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Comparative study of a genetic fuzzy c-means algorithm and a validity guided fuzzy c-means algorithm for locating clusters in noisy data

机译:遗传模糊C型算法的比较研究与噪声数据中群集群定位群的有效性引导模糊C型算法

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The partitioning of data into clusters is an important problem with many applications. Typically, one locates partitions using an iterative fuzzy c-means algorithm of one form or another. Unfortunately, the results of these techniques depend on the cluster center initialization because their search is based on hill climbing methods. Recently, there has been much investigation into the use of genetic algorithms to partition data into fuzzy clusters. Genetic algorithms are less sensitive to initial conditions due to the stochastic nature of their search. In this paper we compare the two techniques when locating fuzzy clusters embedded in noisy data and discuss the advantages and disadvantages of both methods.
机译:数据分区为集群是许多应用程序的重要问题。通常,使用一种形式或另一个形式的迭代模糊C均值算法来定位分区。不幸的是,这些技术的结果取决于集群中心初始化,因为他们的搜索是基于山爬的方法。最近,已经有很多调查了遗传算法将数据分配给模糊簇。由于搜索的随机性质,遗传算法对初始条件不太敏感。在本文中,我们在嵌入嘈杂数据中定位模糊簇时比较两种技术,并讨论两种方法的优缺点。

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