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Fuzzy cognitive maps learning using Artificial Bee Colony optimization

机译:模糊认知地图使用人工蜂殖民地优化学习

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Most of the dynamic systems are hard to express in mathematical models due to their complex, nonlinear and uncertain characteristics. Thus, advanced methodologies are needed, using human experience, present expert knowledge and historical data. Hence fuzzy cognitive maps are quite convenient, simple, powerful and practical tools for simulation and analysis of these kinds of dynamic systems. Yet, human experts are subjective and cannot handle relatively complex fuzzy cognitive maps (FCMs); hence, new approaches are required to develop for an automatic building of fuzzy cognitive maps. In this study, Artificial Bee Colony (ABC) global optimization algorithm is proposed for the first time in literature for an automated generation of fuzzy cognitive maps from historical data. An ERP management model is used as the illustrative example to obtain the data for training and validation. The obtained results show the success of the ABC learning for FCMs.
机译:由于其复杂,非线性和不确定的特征,大多数动态系统都很难在数学模型中表达。 因此,需要使用人类经验,目前专家知识和历史数据所需的先进方法。 因此,模糊认知地图是非常方便,简单,强大,实用的实用工具,用于仿真和分析这些动态系统。 然而,人类专家是主观的,无法处理相对复杂的模糊认知地图(FCMS); 因此,需要新的方法来开发用于模糊认知地图的自动建设。 在该研究中,在文献中提出了人造蜜蜂菌落(ABC)全局优化算法,从历史数据中的自动生成模糊认知地图的自动化产生。 ERP管理模型用作获得培训和验证数据的说明性示例。 获得的结果表明了ABC学习FCMS的成功。

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