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首页> 外文期刊>Expert systems with applications >Increasing The Discriminatory Power Of Dea In The Presence Of The Undesirable Outputs And Large Dimensionality Of Data Sets With Pca
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Increasing The Discriminatory Power Of Dea In The Presence Of The Undesirable Outputs And Large Dimensionality Of Data Sets With Pca

机译:存在不希望有的输出和具有Pca的数据集的大维度时,提高Dea的歧视能力

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摘要

This paper proposes an effective approach to deal with undesirable outputs and simultaneously reduces the dimensionality of data set. First, we change the undesirable outputs to be desirable ones by reversing, then we do principal component analysis (PCA) on the ratios of a single desirable output to a single input. In order to reduce the dimensionality of data set, the required principal components have been selected from the generated ones according to the given choice principle. Then a linear monotone increasing data transformation is made to the chosen principal components to avoid being negative. Finally, the transformed principal components are treated as outputs into data envelopment analysis (DEA) models with a natural assurance region (AR). The proposed approach is then applied to real-world data set that characterizes the ecology performance of 17 Chinese cities in Anhui province.
机译:本文提出了一种有效的方法来处理不良输出并同时降低数据集的维数。首先,我们通过反转将不良产出更改为理想产出,然后对单个理想产出与单个投入的比率进行主成分分析(PCA)。为了降低数据集的维数,已根据给定的选择原则从生成的组件中选择了所需的主组件。然后,对所选的主成分进行线性单调递增数据转换,以避免产生负数。最后,将转换后的主成分作为输出放入具有自然保证区(AR)的数据包络分析(DEA)模型中。然后将提出的方法应用于真实世界的数据集,该数据集表征了安徽省17个中国城市的生态绩效。

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