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Implementation of rough fuzzy k-means clustering algorithm in Matlab

机译:Matlab的粗糙模糊k均值聚类算法的实现。

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With the assistance of the lower and upper approximation of rough sets, the rough fuzzy k-means clustering algorithm may improve the objective function and further the distribution of membership function for the traditional fuzzy k-means clustering. However, the algorithm only has theoretical ideas rather than concrete realizations. To make it better applied to practice, using Matlab, a mathematical programming tool, to implement rough fuzzy k-means clustering algorithm is discussed. Moreover, steps of implementation are given in detail. The foresaid contributions may provide clustering learners and non-computer professional researchers with a simple, convenient, efficient and feasible implementation method.
机译:借助于粗糙集的上下近似,粗糙模糊k-means聚类算法可以改善目标函数,进一步提高隶属函数在传统模糊k-means聚类中的分布。但是,该算法仅具有理论思想,而没有具体实现。为了使它更好地应用于实践,讨论了使用数学编程工具Matlab来实现粗糙的模糊k均值聚类算法。此外,详细给出了实现步骤。前述贡献可以为聚类学习者和非计算机专业研究人员提供一种简单,方便,高效和可行的实施方法。

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