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Decomposition weights and overall efficiency in a two-stage DEA model with shared resources

机译:具有共享资源的两阶段DEA模型中的分解权重和整体效率

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摘要

Data envelopment analysis (DEA) is a non-parametric approach for measuring the relative efficiencies of peer decision making units (DMUs). The additive efficiency decomposition approach expresses the overall efficiency of a two-stage network DEA (NDEA) model as the weighted average of the efficiency scores for the two stages. To determine the weights, there are two main approaches; constant weights and an approach in which the weights are expressed as the portion of total resources devoted to each stage. The current paper provided an examination of the monotonicity of the decomposition weights in a two-stage DEA model with shared resource flows and found that the weight in such a model was not biased towards the second stage. The usage of constant weights in such a model is able to improve the discrimination of the efficient DMUs. Finally, the overall and individual efficiency variations were also studied by varying the weights in the model. The findings were verified using banking industry data and the results were compared with other models.
机译:数据包络分析(DEA)是一种非参数方法,用于测量对等决策单元(DMU)的相对效率。加性效率分解方法将两阶段网络DEA(NDEA)模型的总体效率表示为两阶段效率得分的加权平均值。要确定权重,主要有两种方法:固定权重和一种权重表示为投入到每个阶段的总资源的一部分的方法。本文研究了共享资源流的两阶段DEA模型中分解权重的单调性,发现这种模型中的权重不偏向第二阶段。在这种模型中使用恒定权重能够改善对有效DMU的区分。最后,还通过改变模型中的权重研究了整体效率和个体效率的变化。使用银行业数据验证了调查结果,并将结果与​​其他模型进行了比较。

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