测试和选择混合数据类型DEA场景与PCA后处理

N. P. Theunissen, S. Cunningham
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引用次数: 0

摘要

数据包络分析(DEA)是一种变量量大、dmu少的分析方法。这种具有高可变维度的配置产生了太多100%高效的dmu,因此使结果变得非常宝贵。本文提出了一种利用主成分分析(PCA)作为后处理工具来检验和选择有价值的DEA场景的新方法。计算所有可能情况下的DEA效率,然后用PCA进行分析。此外,该方法应用于具有定量和定性数据的数据集以及面向输入和输出的方法。很明显,在特定主成分上具有高负载的情况下,使用具有不同模型配置的高效和低效dmu都会产生有价值的结果。因此,新的PCA-DEA方法具有同时适用于DEA方向和混合数据集的优势,同时具有定量和定性数据。还表明,该方法的结果可以纳入现金牛图,以解释基准案例。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Testing and selecting mixed data type DEA scenarios with PCA post-processing
Data Envelopment Analysis (DEA) with a large amount of variables and little DMUs is problematic. Such a configuration with high variable dimensionality yields too much 100 % efficient DMUs, hence making results invaluable. In this paper a new method is provided, which applies Principal Component Analysis (PCA) as a post-processing tool, to test and select valuable DEA scenarios. DEA efficiencies are calculated for all possible scenarios, which then are analyzed with PCA. Additionally, this method is applied on a dataset with both quantitative and qualitative data and an input- and output-oriented approach. It is apparent that scenarios with high loadings on particular Principal Components yield valuable results with both efficient and inefficient DMUs with different model configurations. Therefore, the new PCA-DEA method has the advantage to work with both DEA orientations and a mixed dataset, with both quantitative and qualitative data. Also it is shown that the method's results can be incorporated in a cash cow diagram, in order to interpret a benchmarking case.
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