Group decision support model based on sequential additive complementary pairwise comparisons

作者:Fang Liu, Jia-Wei Zhang, Zhang-Hua Luo

摘要

In group decision support systems, it is important on how to process and manage individual decision information. In the paper, a sequential model is proposed to manage individual judgements with additively reciprocal property over paired alternatives. The process of realizing additive complementary pairwise comparisons (ACPCs) is captured. A real-time feedback mechanism is constructed to address the irrational behavior of individuals. An optimization model is established and solved by using the particle swarm optimization (PSO) algorithm, such that the consistency of individual judgements can be improved fast yet effectively. For the aggregation of individual decision information in group decision making (GDM), the weighted averaging operator is used. It is found that when all individual judgements are acceptably additively consistent, the collective matrix is with acceptable additive consistency. Under the control of individual consistency degrees, the approach of reaching consensus in GDM is further proposed. By comparing with some existing models, the observations reveal that the sequential model of originating additive complementary pairwise comparisons possesses the ability to rationally manage individual decision information.

论文关键词:Group decision making (GDM), Additive complementary pairwise comparisons (ACPCs), Sequential model, Particle swarm optimization (PSO), Acceptable additive consistency, Consensus

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论文官网地址:https://doi.org/10.1007/s10489-021-02248-y