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An extension of global fuzzy c-means using kernel methods

机译:使用核方法扩展全局模糊c均值

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Fuzzy c-means (FCM) is a simple but powerful clustering method using the concept of fuzzy sets that has been proved to be useful in many areas. There are, however, several well known problems with FCM, such as sensitivity to initialization, sensitivity to outliers, and limitation to convex clusters. In this paper, global fuzzy c-means (G-FCM) and kernel fuzzy c-means (K-FCM) are combined and extended to form a non-linear variant of G-FCM, called kernelized global fuzzy c-means (KG-FCM). G-FCM is a variant of FCM that uses an incremental seed selection method and is effective in alleviating sensitivity to initialization. There are several approaches to reduce the influence of noise and properly partition non-convex clusters, and K-FCM is one. K-FCM is used in this paper because it can easily be extended with different kernels, which provide sufficient flexibility to allow for resolution of the shortcomings of FCM. By combining G-FCM and K-FCM, KG-FCM can resolve the shortcomings mentioned above. The usefulness of the proposed method is demonstrated by experiments using artificial and real world data sets.
机译:模糊c均值(FCM)是使用模糊集概念的一种简单但功能强大的聚类方法,已被证明在许多领域中都非常有用。但是,FCM存在一些众所周知的问题,例如对初始化的敏感性,对异常值的敏感性以及对凸簇的限制。本文将全局模糊c均值(G-FCM)和内核模糊c均值(K-FCM)组合并扩展以形成G-FCM的非线性变体,称为内核化全局模糊c均值(KG -FCM)。 G-FCM是FCM的变体,它使用增量种子选择方法,并且在减轻对初始化的敏感性方面有效。有几种方法可以减少噪声的影响并适当地划分非凸簇,而K-FCM就是其中一种。本文使用K-FCM是因为它可以轻松地用不同的内核扩展,这提供了足够的灵活性以解决FCM的缺点。通过将G-FCM和K-FCM结合起来,KG-FCM可以解决上述缺点。通过使用人工和现实世界数据集进行的实验证明了该方法的有效性。

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