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STEPWISE SELECTION OF VARIABLES IN DEA USING CONTRIBUTION LOADS

机译:使用贡献负荷逐步选择DEA中的变量

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In this paper, we propose a new methodology for variable selection in Data Envelopment Analysis (DEA). The methodology is based on an internal measure which evaluates the contribution of each variable in the calculation of the efficiency scores of DMUs. In order to apply the proposed method, an algorithm, known as “ADEA”, was developed and implemented in R. Step by step, the algorithm maximizes the load of the variable (input or output) which contribute least to the calculation of the efficiency scores, redistributing the weights of the variables without altering the efficiency scores of the DMUs. Once the weights have been redistributed, if the lower contribution does not reach a previously given critical value, a variable with minimum contribution will be removed from the model and, as a result, the DEA will be solved again. The algorithm will stop when all variables reach a given contribution load to the DEA or until no more variables can be removed. In this way and contrary to what is usual, the algorithm provides a clear stop rule. In both cases, the efficiencies obtained from the DEA will be considered suitable and rightly interpreted in terms of the remaining variables, indicating the load themselves; moreover, the algorithm will provide a sequence of alternative nested models - potential solutions - that could be evaluated according to external criterion. To illustrate the procedure, we have applied the methodology proposed to obtain a research ranking of Spanish public universities. In this case, at each step of the algorithm, the critical value is obtained based on a simulation study.
机译:在本文中,我们提出了一种用于数据包络分析(DEA)中变量选择的新方法。该方法基于内部评估,该内部评估评估DMU效率得分计算中每个变量的贡献。为了应用所提出的方法,在R中开发并实现了一种称为“ ADEA”的算法。逐步地,该算法使变量(输入或输出)的负载最大化,这对效率计算的贡献最小。得分,重新分配变量的权重而不改变DMU的效率得分。一旦权重被重新分配,如果较低的贡献未达到先前给定的临界值,则将从模型中删除具有最小贡献的变量,结果将再次求解DEA。当所有变量均达到DEA的给定贡献负荷时,算法将停止,直到无法删除更多变量为止。这样,与通常情况相反,该算法提供了明确的停止规则。在这两种情况下,从DEA获得的效率都将被认为是合适的,并根据剩余变量来正确解释,表明负载本身。此外,该算法将提供一系列可选的嵌套模型-潜在解决方案-可以根据外部标准进行评估。为了说明这一过程,我们采用了建议的方法来获得西班牙公立大学的研究排名。在这种情况下,在算法的每个步骤中,将基于仿真研究获得临界值。

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