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An Alternative Approach to Reduce Dimensionality in Data Envelopment Analysis

机译:减少数据包络分析中维度的替代方法

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Principal component analysis reduces dimensionality; however, uncorrelated components imply the existence of variables with weights of opposite signs. This complicates the application in data envelopment analysis. To overcome problems due to signs, a modification to the component axes is proposed and was verified using Monte Carlo simulations.
机译:主成分分析减少了维度;但是,不相关的组件意味着存在具有相反符号的权重的变量。这使得在数据包络分析中的应用复杂化。为了克服由于迹象引起的问题,提出了对组件轴的修改,并使用Monte Carlo模拟验证。

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