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A Contribution to Convergence Theory of Fuzzy c-Means and Derivatives

机译:对模糊c-均值及其导数的收敛理论的贡献

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In this paper, we revisit the convergence and optimization properties of fuzzy clustering algorithms, in general, and the fuzzy c-means (FCM) algorithm, in particular. Our investigation includes probabilistic and (a slightly modified implementation of) possibilistic memberships, which will be discussed under a unified view. We give a convergence proof for the axis-parallel variant of the algorithm by Gustafson and Kessel, that can be generalized to other algorithms more easily than in the usual approach. Using reformulated fuzzy clustering algorithms, we apply Banach's classical contraction principle and establish a relationship between saddle points and attractive fixed points. For the special case of FCM we derive a sufficient condition for fixed points to be attractive, allowing identification of them as (local) minima of the objective function (excluding the possibility of a saddle point).
机译:本文总体上回顾了模糊聚类算法的收敛性和优化特性,尤其是模糊c均值(FCM)算法。我们的调查包括概率成员和(可能的实现的稍微修改),将在统一的观点下进行讨论。我们为Gustafson和Kessel提出的算法的轴平行变体提供了收敛证明,与通常的方法相比,它可以更容易地推广到其他算法。使用重新构造的模糊聚类算法,我们应用了Banach的经典收缩原理,并建立了鞍点和吸引定点之间的关系。对于FCM的特殊情况,我们导出了使固定点具有吸引力的充分条件,从而可以将其确定为目标函数的(局部)最小值(不包括鞍点的可能性)。

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