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Design of fuzzy classification system based on hybrid Co-evolution Algorithm

机译:基于混合协同进化算法的模糊分类系统设计

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A novel approach to construct accurate and interpretable fuzzy classification system based on hybrid Co-evolution algorithm is proposed in this paper. The approach is composed of three phases: (1) the initial fuzzy system is identified using the Simba algorithm and the fuzzy clustering algorithm; (2) the fuzzy rule pool is optimized by the Michigan-style genetic algorithm; (3) the structure and parameters of the fuzzy system are optimized by the Pittsburgh-style Co-evolution algorithm. The hybrid Co-evolution algorithm has the advantages of Michigan-style and Pittsburgh-style algorithm. It owns three species including the number of fuzzy rules species, the premise structure species and the parameters species. Considering both precision and interpretability, the fitness function is calculated on cooperation of individuals from the three species. The proposed approach is applied to two benchmark problems, and the results show its validity.
机译:提出了一种基于混合协同进化算法构建准确,可解释的模糊分类系统的新方法。该方法包括三个阶段:(1)使用Simba算法和模糊聚类算法识别初始模糊系统; (2)利用密歇根式遗传算法对模糊规则库进行优化。 (3)采用匹兹堡式的协同进化算法对模糊系统的结构和参数进行了优化。混合协同进化算法具有密歇根式和匹兹堡式算法的优点。它具有三个种类,包括模糊规则种类的数量,前提结构种类​​和参数种类。考虑到精度和可解释性,适应度函数是根据来自这三个物种的个体的协作来计算的。将该方法应用于两个基准问题,结果表明了该方法的有效性。

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