Some complex intuitionistic uncertain linguistic Heronian mean operators and their application in multiattribute group decision making (Q2038589)
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scientific article; zbMATH DE number 7369062
| Language | Label | Description | Also known as |
|---|---|---|---|
| English | Some complex intuitionistic uncertain linguistic Heronian mean operators and their application in multiattribute group decision making |
scientific article; zbMATH DE number 7369062 |
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Some complex intuitionistic uncertain linguistic Heronian mean operators and their application in multiattribute group decision making (English)
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7 July 2021
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Summary: In this paper, a new decision-making algorithm has been presented in the context of a complex intuitionistic uncertain linguistic set (CIULS) environment. CIULS integrates the concept the complex of a intuitionistic fuzzy set (CIFS) and uncertain linguistic set (ULS) to deal with uncertain and imprecise information in a more proactive manner. To investigate the interrelation between the pairs of CIULSs, we combine the concept of the Heronian mean (HM) and the complex intuitionistic uncertain linguistic (CIUL) to describe some new operators, namely, CIUL arithmetic HM (CIULAHM), CIUL weighted arithmetic HM (CIULWAHM), CIUL geometric HM (CIULGHM), and CIUL weighted geometric HM (CIULWGHM). The main advantage of these suggested operators is that they considered the interaction between pairs of objects during the formulation process. Also, a number of distinct brief cases and properties of the operators are analyzed. In addition, based on these operators, we have stated a MAGDM (``multiattribute group decision-making'') problem-solving algorithm. The consistency of the algorithm is illustrated by a computational example that compares the effects of the algorithm with a number of well-known existing methods.
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