A method of multiple attribute group decision making based on 2-tuple linguistic dependent maclaurin symmetric mean operators

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Abstract

Aiming at multiple attribute group decision making (MAGDM) problems, especially the attribute values of 2-tuple linguistic numbers and the interrelationships between each attribute needing to be considered, this paper proposes a new method of analysis. Firstly, we developed a few new aggregation operators, like the 2-tuple linguistic dependent weighted Maclaurin symmetric mean (2TLDWMSM) operator, the 2-tuple linguistic dependent weighted generalized Maclaurin symmetric mean (2TLDWGMSM) operator, and the 2-tuple linguistic dependent weighted geometric Maclaurin symmetric mean (2TLDWGeoMSM) operator. In the above operators, Maclaurin symmetric mean (MSM) operators can take the relationships between each attribute into account and dependent operators can mitigate the unfair parameters� impact on the overall outcome, in which those �incorrect� and �prejudiced� parameters are distributed with low weights. Next, a method used by the 2TLDWMSM, 2TLDWGMSM, and 2TLDWGeoMSM operators for MAGDM is introduced. Finally, there is an explanative example to confirm the proposed approach and explain its availability and usefulness.

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APA

Feng, M., Liu, P., & Geng, Y. (2019). A method of multiple attribute group decision making based on 2-tuple linguistic dependent maclaurin symmetric mean operators. Symmetry, 11(1). https://doi.org/10.3390/sym11010031

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