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首页> 外文期刊>International Journal of Fuzzy Systems >A Generalized TOPSIS Method for Intuitionistic Fuzzy Multiple Attribute Group Decision Making Considering Different Scenarios of Attributes Weight Information
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A Generalized TOPSIS Method for Intuitionistic Fuzzy Multiple Attribute Group Decision Making Considering Different Scenarios of Attributes Weight Information

机译:考虑不同的属性权重信息的直观模糊多属性组决策的广义TopSis方法

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摘要

In this paper, the technique for order preference by similarity to an ideal solution (TOPSIS) method is extended to solve multiple attribute group decision making (MAGDM) problems under intuitionistic fuzzy environment. The input data involve assessment information about the alternatives, the weights of the decision makers (DMs) provided by the experts, and weights of the multiple attributes. Here, we generalize the TOPSIS method under the realm of both the intuitionistic fuzzy set (IFS) and interval valued intuitionistic fuzzy set (IVIFS), taking into consideration different variations of weights of the attributes provided by the DMs depending upon their psychology, subjectivity and cognitive thinking. The assessment information and attributes weights are aggregated over each decision maker's weight using weighted arithmetic and weighted geometric operators. The score functions, namely, the advantage and disadvantage scores are implemented to capture the preferences of the DMs in the context of reliability of information. These score functions are based on the positive contribution of the parameters of IFS, i.e. membership, non-membership and hesitation degrees, evaluating the performance of each alternative with the rest on the given attributes. The performance degree of each alternative is then determined to select the preferable alternative using strength and weakness scores as a function of the obtained attribute weight vector. Numerical illustrations in the form of an investment decision making problem are demonstrated in the context of both the IFS and IVIFS, taking different forms of attribute weight information so as to better reflect the working of the proposed methodology. Further, the methodology is compared with some existing works and major highlights of the proposed work are presented.
机译:在本文中,扩展了通过相似性与理想解决方案(TopSIS)方法的顺序优先技术,以解决直觉模糊环境下的多个属性组决策(MAGDM)问题。输入数据涉及有关替代方案的评估信息,专家提供的决策者(DMS)的权重以及多个属性的权重。在这里,我们在直觉模糊集合(IFS)和间隔值的直觉模糊集(IVIF)的领域下概括了TOPSIS方法,考虑到DMS提供的各个属性的权重的不同变化,这取决于他们的心理学,主体性和认知思维。使用加权算术和加权几何运算符,评估信息和属性权重聚合在每个决策者的权重中。得分函数,即,实现优点和缺点分数以捕获信息可靠性的DMS的偏好。这些分数函数基于IFS的参数的积极贡献,即成员资格,非成员资格和犹豫学位,评估每个替代方案的性能,在给定属性上的其余部分。然后确定每种替代方案的性能程度以使用强度和弱度分数作为所获得的属性权重向量的函数来选择优选的替代方案。在IFS和IVIF的上下文中,采用不同形式的属性权重信息,以采用不同形式的属性权重信息,以便更好地反映所提出的方法的工作来证明了投资决策问题的数值图。此外,该方法与一些现有的作品进行比较,并提出了拟议工作的主要亮点。

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