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Interactive evolutionary optimization of fuzzy cognitive maps

机译:模糊认知图的交互式进化优化

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Modeling dynamic systems with Fuzzy Cognitive Maps (FCMs) is characterized by the simplicity of the model representation and its execution. Furthermore, FCMs can easily incorporate human knowledge from the given domain. Despite the many advantages of FCMs, there are some drawbacks, too. The quality of knowledge obtained from the domain experts, and any differences and uncertainties in their opinions, has to be improved by different methods. We propose a new approach for handling incompleteness and natural uncertainty in expert evaluation of the connection matrix of a particular FCM. It is based on partial expert estimations and evolutionary algorithms in the role of an expert-driven optimization and outside of the FCM optimization (adaptation) research area known as Interactive Evolutionary Computing (IEC). In the present paper, a modification of IEC for the purposes of FCM optimization is presented, referred to as the IEO-FCM method, i.e., the Interactive Evolutionary Optimization of Fuzzy Cognitive Maps. Experimental results on two control problems suggest that the IEO-FCM method can improve the quality of an FCM even in situations without any measured data necessary for other known learning algorithms.
机译:使用模糊认知图(FCM)对动态系统进行建模的特征在于模型表示及其执行的简单性。此外,FCM可以轻松整合来自给定领域的人类知识。尽管FCM具有许多优点,但也存在一些缺点。从领域专家那里获得的知识质量以及他们意见中的任何分歧和不确定性都必须通过不同的方法来提高。我们提出了一种新方法,用于处理特定FCM连接矩阵的专家评估中的不完整和自然不确定性。它基于部分专家估计和演化算法,该专家估计和演化算法是由专家驱动的优化,在FCM优化(适应)研究领域之外,被称为交互式进化计算(IEC)。在本文中,提出了针对FCM优化目的的IEC修改,称为IEO-FCM方法,即模糊认知图的交互式进化优化。关于两个控制问题的实验结果表明,即使在没有其他已知学习算法所需的任何测量数据的情况下,IEO-FCM方法也可以提高FCM的质量。

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