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Defective alternatives detection-based multi-attribute intuitionistic fuzzy large-scale decision making model

机译:基于缺陷替代检测的多属性直觉模糊大规模决策模型

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This paper focuses on multi-attribute intuitionistic fuzzy large-scale decision making (LSDM) scenarios. The alternatives are described by attributes in the LSDM model. The decision failure may be caused by unqualified alternative being the final decision. To avoid this, we propose a Defective Alternative Detection-based multi-attribute intuitionistic fuzzy LSDM (DAD-LSDM) model. The model consists of two stages: the Defective Alternatives Detection (DAD) stage and the corresponding Intuitionistic Fuzzy Consensus Reaching Process (IF-CRP) stage. In the DAD stage, it is easy to recognize the defective alternatives by calculating the attributes' scores and to accordingly improve them with the attributes against the corresponding alternatives. In the IF-CRP stage, by utilizing an intuitionistic fuzzy clustering method and similarity calculation, we detect and manage the potential non-cooperative decision makers to increase the consensus degree of the LSDM event. By implementing the DAD stage before the IF-CRP stage, we can avoid those excessively defective alternatives to be chosen and can also improve the quality of slightly defective alternatives. It not only decreases the risk of decision failure and improves the feasibility of the provided alternatives, but also guarantees the validity and scientificity of the following IF-CRP stage. With a numerical example, we show the DAD-LSDM model can well detect and classify the defective alternatives as well as improve the slightly defective alternatives. The decision makers finally reach a high consensus with detecting and managing the non-cooperative decision makers. The DAD-LSDM model is feasible and efficient in practice for the intuitionistic fuzzy LSDM scenarios. (C) 2019 Elsevier B.V. All rights reserved.
机译:本文着重研究多属性直觉模糊大规模决策(LSDM)方案。替代方法由LSDM模型中的属性描述。决策失败可能是由不合格的替代方案(作为最终决策)引起的。为了避免这种情况,我们提出了一种基于缺陷替代检测的多属性直觉模糊LSDM(DAD-LSDM)模型。该模型包括两个阶段:缺陷选择检测(DAD)阶段和相应的直觉模糊共识到达过程(IF-CRP)阶段。在DAD阶段,很容易通过计算属性得分来识别有缺陷的替代方案,并使用属性相对于相应的替代方案进行相应的改进。在IF-CRP阶段,通过使用直觉模糊聚类方法和相似度计算,我们可以检测和管理潜在的非合作决策者,以提高LSDM事件的共识度。通过在IF-CRP阶段之前实施DAD阶段,我们可以避免选择那些缺陷过多的替代品,并且还可以提高轻微缺陷的替代品的质量。它不仅降低了决策失败的风险,提高了所提供替代方案的可行性,而且还保证了后续IF-CRP阶段的有效性和科学性。通过一个数值示例,我们证明了DAD-LSDM模型可以很好地检测和分类缺陷替代品,并改善轻微缺陷的替代品。决策者最终在检测和管理非合作决策者方面达成了高度共识。对于直觉模糊LSDM场景,DAD-LSDM模型在实践中既可行又有效。 (C)2019 Elsevier B.V.保留所有权利。

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