A new ranking method for trapezoidal intuitionistic fuzzy numbers and its application to multi-criteria decision making

Lorena Popa
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Abstract

The ranking of intuitionistic fuzzy numbers is paramount in the decision making process in a fuzzy and uncertain environment. In this paper, a new ranking function is defined, which is based on Robust’s ranking index of the membership function and the non-membership function of trapezoidal intuitionistic fuzzy numbers. The mentioned function also incorporates a parameter for the attitude of the decision factors. The given method is illustrated through several numerical examples and is studied in comparison to other already-existent methods. Starting from the new classification method, an algorithm for solving fuzzy multi-criteria decision-making (MCDM) problems is proposed. The application of said algorithm implies accepting the subjectivity of the deciding factors, and offers a clear perspective on the way in which the subjective attitude influences the decision-making process. Finally, a MCDM problem is solved to outline the advantages of the algorithm proposed in this paper.
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梯形直觉模糊数一种新的排序方法及其在多准则决策中的应用
在模糊和不确定环境下的决策过程中,直觉模糊数的排序至关重要。本文基于梯形直觉模糊数的隶属函数和非隶属函数的鲁棒排序指标,定义了一种新的排序函数。上述函数还包含决策因素态度的参数。通过几个数值算例说明了所给出的方法,并与已有的方法进行了比较研究。从新的分类方法出发,提出了一种求解模糊多准则决策问题的算法。该算法的应用意味着接受决定因素的主观性,并为主观态度影响决策过程的方式提供了清晰的视角。最后,通过对一个MCDM问题的求解,概述了本文算法的优点。
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