Abstract

In multiple attribute decision-making in an intuitionistic fuzzy environment, the decision information is sometimes given by intuitionistic fuzzy soft sets. In order to address intuitionistic fuzzy decision-making problems in a more efficient way, many scholars have produced increasingly better procedures for ranking intuitionistic fuzzy values. In this study, we further investigate the problem of ranking intuitionistic fuzzy values from a geometric point of view, and we produce related applications to decision-making. We present Minkowski score functions of intuitionistic fuzzy values, which are natural generalizations of the expectation score function and other useful score functions in the literature. The rationale for Minkowski score functions lies in the geometric intuition that a better score should be assigned to an intuitionistic fuzzy value farther from the negative ideal intuitionistic fuzzy value. To capture the subjective attitude of decision makers, we further propose the Minkowski weighted score function that incorporates an attitudinal parameter. The Minkowski score function is a special case corresponding to a neutral attitude. Some fundamental properties of Minkowski (weighted) score functions are examined in detail. With the aid of the Minkowski weighted score function and the maximizing deviation method, we design a new algorithm for solving decision-making problems based on intuitionistic fuzzy soft sets. Moreover, two numerical examples regarding risk investment and supplier selection are employed to conduct comparative analyses and to demonstrate the feasibility of the approach proposed in this article.

Highlights

  • Multiple attribute decision making (MADM) refers to the general process of ranking a collection of alternatives or choosing the best alternative(s) from them, by taking into account the evaluations of all the alternatives against several attributes

  • The current study aims to introduce the Minkowski score function that enables us to prioritize all intuitionistic fuzzy values (IFVs) in L∗ by adjusting parameters if necessary

  • Based on the geometric intuition that a better score should be assigned to an intuitionistic fuzzy value farther from the negative ideal intuitionistic fuzzy value α∗ = (0, 1), Minkowski score functions of intuitionistic fuzzy values were proposed for comparing intuitionistic fuzzy values in the complete lattice L∗

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Summary

Introduction

Multiple attribute decision making (MADM) refers to the general process of ranking a collection of alternatives or choosing the best alternative(s) from them, by taking into account the evaluations of all the alternatives against several attributes. Maji et al [25] introduced the concept of intuitionistic fuzzy soft sets (IFSSs) This hybrid structure yields an effective framework to describe and analyze more general MADM problems [26,27]. This model and its applications in decision-making were further expanded by Agarwal et al [28], who devised generalized intuitionistic fuzzy soft sets. An algorithm is designed for solving MADM problems based on intuitionistic fuzzy soft sets This algorithm mainly builds on the Minkowski weighted score function, the maximizing deviation method for the determination of attribute weights, and the weighted intuitionistic fuzzy averaging (SWIFA) operator.

Preliminaries
Order Relations for Ranking IFVs
Minkowski Score Functions
Minkowski Weighted Score Functions
A New Intuitionistic Fuzzy MADM Method
Wei’s Method to Determine Weight Vector of Attributes
A New Algorithm
An Investment Problem
A Supplier Selection Problem
Conclusions
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