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High-order Intuitionistic Fuzzy Cognitive Map Based on Evidential Reasoning Theory

机译:基于证据推理理论的高阶直觉模糊认知图

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An intuitionistic fuzzy cognitive map (IFCM) is an extension of a fuzzy cognitive map (FCM) that forms a graph-oriented fuzzy map describing both causal relationships between pairs of concepts and the states of concepts via intuitionistic fuzzy sets (IFSs). In contrast with an FCM, an IFCM provides much more flexibility in system modeling. However, IFCMs may lead to confusing or unreasonable results in system modeling since they do not fully consider the negative influence from conventional operations on IFSs, the activation process of concepts, and the problem of aggregating knowledge with different importance levels. To solve the challenges of IFCMs, we propose a high-order IFCM based on evidential reasoning (ER) (IFCMR) theory in this study. First, we introduce an evidential intuitionistic fuzzy aggregation (EIFA) operator and a multiplication operation on IFSs using an ER theory. Second, we establish the theory of IFCMR based on the EIFA operator and the newly introduced multiplication operation on IFSs. Third, we propose a scheme of aggregating IFCMRs with different importance levels using the EIFA operator, which can also be utilized to aggregate conflict knowledge and to determine objective connections in terms of an evidential cognitive map (ECM). Finally, several numerical and practical examples are employed to test and verify the feasibility and validity of IFCMRs in comparison with both IFCMs and ECMs.
机译:直觉模糊认知图(IFCM)是模糊认知图(FCM)的扩展,它形成了面向图的模糊图,描述了通过直觉模糊集(IFS)进行的概念对与概念状态之间的因果关系。与FCM相比,IFCM在系统建模方面提供了更大的灵活性。但是,IFCM可能不会在系统建模中导致混乱或不合理的结果,因为它们没有充分考虑常规操作对IFS的负面影响,概念的激活过程以及汇总具有不同重要性级别的知识的问题。为了解决IFCM的挑战,在这项研究中,我们提出了基于证据推理(ER)(IFCMR)理论的高阶IFCM。首先,我们引入一个基于证据的直觉模糊聚合(EIFA)运算符和一个基于ER理论的IFS乘法运算。其次,我们建立了基于EIFA运算符和新引入的IFS乘法运算的IFCMR理论。第三,我们提出了一种使用EIFA运算符聚合具有不同重要性级别的IFCMR的方案,该方案还可用于聚合冲突知识并根据证据认知图(ECM)确定客观联系。最后,与IFCM和ECM相比,采用了一些数值和实际示例来测试和验证IFMCR的可行性和有效性。

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