Models for MAGDM with Dual Hesitant -rung Orthopair Fuzzy 2-tuple Linguistic MSM Operators and Their Application to COVID-19 Pandemic
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In this article, we introduce dual hesitant -rung orthopair fuzzy 2-tuple linguistic set (DH-ROFTLS), a new strategy for dealing with uncertainty that incorporates a 2-tuple linguistic term into dual hesitant -rung orthopair fuzzy set (DH-ROFS). DH-ROFTLS is a better way to deal with uncertain and imprecise information in the decision-making environment. We elaborate the operational rules, based on which, the DH-ROFTL weighted averaging (DH-ROFTLWA) operator and the DH-ROFTL weighted geometric (DH-ROFTLWG) operator are presented to fuse the DH-ROFTL numbers (DH-ROFTLNs). As Maclaurin symmetric mean (MSM) aggregation operator is a useful tool to model the interrelationship between multi-input arguments, we generalize the traditional MSM to aggregate DH-ROFTL information. Firstly, the DH-ROFTL Maclaurin symmetric mean (DH-ROFTLMSM) and the DH-ROFTL weighted Maclaurin symmetric mean (DH-ROFTLWMSM) operators are proposed along with some of their desirable properties and some special cases. Further, the DH-ROFTL dual Maclaurin symmetric mean (DH-ROFTLDMSM) and weighted dual Maclaurin symmetric mean (DH-ROFTLWDMSM) operators with some properties and cases are presented. Moreover, the assessment and prioritizing of the most important aspects in multiple attribute group decision-making (MAGDM) problems is analysed by an extended novel approach based on the proposed aggregation operators under DH-ROFTL framework. At long last, a numerical model is provided for the selection of adequate medication to control COVID-19 outbreaks to demonstrate the use of the generated technique and exhibit its adequacy. Finally, to analyse the advantages of the proposed method, a comparison analysis is conducted and the superiorities are illustrated.
Naz S, Akram M, Saeid A, Saadat A Expert Syst. 2022; :e13005.
PMID: 36404957 PMC: 9648502. DOI: 10.1111/exsy.13005.