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直觉模糊层次分析法中创建共同优先级向量:基于熵和基于距离模型的比较

Creating a common priority vector in intuitionistic fuzzy AHP: a comparison of entropy-based and distance-based models

Annals of Operations Research · 2021
被引 28
ABS 3

中文导读

针对直觉模糊层次分析法中个体评分冲突问题,比较了基于熵和基于距离的两种聚合方法,并在公共交通发展决策的真实案例中验证了其可行性。

Abstract

Abstract In the case of conflicting individuals or evaluator groups, finding the common preferences of the participants is a challenging task. This statement also refers to Intuitionistic Fuzzy Analytic Hierarchy Process models, in which uncertainty of the scoring of individuals is well-handled, however, the aggregation of the modified scores is generally conducted by the conventional way of multi-criteria decision-making. This paper offers two options for this aggregation: the relatively well-known entropy-based, and the lately emerged distance-based aggregations. The manuscript can be considered as a pioneer work by analyzing the nature of distance-based aggregation under a fuzzy environment. In the proposed model, three clearly separable conflicting groups are examined, and the objective is to find their common priority vector, which can be satisfactory to all participant clusters. We have tested the model results on a real-world case study, on a public transport development decision-making problem by conducting a large-scale survey involving three different stakeholder groups of transportation. The comparison of the different approaches has shown that both entropy-based and distance-based techniques can provide a feasible solution based on their high similarity in the final ordinal and cardinal outcomes.

决策科学模糊逻辑多准则决策群体决策交通运输