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Ranking DMUs with interval data using DEA and CA approaches

机译:使用DEA和CA接近排名DMU与间隔数据

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Data envelope analysis (DEA) is an approach to estimate the relative efficiency of decision making units (DMUs). Several studies were conducted in order to prioritize efficient units and some useful models such as cross-efficiency matrix (CEM) were presented. Besides, a number of DEA models with interval data have been developed and ranking DMUs with such data was solved. However, presenting an obtained crisp data derived interval data is a critical problem, so that many researches were implemented so as to compute weights and averaging the interval data. In this paper we propose the new algorithm to find more suitable weight applying a data mining approach of DMU's data. For this purpose, we employed clustering and pair-wise comparison matrix on given relative efficiency from CEM. Results indicate there is meaningful different between efficiency of DMUs with lower bound and that of DMUs with upper bound.
机译:数据包络分析(DEA)是一种估计决策单位(DMU)的相对效率的方法。进行了几项研究以优先考虑有效单位,并提出了一些有用的模型,例如交叉效率矩阵(CEM)。此外,已经开发了许多具有间隔数据的DEA模型,并解决了这种数据的DMU。然而,呈现获得的酥脆数据导出的间隔数据是一个关键问题,因此实现了许多研究以计算权重和平均区间数据。在本文中,我们提出了新的算法来查找更合适的重量,应用DMU数据的数据挖掘方法。为此目的,我们在CEM的相对效率上使用聚类和配对比较矩阵。结果表明DMU与带有上限DMU的DMU效率之间有意义的不同。

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