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首页> 外文期刊>Numerical Algebra, Control and Optimization >A NEW MONTE CARLO BASED PROCEDURE FOR COMPLETE RANKING EFFICIENT UNITS IN DEA MODELS
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A NEW MONTE CARLO BASED PROCEDURE FOR COMPLETE RANKING EFFICIENT UNITS IN DEA MODELS

机译:基于新的Monte Carlo在DEA模型中完成排名效率的步骤

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摘要

Traditional data envelopment analysis (DEA) models split DMUs into two classes C namely efficient and inefficient. Due to the identical maximum efficiency scores of the efficient units, they cannot be ranked directly. That is why various models allowing the complete ranking of DMUs have been proposed in the past. Those models are based on different principles and have various advantages and disadvantages (infeasibility, alternative optimum, computational aspects, etc.). The method proposed in this paper uses the magnitude of the area under the efficient curve. In order to estimate this magnitude we suggest to use Monte Carlo simulation for the complete ranking originally efficient DMUs so as to overcome the problems arisen from other ranking methods and it is very simple, computationally. This method generates random weights for the inputs and outputs in the feasible region and finally derives probability the DMUs are efficient. The procedure proposed is illustrated by a numerical example and its results are compared with three of most important and popular methods for ranking efficient units (i.e. cross-efficiency evaluation, Andersen and Petersen super-efficiency model, and common set of weights method).
机译:传统数据包络分析(DEA)模型将DMUS分为两个课程C,即高效且效率低下。由于高效单位的相同最大效率分数,它们不能直接排序。这就是为什么过去已经提出了允许完整排名DMU的各种模型。这些模型基于不同的原理,具有各种优点和缺点(不可行,替代,最佳,计算方面等)。本文提出的方法使用高效曲线下面积的大小。为了估计这种幅度,我们建议使用Monte Carlo模拟来完成最初的排名效率的DMU,以克服其他排名方法中出现的问题,并且它非常简单,计算地。该方法为可行区域中的输入和输出生成随机权重,最终导出DMU有效的概率。所提出的程序由数值示例说明,其结果与排名有效单位的三种最重要和最流行的方法进行比较(即交叉效率评估,安德森和Petersen超级效率模型以及常见的重量方法)。

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