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Integrated Comprehensive Methodology based on DEA and PCA

机译:基于DEA和PCA的集成综合方法论

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Data Envelopment Analysis (DEA) is a kind of comprehensive evaluation method to rank and calculate the corresponding efficiency for each Decision Making Unit (DMU) by constructing a production frontier in multiple inputs and outputs system. For each DMU, we can use multiple variables to describe the characters of DMU, which can be classified as input variables and output variables separately. In traditional DEA models, we needn't do any transformation for input and output variables when we apply DEA into evaluation procedure because the linear programming can allocate optimal weights for different variables based on the principle of the lower inputs and higher outputs the better. However, traditional DEA models can obtain weak evaluation results that most of DMUs are efficient when each DMU has large amount input variables and output variables. To overcome the shortcoming of DEA models, we proposed an integrated DEA model, denoted as PCA-DEA, in this paper. By using CPA arithmetic, the original data for each DMU can be transferred into uncorrelated data. Then, CPADEA models have stronger evaluation capability than traditional DEA models.
机译:数据包络分析(DEA)是一种综合评估方法,它通过在多个输入和输出系统中构建生产前沿来对每个决策单元(DMU)进行排名和计算相应的效率。对于每个DMU,我们可以使用多个变量来描述DMU的字符,这些变量可以分别分为输入变量和输出变量。在传统的DEA模型中,将DEA应用于评估程序时,无需对输入和输出变量进行任何转换,因为线性规划可以基于输入越少越好的原则为不同变量分配最佳权重。然而,当每个DMU具有大量的输入变量和输出变量时,传统的DEA模型获得的评估结果很弱,即大多数DMU都是有效的。为了克服DEA模型的缺点,我们提出了一个集成的DEA模型,称为PCA-DEA。通过使用CPA算法,可以将每个DMU的原始数据转换为不相关的数据。然后,CPADEA模型比传统的DEA模型具有更强的评估能力。

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