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Common set of weights and efficiency improvement on the basis of separation vector in two-stage network data envelopment analysis

机译:两阶段网络数据包络分析中分离载体的常见重量和效率改进

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摘要

Common set of weights (CSWs) method is one of the popular ranking methods in DEA which can rank efficient and inefficient units. Based on an identical criterion, the method selects the most favorable weight set for all units. An important issue is that in most common DEA models, the internal structure of the production units is ignored and the units are often considered as black boxes. In this paper, in order to evaluate the units and subunits in the two-stage NDEA based on an identical criterion, it is suggested to use CSWs method on the basis of separation vector. Our research contribution in this paper includes: (1) CSWs method is formulated in two-stage NDEA as a multiple objective fractional programming (MOFP) problem. (2) A method is suggested based on separation vector to change MOFP problem into single objective linear programming (SOLP) problem in two-stage NDEA. In the theorem, it is shown that the obtained solutions from MOFP and SOLP in two-stage NDEA are identical. (3) In the framework of the new models of two-stage NDEA, a process is introduced to improve efficiency evaluation by CSWs on the basis of separation vector which is based on the radial improvement of inputs and final outputs. Finally, an enlightening application is presented.
机译:常见的重量(CSWS)方法是DEA中的流行排名方法之一,可以排名效率和低效的单位。基于相同的标准,该方法为所有单位选择最有利的重量。一个重要的问题是,在大多数常见的DEA模型中,生产单元的内部结构被忽略,单位通常被认为是黑匣子。在本文中,为了基于相同的标准评估两级NDEA中的单位和亚基,建议在分离载体的基础上使用CSWS方法。我们本文的研究贡献包括:(1)CSWS方法在两级NDEA中配制,作为多目标分数编程(MOFP)问题。 (2)基于分离载体提出了一种方法,以将MOFP问题改变为两级NDEA中的单目标线性编程(Solp)问题。在本定理中,显示来自MOFP和SOLP在两级NDEA中获得的溶液是相同的。 (3)在新型号的两级NDEA模型的框架中,引入了基于输入和最终输出的径向改善的分离载体来提高CSW的效率评估。最后,提出了一种启发应用。

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