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Alternative mixed integer linear programming models for identifying the most efficient decision making unit in data envelopment analysis

机译:用于识别数据包络分析中最有效决策单元的替代混合整数线性规划模型

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摘要

A mixed integer linear model for selecting the best decision making unit (DMU) in data envelopment analysis (DEA) has recently been proposed by Foroughi [Foroughi, A. A. (2011a). A new mixed integer linear model for selecting the best decision making units in data envelopment analysis. Computers and Industrial Engineering, 60(4), 550-554], which involves many unnecessary constraints and requires specifying an assurance region (AR) for input weights and output weights, respectively. Its selection of the best DMU is easy to be affected by outliers and may sometimes be incorrect. To avoid these drawbacks, this paper proposes three alternative mixed integer linear programming (MILP) models for identifying the most efficient DMU under different returns to scales, which contain only essential constraints and decision variables and are much simpler and more succinct than Foroughi's. The proposed alternative MILP models can make full use of input and output information without the need of specifying any assurance regions for input and output weights to avoid zero weights, can make correct selections without being affected by outliers, and are of significant importance to the decision makers whose concerns are not DMU ranking, but the correct selection of the most efficient DMU. The potential applications of the proposed alternative MILP models and their effectiveness are illustrated with four numerical examples.
机译:Foroughi [Foroughi,A. A.(2011a)最近提出了一种在数据包络分析(DEA)中选择最佳决策单位(DMU)的混合整数线性模型。一种新的混合整数线性模型,用于在数据包络分析中选择最佳决策单位。 [Computers and Industrial Engineering,60(4),550-554],其中涉及许多不必要的约束,并且需要分别为输入权重和输出权重指定保证区域(AR)。它选择的最佳DMU容易受到异常值的影响,有时可能是错误的。为避免这些弊端,本文提出了三种备选的混合整数线性规划(MILP)模型,用于在不同的规模收益下识别最有效的DMU,该模型仅包含基本约束和决策变量,并且比Foroughi的更为简单,简洁。拟议的替代MILP模型可以充分利用输入和输出信息,而无需为输入和输出权重指定任何保证区域来避免权重为零,可以进行正确的选择而不受异常值的影响,并且对于决策至关重要制造商关注的不是DMU排名,而是正确选择最有效的DMU。通过四个数值示例说明了所提出的替代MILP模型的潜在应用及其有效性。

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