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A partial binary tree DEA-DA cyclic classification model for decision makers in complex multi-attribute large-group interval-valued intuitionistic fuzzy decision-making problems

机译:面向复杂多属性大群区间值直觉模糊决策问题的决策者的局部二叉树DEA-DA循环分类模型

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This paper proposes the idea of combining "interest groups" with the practical decision information to classify the decision makers (DMs) in complex multi-attribute large-group decision-making (CMALGDM) problems in interval-valued intuitionistic fuzzy (IVIF) environment. It constructs a partial binary tree DEA-DA cyclic classification model to achieve the multiple groups' classification of DMs. Not only does this method provide references for the classification of DMs when the decision information is known, but it also lays foundations for DMs' effective weight determination and the aggregation of decision information. First, this paper normalizes all of the cost attributes into benefit attributes to avoid the wrong decision result. Second, it employs the C-OWA operator to transform IVIF number (IVIFN) samples into single-valued samples. With respect to this transformation, this paper provides the corresponding BUM functions of DMs according to their risk attitudes; therefore, the preference information of DMs can be more objectively aggregated. Third, this paper adopts the partial binary tree DEA-DA cyclic classification model to present an accurate classification of DMs. Thus, for each interest group, group members with different interest preferences can be distinguished and distributed to the appropriate groups. Finally, to show the feasibility and validity of the model, we give an illustrative example.
机译:本文提出了将“兴趣群”与实际决策信息相结合的思想,以对区间值直觉模糊(IVIF)环境中复杂的多属性大群决策(CMALGDM)问题中的决策者(DM)进行分类。构造了部分二叉树DEA-DA循环分类模型,以实现对DM的多组分类。该方法不仅在决策信息已知时为DM的分类提供参考,而且为DM的有效权重确定和决策信息的汇总奠定了基础。首先,本文将所有成本属性归一化为收益属性,以避免错误的决策结果。其次,它使用C-OWA运算符将IVIF数(IVIFN)样本转换为单值样本。针对这种转变,本文根据决策者的风险态度,提供了决策者相应的BUM功能。因此,可以更加客观地汇总DM的偏好信息。第三,本文采用偏二叉树DEA-DA循环分类模型对DMs进行了准确分类。因此,对于每个兴趣组,可以区分具有不同兴趣偏好的组成员并将其分配给适当的组。最后,为了说明该模型的可行性和有效性,我们给出一个说明性的例子。

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