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Satisfaction-driven consensus model for social network MCGDM with incomplete information under probabilistic linguistic trust

机译:社会网络MCGDM与概率语言信任不完整信息的满意驱动的共识模型

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摘要

The advancement of science and technology and the development of network environments have made social network multi-criteria group decision making (SN-MCGDM) an interesting research topic. A satisfaction-driven consensus model that can be applied to incomplete information under probabilistic linguistic trust in SN-MCGDM is presented. First, to model the trust relationships among group experts more flexibly and accurately, the concept of a probabilistic linguistic trust function is defined. Based on this concept, a t-norm-based probabilistic linguistic trust propagation operator and a path-weighted averaging operator are proposed to construct the complete trust relationships among group experts. Then, the incomplete evaluation information in the decision matrix is estimated based on the trust relationships. To identify inconsistent experts, a new consensus measure is provided. To achieve the individual aims as well as to retain the initial opinions of the experts to the greatest extent, identification rules based on satisfaction along with suggestion rules with local modifications are then proposed to help experts reach consensus. Finally, an example followed by comparative analyses is provided to verify the effectiveness of the proposed consensus-reaching model.
机译:科技进步和网络环境的发展使社交网络多标准组决策(SN-MCGDM)成为有趣的研究主题。提出了一种满足驱动的共识模型,可以在SN-MCGDM中应用于概率语言信任下的不完整信息。首先,更灵活和准确地模拟组专家之间的信任关系,定义了概率语言信任函数的概念。基于该概念,提出了一种基于T-Norm的概率语言信任传播运算符和路径加权平均运算符,以构建集团专家之间的完全信任关系。然后,基于信任关系估计决策矩阵中的不完整评估信息。要确定不一致的专家,提供了新的共识措施。为了实现个人目标,并在最大程度上保留专家的初始意见,并提出了基于满意的识别规则以及当地修改的建议规则,帮助专家达成共识。最后,提供了一个例子,然后提供比较分析,以验证拟议的共识达成模型的有效性。

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