially in NDEA models is scarce, and secondly, productivity in these studies is often evaluated through the "productivity indexes". These indexes require at least two time periods and also the two important elements of efficiency and effectiveness in these studies are not significantly evident. So, the purpose of this study is to develop a new approach in the NDEA models using "Multi-Objective Programming (MOP)" method in order to measure productivity of DMUs through efficiency and effectiveness "simultaneously, in one stage, in a period, and interdependently". "Simultaneous and single-stage" study provides the advantage of sensitivity analysis in the model. One case study demonstrates application of the proposed approach in the branches of a Bank. Using proposed approach revealed that it is possible for a branch to be efficient by considering its subdivisions separately but not be efficient by considering the conjunction between its subdivisions. In addition, a branch may be efficient by considering the conjunction between its subdivisions but not be productive. Efficient branches are not necessarily productive, but productive branches are also efficient.
机译:到目前为止,已经开发了许多研究来评估“决策单位(DMUS)”通过“数据包络分析(DEA)”和“网络数据包络分析(NDEA)”模型在不同的地方的模型,但大多数这些研究通过效率标准测量了DMU的性能。生产力被认为是DMUS成功和发展的关键因素,其评估比效率评估更全面。最近,已经开发了研究来通过提到的模型评估DMU的生产率,但首先,特别是在NDEA模型中的这些研究的数量稀缺,其次,这些研究中的生产率通常通过“生产率指数”来评估这些研究中的生产率。这些指标需要至少两次时间段,并且这些研究中的两个重要元素和这些研究中的有效性并没有显着明显。因此,本研究的目的是使用“多目标编程(MOP)”方法在NDEA模型中开发一种新的方法,以便通过效率和有效性“同时,在一个阶段,在一段时间内同时进行DMUS的生产率”,和相互依赖的“。 “同时和单阶段”的研究提供了模型中灵敏度分析的优势。一个案例研究表明,在银行分支机构中申请了所提出的方法。使用所提出的方法揭示了一个分支,通过考虑其细分的结合,可以通过分别考虑其细分来实现有效。另外,通过考虑其细分之间的结合但不生产的结合,分支可以是有效的。高效分支不一定是生产性的,但生产性分支也有效。

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