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Diverse Ranking Approach in MCDM Based on Trapezoidal Intuitionistic Fuzzy Numbers

机译:基于梯形直觉模糊数的MCDM中不同的排名方法

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Intuitionistic fuzzy set (IFS) is a generalization of the fuzzy set that is characterized by the membership and non-membership function. It is proven that IFS improves the drawbacks in fuzzy set since it is designed to deal with the uncertainty aspects. In spite of this advantage, the selection of the ranking approach is still one of the fundamental issues in IFS operations. Thus, this paper intends to compare three ranking approaches of the trapezoidal intu-itionistic fuzzy numbers (TrIFN). The ranking approaches involved are; expected value-based approach, centroid-based approach, and score function-based approach. To achieve the objective, one numerical example in prioritizing the alternatives using intuitionistic fuzzy multi-criteria decision making (IF-MCDM) are provided to illustrate the comparison of these ranking approaches. Based on the comparison, it was found that the alternatives MCDM problems can be ranked easily in efficient and accurate manner.
机译:直觉模糊集(IFS)是模糊集的概括,其特征在于成员资格和非隶属函数。据证明,如果旨在处理不确定性方面,IFS可以提高模糊集中的缺点。尽管如此,排名方法的选择仍然是IFS操作中的基本问题之一。因此,本文打算比较梯形Intu-Intu-Ituiionistic模糊数(TRIFN)的三种排名方法。所涉及的排名方法是;基于预期的基于价值的方法,基于质心的方法和基于函数的方法。为了实现目标,提供了一种在优先考虑使用直觉模糊多标准决策(IF-MCDM)的替代方案的一个数值示例以说明这些排名方法的比较。基于比较,发现替代品MCDM问题可以以高效和准确的方式排名。

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