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Efficiency measurement in data envelopment analysis in the presence of ordinal and interval data

机译:序数和间隔数据存在数据包络分析中的效率测量

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摘要

Several methods have been proposed in data envelopment analysis (DEA) for measuring efficiency in problems with interval or ordinal data. In this study, we review the weaknesses and drawbacks of these methods and show how converting ordinal or interval data into precise data can lead to violations of established DEA axioms. One of the axioms violated by these conversion processes is the inclusion of observations axiom, which requires a consistent definition of the production possibility set. We describe the special properties of ordinal and interval data together with their effect on the DEA-based rankings using a theorem and an example. We also propose a new algorithm and apply random dataset generation to overcome the problems arising from violations of the inclusion of observations axiom in DEA settings with ordinal or internal data. Several numerical examples are presented to demonstrate the applicability and exhibit the efficacy of the proposed method.
机译:数据包络分析(DEA)中提出了几种方法,用于测量间隔或序数数据的问题效率。 在这项研究中,我们审查了这些方法的弱点和缺点,并展示将序数或间隔数据转换为精确的数据,可能导致违反建立的DEA公理。 这些转换过程违反的一个公理是包含观察公理,这需要一致的生产可能集定义。 我们使用定理和示例描述了序数和间隔数据的特殊属性以及它们对基于DEA的排名的影响。 我们还提出了一种新的算法,并应用随机数据集生成,以克服违反序号或内部数据的DEA环境中包含观测公理的侵犯所产生的问题。 提出了几个数值例证以证明适用性并表现出所提出的方法的功效。

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