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Deriving priority weights from hesitant fuzzy preference relations in view of additive consistency and consensus

机译:鉴于添加剂的一致性和共识,从犹豫模糊偏好关系中获得优先权权重

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摘要

Given that deriving priority weights is essential in group decision making, this study focuses on deriving priority weights from hesitant fuzzy preference relation (HFPR) in view of additive consistency and consensus. To achieve this goal, first, a new additive consistency concept of the HFPR is proposed. The main feature of the proposed additive consistency concept is that it considers all evaluation information provided by decision makers, that is, neither add values into nor remove values from hesitant fuzzy elements. Second, a programming model is constructed to verify the complete additive consistency of HFPR, an additive consistency index is suggested to validate its consistency degree, and then, a programming model is established to improve its consistency degree. Third, an algorithm is designed to derive a priority weight vector from the HFPR, and the proposed algorithm not only addresses the situation in which the HFPR is a complete and acceptable additive consistency. Fourth, a programming model is presented to determine the decision makers' weights, and then, a consensus measure index based on extraction priority weight vectors is introduced. Moreover, a programming model is constructed to derive the priority weights that correspond to expected consensus levels. Finally, the most cost-effective car selection problems are provided to illustrate the effectiveness of the proposed method. Comparative studies with several existing methods are also provided.
机译:鉴于导出优先权重量在集团决策中是必不可少的,本研究专注于考虑到添加剂的一致性和共识来源于犹豫不决的模糊偏好关系(HFPR)的优先权。为实现这一目标,首先,提出了HFPR的新添加剂一致性概念。所提出的添加剂一致性概念的主要特点是它考虑了决策者提供的所有评估信息,即既不会增加值,也不会从犹豫模糊元素中删除值。其次,构建了一个编程模型以验证HFPR的完整添加剂一致性,建议建立一种添加剂一致性指数来验证其一致性程度,然后建立编程模型以提高其一致性程度。第三,算法旨在导出来自HFPR的优先权重量向量,并且所提出的算法不仅解决了HFPR是完整且可接受的添加剂一致性的情况。第四,提出了一种编程模型来确定决策者的权重,然后,引入了基于提取优先权重量向量的共识测量指数。此外,构造了编程模型以导出对应于预期共识水平的优先级权重。最后,提供了最具成本效益的汽车选择问题,以说明所提出的方法的有效性。还提供了具有若干现有方法的比较研究。

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