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Grey risky multi-attribute decision-making method based on regret theory and EDAS

机译:基于后悔理论和EDAS的灰色风险多属性决策方法

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Purpose - The purpose of this paper is to advance a new grey risky multi-attribute decision-making (RMADM) method from the perspective of regret aversion, which is based on the general grey numbers (GGNs) taking the form of kernel and degree of greyness. Design/methodology/approach - First, the normalised grey decision-making matrix is obtained on the basis of kernel and greyness degree of GGNs. Then the regret theory is integrated into the decision-making process by constructing the grey perceived utility function based on GGNs. Finally, the method of evaluation based on distance from average solution (EDAS) is applied to handle with the ranking problem because of its efficiency, stability as well as simplicity. Findings - GGNs have more powerful capacity in expressing uncertainty than interval grey numbers, so the method can solve a larger number of RMADM problems in uncertain and imprecise environments. Meanwhile, the method fully considers the psychological behaviour of the decision makers, which is more applicable to the real world. It is the supplement and perfection of the existing RMADM methods. Originality/value - The RMADM problem, the grey regret-rejoice function and the EDAS method are all introduced for the first time with GGNs in the form of kernel and degree of greyness. At the same time, the EDAS method is also the first time to be used in combination with the grey RMADM method based on the regret theory.
机译:目的-本文的目的是从后悔厌恶的观点出发,提出一种新的灰色风险多属性决策(RMADM)方法,该方法基于采用内核形式和程度的通用灰度数(GGN)。灰色。设计/方法/方法-首先,根据GGN的核和灰度度获得归一化的灰色决策矩阵。然后,通过构建基于GGN的灰色感知效用函数,将后悔理论整合到决策过程中。最后,基于平均解距离的评估方法(EDAS)由于其效率,稳定性和简单性而被用于处理排名问题。研究结果-GGN具有比间隔灰度数更大的表达不确定性的能力,因此该方法可以解决不确定性和不精确环境中的大量RMADM问题。同时,该方法充分考虑了决策者的心理行为,更适用于现实世界。它是对现有RMADM方法的补充和完善。原创性/价值-RMADM问题,灰色后悔函数和EDAS方法都是首次以GGN的内核和灰度级形式引入的。同时,EDAS方法也是基于后悔理论的灰色RMADM方法的首次结合使用。

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