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Normal wiggly hesitant fuzzy linguistic power Hamy mean aggregation operators and their application to multi-attribute decision-making

机译:正常摆动犹豫的模糊语言能力Hamy均值聚合算子及其在多属性决策中的应用

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摘要

As a useful tool for information representation, hesitant fuzzy linguistic term sets (HFLTSs) have received extensive attention and in-depth discussion in recent years. However, in real decision making, it is impossible for decision makers to express all preference information only through a few continuous linguistic terms. Much valuable information is hidden in the original evaluation information. Thus, this paper mainly studies how to mine deeper uncertain information from the original hesitant fuzzy linguistic evaluation information. To achieve this goal, we present a new representation tool called the normal wiggly hesitant fuzzy linguistic term set (NWHFLTS). The NWHFLTS not only retains the original evaluation information, but it also delivers and quantifies potential uncertain information. First, we propose some basic theories of NWHFLTS, such as some basic operational rules, score function and distance measures between two NWHFLTSs. Then, based on the distinctive features of the power average (PA) operator and Hamy mean (HAM) operator, we propose two new information aggregation operators, i.e., the normal wiggly hesitant fuzzy linguistic power Hamy mean (NWH-FLPHAM) operator and its weighted form (NWHFLPWHAM). Furthermore, based on the NWHFLPWHAM operator, a new method is proposed to address multi-attribute decision-making (MADM) problems. Finally, we use a numerical example to show the specific calculation steps and provide a comparison with other methods to validate the effectiveness and advancement of our proposed method.
机译:犹豫的模糊语言术语集(HFLTS)作为信息表示的有用工具,近年来受到了广泛的关注和深入的讨论。但是,在实际决策中,决策者不可能仅通过几个连续的语言术语来表达所有偏好信息。原始评估信息中隐藏了许多有价值的信息。因此,本文主要研究如何从原始犹豫的模糊语言评价信息中挖掘更深的不确定信息。为了实现此目标,我们提出了一种新的表示工具,称为正常摆动犹豫的模糊语言术语集(NWHFLTS)。 NWHFLTS不仅保留原始评估信息,而且还传递和量化潜在的不确定信息。首先,我们提出了NWHFLTS的一些基本理论,例如一些基本的操作规则,得分函数和两个NWHFLTS之间的距离度量。然后,根据幂平均(PA)算子和哈米均值(HAM)算子的显着特征,我们提出了两个新的信息聚合算子,即正常摇摆犹豫的模糊语言能力哈米均值(NWH-FLPHAM)算子及其加权形式(NWHFLPWHAM)。此外,基于NWHFLPWHAM运算符,提出了一种解决多属性决策(MADM)问题的新方法。最后,我们用一个数值例子来说明具体的计算步骤,并与其他方法进行比较,以验证所提出方法的有效性和先进性。

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