Multi objective constrained optimisation of data envelopment analysis by differential evolution

Narravula Ankaiah, V. Ravi
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引用次数: 6

Abstract

Traditional data envelopment analysis (DEA) has serious shortcomings: 1) linear programming is run as many times as the number of decision making units (DMUs) resulting in no common set of weights for them; 2) maximising efficiency, a nonlinear optimisation problem, is approximated by a linear programming problem (LPP); 3) the efficiencies obtained by DEA are only relative. Hence, we propose multi objective DEA (MODEA) solved by differential evolution. Here, we maximise the efficiencies of all the DMUs simultaneously. We developed two variants of the MODEA using: 1) scalar optimisation; 2) Max-Min approach. The effectiveness of the proposed methods is demonstrated on eight datasets taken from literature. We also applied NSGA-II to solve the nonlinear optimisation problem in the strict multi objective sense. It was found that MODEA1, MODEA2 and NSGA-II are comparable, as evidenced by Spearman's rank correlation coefficient test. However, MODEA1, MODEA2, and NSGA-II yielded better discrimination among the DMUs compared to the traditional DEA.
基于差分进化的数据包络分析多目标约束优化
传统的数据包络分析(DEA)存在着严重的缺点:1)线性规划的运行次数与决策单元(dmu)的运行次数一样多,导致它们没有共同的权值集;2)效率最大化,一个非线性优化问题,近似于线性规划问题(LPP);3) DEA获得的效率只是相对的。为此,我们提出了用差分进化方法求解多目标数据分析(MODEA)。在这里,我们同时最大化所有dmu的效率。我们开发了MODEA的两个变体:1)标量优化;2) Max-Min法。从文献中提取的8个数据集证明了所提出方法的有效性。并应用NSGA-II解决了严格多目标意义下的非线性优化问题。经Spearman秩相关系数检验,发现MODEA1、MODEA2和NSGA-II具有可比性。然而,与传统的DEA相比,MODEA1、MODEA2和NSGA-II在dmu之间具有更好的辨别能力。
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