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基于混合蛙跳与阴影集优化的粗糙模糊聚类算法
引用本文:蒙祖强,胡玉兰,蒋亮,常红岩.基于混合蛙跳与阴影集优化的粗糙模糊聚类算法[J].控制与决策,2015,30(10):1766-1772.
作者姓名:蒙祖强  胡玉兰  蒋亮  常红岩
作者单位:广西大学计算机与电子信息学院,南宁530004.
基金项目:

国家自然科学基金项目(61363027);广西自然科学基金项目(2012GXNSFAA053225).

摘    要:

针对粗糙模糊聚类算法对初值敏感、易陷入局部最优和聚类性能依赖阈值选择等问题, 提出一种混合蛙跳与阴影集优化的粗糙模糊聚类算法(SFLA-SRFCM). 通过设置自适应调节因子, 以增加混合蛙跳算法的局部搜索能力; 利用类簇上、下近似集的模糊类内紧密度和模糊类间分离度构造新的适应度函数; 采用阴影集自适应获取类簇阈值. 实验结果表明, SFLA-SRFCM 算法是有效的, 并且具有更好的聚类精度和有效性指标.



关 键 词:

粗糙集|阴影集|粗糙模糊聚类|混合蛙跳算法

收稿时间:2014/7/9 0:00:00
修稿时间:2014/10/27 0:00:00

Shuffled frog leaping algorithm and shadowed sets-based rough fuzzy clustering algorithm
MENG Zu-qiang HU Yu-lan JIANG Liang CHANG Hong-yan.Shuffled frog leaping algorithm and shadowed sets-based rough fuzzy clustering algorithm[J].Control and Decision,2015,30(10):1766-1772.
Authors:MENG Zu-qiang HU Yu-lan JIANG Liang CHANG Hong-yan
Abstract:

For the problem that the rough fuzzy clustering algorithm is sensitive to the initial value, easy to fall into a local optimal solution, and the clustering performance of algorithm depends on the selection of threshold, a rough fuzzy clustering algorithm based on the shuffled frog leaping algorithm and shadowed sets(SFLA-SRFCM) is proposed. The adaptive factor is developed to enhance the local search ability, the within cluster tighness and the between cluster scatter of fuzzy lower approximate sets and fuzzy upper approximate sets are used to construct a new fitness function. Shadowed sets are applied to obtain the threshold adaptively. Experimental results show that SFLA-SRFCM is effective and has better clustering accuracy and validity index.

Keywords:

rough sets|shadowed sets|rough fuzzy clustering|shuffled frog leaping algorithm

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