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Analysis of fuzzy cognitive maps from ambiguity and fuzziness perspective

机译:从模糊和模糊的角度分析模糊认知图

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In this study, Fuzzy Cognitive Maps (FCMs), which are powerful tools for graphical representation of knowledge, are analyzed from an ambiguity and fuzziness perspective. In conventional FCMs the causal strengths are represented with singleton (crisp) fuzzy numbers, but recently, other researchers proposed different FCM structures where uniform (interval) or triangular fuzzy numbers are used in causal strength representation. Here, FCMs are analyzed by means of fuzziness and ambiguity measures that are proposed in literature to investigate the capability of models to represent uncertainties. In addition, two new measures, called the average ambiguity measure (AAM) and the average fuzziness measure (AFM), are proposed to indicate uncertainty representation of an FCM. A well-known FCM model of a public health system is used as a case study to show how the fuzzy weights determine the uncertainty representation of FCMs, and then the outcomes are discussed.
机译:在这项研究中,从歧义和模糊性的角度分析了模糊认知图(FCM),这是用于知识的图形表示的强大工具。在常规FCM中,因果强度用单例(酥脆)模糊数表示,但是最近,其他研究人员提出了不同的FCM结构,其中在因果强度表示中使用了统一(间隔)或三角形模糊数。在这里,FCM通过文献中提出的模糊性和歧义性措施进行分析,以研究模型表示不确定性的能力。另外,提出了两个新的度量,称为平均模糊度度量(AAM)和平均模糊度度量(AFM),以表示FCM的不确定性表示。以一个著名的公共卫生系统FCM模型为案例研究,以显示模糊权重如何确定FCM的不确定性表示,然后讨论结果。

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