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Optimization of fuzzy classification system by genetic strategies

机译:基于遗传策略的模糊分类系统优化

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A novel approach to construct fuzzy classification system based on fuzzy association rules is proposed in this paper. Competitive agglomeration algorithm is employed to partition quantitative attributes from each data record into several optimized fuzzy sets, resulting in an initial fuzzy classification system. A fuzzy classification system with high accuracy and interpretability can be further achieved by genetic strategies. Simulation applied to an existent diabetes dataset demonstrates the performance of the proposed approach is better than those of other popular classification methods.
机译:提出了一种基于模糊关联规则的模糊分类系统构建方法。采用竞争性集聚算法将来自每个数据记录的定量属性划分为几个优化的模糊集,从而形成一个初始的模糊分类系统。遗传策略可以进一步实现具有高精度和可解释性的模糊分类系统。将模拟应用于现有的糖尿病数据集表明,该方法的性能优于其他流行的分类方法。

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