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首页> 外文期刊>Annals of Operations Research >Solving data envelopment analysis models with sum-of-fractional objectives: a global optimal approach based on the multiparametric disaggregation technique
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Solving data envelopment analysis models with sum-of-fractional objectives: a global optimal approach based on the multiparametric disaggregation technique

机译:求解数据包络分析模型,具有分数的总和:基于多级分类技术的全局最优方法

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The majority of data envelopment analysis (DEA) models can be linearized via the classical Charnes-Cooper transformation. Nevertheless, this transformation does not apply to sum-of-fractional DEA efficiencies models, such as the secondary goal I (SG-I) cross efficiency model and the arithmetic mean two-stage network DEA model. To solve a sum-of-fractional DEA efficiencies model, we convert it into bilinear programming. Then, the obtained bilinear programming is relaxed to mixed-integer linear programming (MILP) by using a multiparametric disaggregation technique. We reveal the hidden mathematical structures of sum-of-fractional DEA efficiencies models, and propose corresponding discretization strategies to make the models more easily to be solved. Discretization of the multipliers of inputs or the DEA efficiencies in the objective function depends on the number of multipliers and decision-making units. The obtained MILP provides an upper bound for the solution and can be tightened as desired by adding binary variables. Finally, an algorithm based on MILP is developed to search for the global optimal solution. The effectiveness of the proposed method is verified by using it to solve the SG-I cross efficiency model and the arithmetic mean two-stage network DEA model. Results of the numerical applications show that the proposed approach can solve the SG-I cross efficiency model with 100 decision-making units, 3 inputs, and 3 outputs in 329.6 s. Moreover, the proposed approach obtains more accurate solutions in less time than the heuristic search procedure when solving the arithmetic mean two-stage network DEA model.
机译:大多数数据包络分析(DEA)模型可以通过古典的夏尔通库转换进行线性化。然而,这种转变不适用于分数的DEA效率模型,例如次要目标I(SG-I)交叉效率模型和算术平均两级网络DEA模型。为了解决一个分形的DEA效率模型,我们将其转换为双线性编程。然后,通过使用多次分类技术,获得所获得的双线性编程以放宽到混合整数线性编程(MILP)。我们揭示了分数和分数DEA效率模型的隐藏数学结构,并提出了相应的离散化策略,使模型更容易解决。目标函数中的输入或DEA效率的乘数的离散化取决于乘数和决策单元的数量。所获得的MILP为溶液提供上限,并且可以通过添加二进制变量根据需要进行紧固。最后,开发了一种基于MILP的算法来搜索全局最优解决方案。通过使用它来解决SG-I交叉效率模型和算术平均两级网络DEA模型来验证所提出的方法的有效性。数值应用的结果表明,该方法可以解决100个决策单元,3个输入和329.6秒的3个输出的SG-I交叉效率模型。此外,所提出的方法在求解算术平均两级网络DEA模型时比启发式搜索过程的时间较少地获得更准确的解决方案。

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