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Target setting with minimum improving costs in data envelopment analysis: A mixed integer linear programming approach

机译:数据包络分析中最低提高成本的目标设置:混合整数线性规划方法

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This study addresses a problem called cost-minimizing target setting in data envelopment analysis (DEA) methodology. The problem is how to make an inefficient decision-making unit efficient by allocating to it as few organizational resources as possible, assuming that the marginal costs of reducing inputs or increasing outputs are known and available, which is different from previous furthest and closest DEA targets setting methods. In this study, an existed cost minimizing target setting heuristics approach based on input-oriented model is examined to show that there exist some limitations. This study develops a simple mixed integer linear programming to determine the desired targets on the strongly efficient frontier based on non-oriented DEA model considering the situation in the presence of known marginal costs of reducing inputs and increasing outputs simultaneously. Some experiments with the simulated datasets are conducted, and results show that the proposed model can obtain more accurate projections with lower costs compared with those from furthest and closest target setting approaches. Besides, the proposed model can be realistic and efficient in solving cost-minimizing target setting problem.
机译:本研究解决了数据包络分析(DEA)方法中的成本最小化目标设置的问题。问题是如何通过尽可能少的组织资源分配给它来实现效率低效的决策单位有效,假设减少输入或增加的输出的边际成本是已知的并且可用,这与先前最远和最近的DEA目标不同设置方法。在本研究中,研究了基于输入导向模型的现有成本最小化目标设置启发式方法,以表明存在一些限制。该研究开发了一种简单的混合整数线性规划,以基于非定向DEA模型确定强效前沿的所需目标,考虑到存在已知的输入输入和同时增加输出的情况。进行了模拟数据集的一些实验,结果表明,与最近和最近的目标设置方法相比,所提出的模型可以获得更低的成本的精确投影。此外,所提出的模型可以在解决成本最小化目标设置问题方面是逼真的,有效的。

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