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首页> 外文期刊>Journal of the Operations Research Society of Japan >TUNING REGRESSION RESULTS FOR USE IN MULTI-STAGE DATA ADJUSTMENT APPROACH OF DEA
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TUNING REGRESSION RESULTS FOR USE IN MULTI-STAGE DATA ADJUSTMENT APPROACH OF DEA

机译:用于DEA的多阶段数据调整方法的调整回归结果

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摘要

Data envelopment analysis (DEA) has been a wildly used powerful method to measure efficiencies of decision making units (DMUs). However, DEA efficiency scores are influenced by uncontrollable factors for respective DMUs. Previous studies attempted separating such factors from DEA scores. Fried et al. [4] proposed a multi-stage data adjustment approach using DEA and a regression model, and several studies have followed it, such as Fried et al. [5], Avkiran and Rowlands [1], and so forth. Firstly, we point out shortcomings of the traditional adjustment scheme for combining regression results for use in DEA in the multi-stage approach, and then we propose a new scheme for data adjustment. We demonstrate the effect of this adjustment formula using an electric utility dataset.
机译:数据包络分析(DEA)是一种广泛使用的强大方法,用于测量决策单位(DMU)的效率。但是,DEA效率分数受各个DMU的不可控制因素的影响。先前的研究试图将这些因素与DEA分数分开。 Fried等。 [4]提出了一种使用DEA和回归模型的多阶段数据调整方法,随后进行了一些研究,例如Fried等。 [5],Avkiran和Rowlands [1]等。首先,我们指出了传统的调整方案在多阶段方法中结合回归结果以用于DEA的缺点,然后提出了一种新的数据调整方案。我们使用电力数据集演示了此调整公式的效果。

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