首页> 外文期刊>Arabian Journal for Science and Engineering. Section A, Sciences >A Novel Two‑Stage Multi‑Criteria Decision‑Making Method Based on Interval‑Valued Pythagorean Fuzzy Aggregation Operators with Self‑Confidence Levels
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A Novel Two‑Stage Multi‑Criteria Decision‑Making Method Based on Interval‑Valued Pythagorean Fuzzy Aggregation Operators with Self‑Confidence Levels

机译:一种基于间隔高价毕达哥仑模糊聚集运算符的新型两级多标准决策方法,具有自置信水平

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Due to insufficient information in multi-criteria decision-making (MCDM) problems, the decision values given by expertsare often fuzzy and uncertain. As an extension of Pythagorean fuzzy set (PFS), interval-valued Pythagorean fuzzy (IPF) setis a more effective and powerful tool to handle fuzzy information in decision problems. But, there are two key issues thatneeded to be solved: weights of experts in the IPF environment and IPF aggregation operators. For these issues, a two-stageMCDM method is constructed in the IPF environment. In the first stage, a novel method for determining the weights ofexperts is proposed by introducing IPF set (IPFS) into social networks. To do that, the concepts of trust function (TF) andtrust score (TS) in the IPF environment are defined to obtain the objective weights of experts. Meanwhile, the subjectiveweights of experts are obtained from the number of experts. Afterward, the objective weight and subjective weight of eachexpert are combined to derive the weight of each expert. In the second stage, a novel weighted sum model (WSM) with novelIPF aggregation operators is constructed to rank alternatives. Considering the psychological behavior of experts, that is, selfconfidencelevel, four IPF aggregation operators with self-confidence levels are defined, namely, the self-confidence intervalvaluedPythagorean fuzzy weighted averaging (SC-IPFWA) and ordered weighted averaging (SC-IPFOWA) operator, theself-confidence interval-valued Pythagorean fuzzy weighted geometric (SC-IPFWG) and ordered weighted geometric (SCIPFOWG)operator. Finally, a numerical case is used to verify the effectiveness of the proposed two-stage MCDM method.
机译:由于多标准决策(MCDM)问题中的信息不足,专家给出的决策价值通常是模糊和不确定的。作为Pythagorean模糊集(PFS)的扩展,间隔valive毕达哥拉斯模糊(IPF)集是一个更有效和强大的工具,可以在决策问题中处理模糊信息。但是,有两个关键问题需要解决:IPF环境和IPF聚合运营商的专家权重。对于这些问题,一个两阶段MCDM方法是在IPF环境中构建的。在第一阶段,一种确定重量的新方法通过将IPF集(IPF)纳入社交网络来提出专家。要做到这一点,信任函数(TF)和IPF环境中的信任分数(TS)被定义为获得专家的客观权重。同时,主观专家的重量是从专家人数获得的。之后,每个目标重量和主观重量专家组合起来衍生每个专家的重量。在第二阶段,一种新型加权和模型(WSM),具有新颖IPF聚合运算符被构建为排列替代方案。考虑到专家的心理行为,即自信心等级,定义了具有自置信水平的四个IPF聚合运营商,即自信心间隔Pythagorean模糊加权平均(SC-IPFWA)和有序加权平均(SC-IPFowa)运算符,自信间隔的蟒蛇模糊加权几何(SC-IPFWG)和有序加权几何(SCIPFOWG)操作员。最后,使用数值案例来验证所提出的两级MCDM方法的有效性。

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