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A methodology for developing adaptive fuzzy cognitive maps for decision support

机译:开发用于决策支持的自适应模糊认知图的方法

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Differential Hebbian Learning (DHL) was proposed by Kosko as an unsupervised learning scheme for Fuzzy Cognitive Maps (FCMs). DHL can be used with a sequence of state vectors to adapt the causal link strengths of an FCM. However, it does not guarantee learning of the sequence by the FCM and no concrete procedures for the use of DHL has been developed. In this paper a formal methodology is proposed for using DHL in the development of FCMs in a decision support context. The four steps in the methodology are: (1) Creation of a crisp cognitive map; (2) Identification of event sequences for use in DHL; (3) Event sequence encoding using DHL; (4) Revision of the trained FCM. Feasibility of the proposed methodology is demonstrated with an example involving a dynamic system with feedback based on a real-life scenario.
机译:Kosko提出了差分赫布学习(DHL)作为模糊认知图(FCM)的无监督学习方案。 DHL可以与一系列状态向量一起使用,以适应FCM的因果联系强度。但是,它不能保证由FCM学习序列,也没有开发出使用DHL的具体程序。在本文中,提出了在决策支持环境中在DCM开发中使用DHL的正式方法。该方法的四个步骤是:(1)创建清晰的认知图; (2)识别用于DHL的事件序列; (3)使用DHL进行事件序列编码; (4)修订训练有素的FCM。所举方法的可行性通过一个涉及动态系统的示例进行了演示,该动态系统具有基于实际场景的反馈。

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