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首页> 外文期刊>Information Fusion >Score-HeDLiSF: A score function of hesitant fuzzy linguistic term set based on hesitant degrees and linguistic scale functions: An application to unbalanced hesitant fuzzy linguistic MULTIMOORA
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Score-HeDLiSF: A score function of hesitant fuzzy linguistic term set based on hesitant degrees and linguistic scale functions: An application to unbalanced hesitant fuzzy linguistic MULTIMOORA

机译:得分 - Hedlisf:基于犹豫性度和语言尺度功能的犹豫模糊语言术语集得分功能:对不平衡犹豫不平的模糊语言Multimoora的应用

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摘要

The Hesitant Fuzzy Linguistic Term Set (HFLTS) is a powerful tool to depict experts' cognitive complex linguistic information. This paper aims to propose a new score function of HFLTS to eliminate the defects of the subscript-based operations on HFLTSs. Hesitant degree is an intrinsic feature of HFLTS, and the greater the hesitant degree is, the lower the quality of the HFLTS will be. The asymmetric and non-uniform distributed linguistic term set is commonly used when expressing cognitive complex linguistic information. Considering both the hesitant degrees and the unbalanced linguistic terms in evaluations, a new score function of HFLTS, named the Score-HeDLiSF, is proposed based on the psychology of experts. The Score-HeDLiSF shows many advantages over the existing score function of HFLTS in terms of representing both the balanced and unbalanced linguistic information with hesitant degree and linguistic scale functions. Afterward, a hesitant degree-based weighting method is proposed to determine the weights of experts and criteria. To derive robust decision results, the MULTIMOORA method is improved by integrating the ORESTE method, and then we extend it to the unbalanced hesitant fuzzy linguistic context based on the introduced score function of HFLTS. Finally, an investment problem regarding the shared bicycles is solved by the proposed unbalanced HFL-MULTIMOORA method. The advantages of the unbalanced HFL-MULTIMOORA are highlighted by comparative analyses with two well-known multi-criteria decision-making methods.
机译:犹豫不决的模糊语言术语集(HFLTS)是一个有力的工具,可以描绘专家的认知复杂语言信息。本文旨在提出HFLT的新分数功能,以消除对HFLTS的下标行动的缺陷。犹豫学位是HFLT的内在特征,鲁莽的程度越大,HFL的质量越低。在表达认知复杂语言信息时通常使用不对称和非均匀分布式语言术语集。考虑到评估的犹豫性度和不平衡的语言术语,基于专家的心理提出了名为得分-HEDLISF的HFLT的新分数函数。得分-HEDLISF在具有犹豫学位和语言尺度函数的均衡和不平衡语言信息方面,对HFL的现有得分功能进行了许多优点。之后,提出了一种犹豫的基于程度的权重方法来确定专家的权重和标准。为了导出稳健的决策结果,通过集成Oreste方法来提高Multimoora方法,然后基于HFLT的引入函数来扩展到不平衡犹豫不平的模糊语言上下文。最后,通过提出的不平衡HFL-Multimoora方法解决了关于共用自行车的投资问题。通过具有两个众所周知的多标准决策方法的比较分析,突出了不平衡HFL-Multimoora的优点。

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